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AXIOMS FOR TYPE-FREE SUBJECTIVE PROBABILITY

Published online by Cambridge University Press:  27 February 2023

CEZARY CIEŚLIŃSKI
Affiliation:
FACULTY OF PHILOSOPHY UNIVERSITY OF WARSAW WARSAW, POLAND E-mail: c.cieslinski@uw.edu.pl
LEON HORSTEN
Affiliation:
FACHBEREICH PHILOSOPHIE UNIVERSITÄT KONSTANZ UNIVERSITAETSSTRASSE 10 78464 KONSTANZ, GERMANY E-mail: Leon.Horsten@uni-konstanz.de
HANNES LEITGEB
Affiliation:
FAKULTÄT FÜR PHILOSOPHIE WISSENSCHAFTSTHEORIE UND RELIGIONSWISSENSCHAFT LUDWIG-MAXIMILIANS-UNIVERSITÄT MÜNCHEN D-80539 MUNICH, GERMANY E-mail: hannes.leitgeb@lmu.de
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Abstract

We formulate and explore two basic axiomatic systems of type-free subjective probability. One of them explicates a notion of finitely additive probability. The other explicates a concept of infinitely additive probability. It is argued that the first of these systems is a suitable background theory for formally investigating controversial principles about type-free subjective probability.

Type
Research Article
Copyright
© The Author(s), 2023. Published by Cambridge University Press on behalf of The Association for Symbolic Logic

1 Introduction

Subjective rational probability is intensively investigated in contemporary formal epistemology and confirmation theory. This notion is normally conceived of, either explicitly or implicitly, in a typed way, i.e., as applying to propositions that do not contain the concept of subjective rational probability itself. But formal epistemologists are becoming increasingly interested in type-free (or reflexive) subjective rational probability.

From a logical point of view, the following urgent question then presents itself:

What are basic logical calculi governing type-free subjective rational probability?

This is the question that we discuss in this article.

Since we want to have natural ways of constructing self-referential sentences at our disposal (in particular the diagonal lemma), we will formalise subjective probability as a (two-place) predicate rather than as a sentential operator, as is the more common practice in confirmation theory and formal epistemology. (See [Reference Zhou27] for a complete system of probabilistic logic for Harsanyi type spaces in which introspective probabilistic claims are expressed by means of a family of sentential operators, by which self-referential probabilistic sentences are avoided.) Our predicate expresses a functional relation between sentences on the one hand, and rational or real numbers on the other hand. The target notion will be the familiar concept of subjective rational probability. This is in contrast with some other recent work on self-referential probability (such as [Reference Campbell-Moore, Horsten and Leitgeb3, Reference Leitgeb, Restall and Russell18]) in which a semantic concept of probability is targeted. Moreover, in this article we insist on classical logic governing this subjective probability predicate: first-order classical logic will be relied on throughout.

It should not, perhaps, be assumed that there is a single correct elementary theory of type-free subjective rational probability. Maybe we should instead look for basic calculi that occupy a significant place in a landscape of possible background theories of type-free subjective probability. Surprisingly, this field is wide open. But this question is important. In order to obtain solid and general results in formal epistemology, rigorous axiomatic frameworks in which controversial epistemological rules and principles are studied, are needed.

We present and discuss two such calculi: one for finitely additive probability, and one for $\sigma $ -additive probability. We do not claim that these are the only interesting elementary systems of type-free subjective probability that can be thought of. We investigate some of the proof-theoretic properties of these systems, motivated by an analogy with certain type-free truth theories. We will see that the elementary system for finitely additive probability that we propose can be seen as a minimal system of type-free subjective probability, whereas the elementary system for $\sigma $ -additive probability that we propose can be seen as a maximal system of type-free subjective probability. In a concluding section, we take some first steps in the investigation of controversial epistemic principles against the background of these basic formal calculi.

In our investigation, we will exploit the analogy between probability and truth: the property of truth is to some extent similar to, albeit of course not identical to, the property of having probability 1. Also, subjective probability can be seen as a quantitative version of the qualitative notion of justified belief. So the theory of reflexive justified belief also contains lessons for the theory of type-free subjective probability.

Our aim is to develop calculi that are in a sense elementary. In particular, we want to keep the languages that we work with as simple as possible. The only non-logico-mathematical symbol will be one for subjective rational probability ( $\mathrm {Pr}$ ). In this sense, we focus in this article on the pure calculus of type-free subjective probability. Thus we work in a more austere environment than some recent work in this area, in which the relation between truth and probability is investigated in a type-free context (such as [Reference Leitgeb17, Reference Leitgeb, Restall and Russell18]). This does not mean that we find these richer frameworks in any way objectionable. But we believe that having a robust sense of what is possible in an austere setting is valuable for research into type-free probability in more expressive settings. Likewise we have of course no objection whatsoever against enriching the language of type-free subjective probability with empirical predicates, although we will not have much to say about that in the sequel.

The technical results in this article must be classed as basic. Most of the propositions and theorems are obtained by adapting arguments in the literature for analogous arguments for axiomatic theories of related notions, such as truth, justification, and believability. Our aim here is merely to contribute to the groundwork of the theory of type-free subjective probability: much work remains to be done.

2 Paradox?

We will try to exploit, to some extent, the analogy between having subjective rational probability 1, on the one hand, and being true, on the other hand. Since we are interested in type-free probability, the analogy will be with type-free truth.

Type-free truth is a notion that is known to be prone to paradox: intuitive principles (the unrestricted Tarski-biconditionals) lead to a contradiction. What about type-free (subjective) probability?

Two important principles from the literature on axiomatic truth are Factivity and Necessitation. Factivity is the schematic axiom that says that if A is true, then A; Necessitation is the following schematic inference rule: From a proof of A, infer that A is true. From the literature on axiomatic truth, we know that Factivity and Necessitation together yield a contradiction. This is known as the Kaplan–Montague paradox:Footnote 1 it is a mild strengthening of the liar paradox. The literature on type-free truth theories shows that type-free truth theories divide roughly into two families: Friedman–Sheard-like ( $\mathrm {FS}$ -like) theories and Kripke–Feferman-like ( $\mathrm {KF}$ -like) theories. This can be seen as a reflection on whether Factivity or the rule of Necessitation ought to be rejected: $\mathrm {FS}$ rejects Factivity, and $\mathrm {KF}$ rejects Necessitation.Footnote 2

For type-free subjective probability, all this means that there is a prima facie reason for being at the same time worried and cautiously hopeful. The basic axioms for subjective rational probability are Kolmogorov’s axiomsFootnote 3 for being a finitely additive probability function. One of Kolmogorov’s principles says that necessary truths should be given probability 1. We want to keep our language as simple as possible, so we do not have a notion of necessity represented in it. Therefore we cannot directly express this principle. But the Necessitation rule for subjective probability 1, i.e.,

$$ \begin{align*}\frac{\vdash \varphi}{\vdash \mathrm{Pr} (\phi) = 1},\end{align*} $$

appears to be a passable approxiomation to (and indeed weakening of) it.Footnote 4 Since not only the purely mathematical principles about the rational numbers or the real numbers, but presumably also the normative principles that govern subjective rational probability are necessary, this rule should hold for all $\varphi $ , including those that include occurrences of $\mathrm {Pr}$ .

Thus we have half of what is needed to generate a contradiction, i.e., we have reason to be worried. On the other hand, while Factivity seems eminently plausible for truth, it is not clearly a reasonable constraint on probability 1. The only principle concerning subjective probability, considered in the literature, that entails it, is the Principle of Regularity, which says that only necessary truths should be given subjective probability 1. The principle of Regularity is widely rejected as a constraint on rational subjective probability.Footnote 5 Indeed there is prima facie reason to be suspicious about this principle: for instance, it seems natural to assign probability 1 to propositions that express elementary observational results, which are obviously contingent. In any case, we now already see that the situation is dire for calculi of type-free subjective probability that do include Regularity (such as certain non-Archimedean theories of probability)Footnote 6 , for then, if we accept Necessitation, the Kaplan–Montague argument goes through.

In the light of these considerations, we reject Factivity and endorse Necessitation. We then cannot fully carry out the Kaplan–Montague argument for probability 1, and can at least hope to avoid contradiction. By rejecting Factivity, we position ourselves in an FS-like, rather than in a KF-like environment. Not only is Factivity to be rejected, but there seems also no reason to trust its weaker cousin Converse Necessitation. Even a proof that a given statement has probability 1 does not give us a compelling reason that statement is true.

When the truth predicate in FS is interpreted as a concept of probability rather than as truth, the resulting principles are close to a type-free version of the Kolmogorov axioms. Our strategy will therefore be to get as close as consistently possible to the Kolmogorov axioms in a type-free predicate setting, and against a reasonable mathematical background.

3 Finite and $\sigma $ -additive type-free probability

In this section, we present an elementary formal theory of finite type-free subjective probability, and an elementary formal theory of $\sigma $ -additive type-free subjective probability. Moreover, we discuss some elementary properties of these two systems.

3.1 Languages and background theories

We will define a basic theory of type-free finitely additive probability and a basic theory of $\sigma $ -additive probability. For finitely additive probability we do not need to take limits, so a background theory of the rational numbers suffices. For $\sigma $ -additive probability we do need to take limits, so a background theory of the real numbers is needed.

The natural numbers in each case form a significant sub-collection of the domain of discourse. So we assume that each of the two languages contains a predicate N that expresses being a natural number.

3.1.1 Q and $\mathcal {L}_{Q}$

Let $Q^-$ be some standard classical theory of the rational numbers, formulated in the language $\mathcal {L}_{Q^-}$ , such that it contains the Peano Axioms restricted to N. The language $\mathcal {L}_{Q}$ is defined as $\mathcal {L}_{Q^-} \cup \{ \mathrm {Pr} \}$ , where $\mathrm {Pr}$ is a two-place predicate such that $\mathrm {Pr}(x,y)$ expresses that the rational subjective probability of x is y. We will sometimes write $\mathrm {Pr}(x)=y$ instead.

We assume that, in the finitely additive probability theory that we will define, the logical and nonlogical schemes of $Q^-$ are extended to the language including $\mathrm {Pr}$ . This gives rise to the theory Q.

3.1.2 R and $\mathcal {L}_{R}$

Let $R^-$ be some standard classical theory of the real numbers, formulated in a language $\mathcal {L}_{R^-}$ , and let $\mathcal {L}_{R}$ be defined as $\mathcal {L}_{R^-} \cup \{ \mathrm {Pr} \} $ . Again we assume that, in the probability theories that we will define, the logical and nonlogical schemes of $R^-$ are extended to the language including $\mathrm {Pr}$ . This gives rise to the theory R.

3.1.3 Coding

For the language $\mathcal {L}_{Q}$ , coding works in the usual way. But there are uncountably many real numbers. To deal with this, we proceed roughly as in [Reference Fujimoto11]. Within $R^-$ we can describe the language $\mathcal {L}_{R}^{\infty }$ , which contains $\mathcal {L}_{R}$ , but also contains constant symbols $c_x$ for each element $x\in \mathbb {R}$ . This formalisation of $\mathcal {L}_{R}^{\infty }$ in $\mathcal {L}_{R}$ provides us with a coding of the expressions of $\mathcal {L}_{R}^{\infty }$ . For an $\mathcal {L}_{R}^{\infty }$ -expression e we denote its code by $\ulcorner e \urcorner $ . We specially denote the code of $c_x$ for $x\in \mathbb {R}$ by $\dot {x}$ . This formalisation also comes with a coding of various syntactic relations and operations on $x\in \mathbb {R}$ .Footnote 7 As mentioned in Section 1, throughout the article we will often be sloppy in our notation.

3.2 Finitely additive type-free probability

We first turn to the principles of the basic theory of finitely additive type-free probability, which we call “Reflexive Kolmogorov Finite” ( $\mathrm {RKf}$ ). They are expressed in $\mathcal {L}_{Q}$ , which is $\mathcal {L}_{Q^-} \cup \{\Pr \}$ . Let ${Tm}^{{c}}$ be the set of constant terms and let $t^{\circ }$ be the value of term t (both notions can be expressed in $\mathcal {L}_{Q}$ ). The axioms are as follows:

  1. Kf1 Q.

  2. Kf2 $\mathrm {Pr}$ is a function.

  3. Kf3 $ \Pr (x,y) \rightarrow (x \in \mathcal {L}_{Q} \wedge 0 \leq y \leq 1)$ .

  4. Kf4 $ \forall t \in {Tm}^{{c}} \big ( \Pr (\varphi (t)) = 1 \equiv \varphi (t^{\circ }) \big )$ , for all $\varphi \in \mathcal {L}_{Q^-}$ .

  5. Kf5 $\Pr (x), \Pr (y) \leq \Pr (x \vee y)$ .

  6. Kf6 $ \Pr (x \dot {\vee } y) = \Pr (x) + \Pr (y) - \Pr (x \dot {\wedge } y) $ .

  7. Kf7 $ \Pr (\dot {\neg } x) = 1 - \Pr (x) $ .

  8. Kf8

    $$ \begin{align*}\frac{\vdash \phi}{\vdash \Pr (\phi , 1)} .\end{align*} $$

In these axioms, the free variables are assumed to be universally quantified over. Kf4 is an axiom schema; concrete axioms are obtained from Kf4 by substituting formulas of $\mathcal {L}_{Q^-}$ for the schematic letter $\varphi $ .

A comparison with [Reference Kolmogorov16] shows that all principles of $\mathrm {RKf}$ except Kf4, Kf5, and Kf8 are Kolmogorov axioms. But Kf4 and Kf8 together aim to approximate the remaining Kolmogorov axiom, viz., the axiom that says that necessary truths have probability 1. In particular, rule Kf8 is justified because a proof of a statement $\phi $ from the (necessary) pure principles of type-free subjective probability entails that $\phi $ is necessary, and therefore should get probability 1. In Leitgeb’s systems of type-free probability, a slightly different necessity principle is adopted, namely,

$$ \begin{align*}Bew_{S} (x) \rightarrow \Pr (x , 1) ,\end{align*} $$

where S is the background system without the principles of subjective probability [Reference Leitgeb, Restall and Russell18, sec. 3]. This Necessitation principle is of course sound, but it is obviously weaker than Kf8 in specific ways.

Type-free systems can never be fully compositional, since type-freeness precludes an ordinary notion of rank of formulas. Nonetheless, FS has been touted as a highly compositional axiomatic theory of truth.Footnote 8 The system $\mathrm {RKf}$ is also highly compositional, but slightly less so than FS, for the axiom Kf6 does not explain the truth conditions of probabilities of disjunctions in terms of truth conditions of formulae of lower rank. Axiom Kf5 has been included in order to compensate (to some degree) for this deficiency.

As mentioned in Section 1, $\mathcal {L}_{Q}$ can be extended by empirical vocabulary. Empirical truths can unproblematically be added to $\mathrm {RKf}$ as extra premises. But we do not automatically want to assign all empirical truths probability 1. So we do not simply want to add empirical truths as new axioms, for then they would fall in the scope of Kf8.

$\mathrm {RKf}$ is at least minimally capable:

Proposition 1. $\mathrm {RKf} \vdash \forall \phi , \psi \big ( \Pr (\phi \rightarrow \psi ,1) \rightarrow \Pr (\psi ) \geq \Pr (\phi ) \big )$ .

Proof. Straightforward calculation in $\mathrm {RKf}$ .

It follows in particular that if $\Pr (\phi \rightarrow \psi )=1$ and $\Pr (\phi )=1$ , then $\Pr (\psi )=1$ . In view of this, we may ask an analogue of a question from provability logic:

Question 1. What is the propositional modal logic of probability 1, conceived as a modality?

From the previous proposition and Rule Kf8 it follows that it is a normal propositional modal logic.

Rule Kf8 can be interpreted as saying that $\mathrm {RKf}$ is pointwise self-recommending. Since probability 1 does not entail truth, one might hope that even global self-recommendation does not contradict Gödel’s incompleteness theorems, even though it looks like a (global) reflection principle. However, this is not the case:

Proposition 2. There is no consistent system $S\supset \ \mathrm {RKf}$ for which

$$ \begin{align*}S \vdash \forall x: Bew_S(x) \rightarrow \Pr(x) = 1 .\end{align*} $$

Proof. Assume $ S \vdash \forall x: Bew_S(x) \rightarrow \Pr (x) = 1 $ and S is consistent. Take, by diagonalisation, a formula $\varphi $ such that

$$ \begin{align*}S \vdash \varphi \leftrightarrow\neg ( Bew_S(\varphi) \rightarrow \Pr(\varphi) = 1 ).\end{align*} $$

We reason in S, and suppose $\varphi $ . Then $\neg ( Bew_S(\varphi ) \rightarrow \Pr (\varphi ) = 1 ),$ which contradicts our assumption. So we have $S \vdash \neg \varphi .$ By Kf8, then $S \vdash \Pr ( \neg \varphi ) = 1,$ i.e., $S \vdash \Pr ( \varphi ) = 0.$ So $S \vdash \neg Bew_S (\varphi )$ , by our assumption. So by the second incompleteness theorem, S is inconsistent.

Observe that our proof of the first part of this proposition shows that also the “local” version of the principle $\forall x: Bew_S(x) \rightarrow \Pr (x) = 1 ,$ i.e., the scheme $Bew_S(\varphi ) \rightarrow \Pr (\varphi ) = 1 ,$ is inconsistent.

For reasonable S, the principle $\forall x: Bew_S(x) \rightarrow \Pr (x) = 1 $ should be true, so we should be able consistently add it to S. Moreover, this principle looks similar to the uniform reflection principle for S. Indeed, we suggest that principles such as these are regarded as a kind of proof theoretic reflection principles.

All this suggests the following question, which, as far as we know, is open:

Question 2. Let conditional probability be defined in the usual way by the ratio formula. Is there a consistent system $S\supset \ \mathrm {RKf}$ for which

$$ \begin{align*}S \vdash \forall x: \Pr (Bew_S(x) \neq 0) \rightarrow \Pr (x \mid Bew_S(x)) =1 ?\end{align*} $$

Here the antecedent is of course inserted only so as to ensure that the consequent is well defined.

Let us now to turn to the question which principles we can consistently add to $\mathrm {RKf}$ .

It is easy to see that adding probability iteration principles to $\mathrm {RKf}$ quickly leads to inconsistency.Footnote 9 This means that despite its minimality, the principles of $\mathrm {RKf}$ already highly constrain the class of possible extensions. As a simple example, just to see how these arguments go, consider the probabilistic analogue of the $S4$ principle of modal logic, which we call $\mathrm {Pr}4$ :Footnote 10

$$ \begin{align*}\Pr (\phi, 1) \rightarrow \Pr (\Pr (\phi, 1),1) .\end{align*} $$

Proposition 3. $\mathrm {RKf} + \mathrm {Pr}4$ is inconsistent.

Proof. Take a $\mathrm {probabilistic\text { }liar\text { }sentence}\ \lambda $ such that $\mathrm {RKf} \vdash \lambda \leftrightarrow \neg \Pr (\lambda , 1).$ (Such a $\lambda $ of course exists by the diagonal lemma.) Arguing in $\mathrm {RKf}$ , Necessitation of the left-to-right direction yields $ \Pr (\Pr (\lambda , 1) \rightarrow \neg \lambda , 1)$ . Distributing $\Pr $ over the conditional gives us

$$ \begin{align*}\Pr (\Pr (\lambda, 1), 1) \rightarrow \Pr ( \neg \lambda, 1).\end{align*} $$

An instance of $\mathrm {Pr}4$ is $ \Pr (\lambda , 1) \rightarrow \Pr (\Pr (\lambda , 1), 1)$ . Putting these together gives us $ \Pr (\lambda , 1) \rightarrow \Pr ( \neg \lambda , 1)$ , i.e., $ \neg \Pr (\lambda , 1)$ . Using the right-to-left direction of the instance of the diagonal lemma, we then have $\lambda $ , and by Necessitation $ \Pr (\lambda , 1)$ , which contradicts our earlier result.

Note that Proposition 3 does not entail that there can be no models of RKf that make $ \Pr (\phi , 1) \rightarrow \Pr (\Pr (\phi , 1),1) $ true for all $\varphi $ (or/and its converse). In our proof, we have applied rule Kf8 to a sentence obtained from $\mathrm {Pr}4$ . This is only permitted if $\mathrm {Pr}4$ is taken as an extra axiom.

In a similar way, it can be shown that a form of negative introspection, and also its converse, cannot consistently be added to $\mathrm {RKf}$ :

Proposition 4.

  1. 1. The principle $\Pr (x) < 1 \rightarrow \Pr (\Pr (x) < 1) = 1$ cannot consistently be added to $\mathrm {RKf}$ .

  2. 2. The principle $ \Pr (\Pr (x) < 1) = 1 \rightarrow \Pr (x) < 1 $ cannot consistently be added to $\mathrm {RKf}$ .

Proof. The simple proofs of 1 and 2 are exactly like the proofs of Theorem 3e and Theorem 3f, respectively, in [Reference Schuster and Horsten21]. We present the proof of 2 for illustration. In what follows we work in $\mathrm {RKf}$ together with the assumption that (1) $ \Pr (\Pr (x) < 1) = 1 \rightarrow \Pr (x) < 1 $ .

Take a liar sentence $\lambda $ such that (2) $\lambda \leftrightarrow \Pr (\lambda ) < 1.$ Applying Necessitation, we obtain: (3) $\Pr (\lambda \rightarrow \Pr (\lambda ) < 1) =1$ and by Proposition 1 we have

$$ \begin{align*}(4)\Pr (\lambda ) = 1 \rightarrow \Pr (\Pr (\lambda ) < 1)) =1.\end{align*} $$

Now we claim $\lambda $ . Assuming $\neg \lambda $ for the indirect proof, we get: $\Pr (\lambda ) = 1$ . Hence by (4), $\Pr (\Pr (\lambda ) < 1)) =1$ , therefore by (1) $\Pr (\lambda ) < 1 $ - a contradiction.

In effect, we established $\lambda $ , hence by Necessitation $Pr(\lambda ) = 1$ . However, by (2) we have also $Pr(\lambda )< 1$ , which is a contradiction.

From the point of view of type-free truth theory, the iteration principles that are the subject of Propositions 3 and 4 are typical analogues of principles that belongs to the $\mathrm {KF}$ -family and are incompatible with $\mathrm {FS}$ . It is, as far as we can tell, an open and interesting question what reasonable analogues of $\mathrm {KF}$ for type-free subjective probability would look like.

Propositions 2–4 show that despite the fact that $\mathrm {RKf} $ is a basic system of type-free subjective probability, it is nonetheless fairly restrictive. In particular, it is not very tolerant of introspection principles. In this sense, our findings so far are in harmony with the anti-luminosity position that Williamson argues for on other grounds [Reference Williamson26, chap. 4].

It is, however, consistent to add to $\mathrm {RKf} $ the converse of Pr4, which we call CPr4, and which is called Transparency by Weisberg [Reference Weisberg25, p. 190]:Footnote 11

Proposition 5. $\mathrm {RKf + CPr4} $ is consistent.

Proof. This follows from the proof of Theorem 5 in [Reference Cieśliński7] (see also [Reference Cieśliński6]). The point is that the theory $\mathrm {RKf+CPr4}$ + “for every x, $\Pr (x)$ is either 1 or 0 or 1/2” is interpretable in the theory of the model $(Q, B_{\omega })$ , with $B_{\omega }$ characterized as in Definition 6 of [Reference Cieśliński7] (cf. also Definition 13.4.5 of [Reference Cieśliński6]). The interpretation is obtained by translating “ $\Pr (x) = y$ ” as “ $\big (y = 1 \wedge B(x) \big ) \vee \big (y = 0 \wedge B(\neg x) \big ) \vee \big (y = 1/2 \wedge \neg B(x) \wedge \neg B(\neg x) \big )$ .” In particular, the truth of the interpretation of Cpr4 follows from the fact that the model $(Q, B_{\omega })$ makes true the reflection axiom (A3) from Definition 4 of [Reference Cieśliński7].

3.3 $\sigma $ -additive type-free probability

Basically, our theory of $\sigma $ -additive type-free probability, which we will call “Reflexive Kolmogorov Sigma” ( $\mathrm {RK}\sigma $ ) is like $\mathrm {RKf}$ , except that an axiom of $\sigma $ -additivity is added. Its principles are:

  1. Kσ1 R.

  2. Kσ2 $\mathrm {Pr}$ is a function.

  3. Kσ3 $ \Pr (x,y) \rightarrow (x \in \mathcal {L}_{R} \wedge 0 \leq y \leq 1) $ .

  4. Kσ4 $ \forall t \in {Tm}^{{c}} \big ( \Pr (\varphi (t)) = 1 \equiv \varphi \big )$ , for all $\varphi \in \mathcal {L}_{R^-}$ .

  5. Kσ5 $\Pr (x), \Pr (y) \leq \Pr (x \vee y)$ .

  6. Kσ6 $ \Pr (x \dot {\vee } y) = \Pr (x) + \Pr (y) - \Pr (x \dot {\wedge } y) $ .

  7. Kσ7

    $$ \begin{align*}\frac{\vdash \phi}{\vdash \Pr (\phi , 1)} .\end{align*} $$
  8. Kσ8 $ \Pr (\dot {\exists } x \in N : y(\dot {x})) = \displaystyle {\lim _{n \to \infty } } \Pr ( y(\underline {0}) \vee \cdots \vee y(\underline {n}) ). $

In axiom K $\sigma $ 4, we use the fact that “internally” we have names for all real numbers. This will play a role in some of the theorems in Section 4.

As before, K $\sigma $ 6 is a non-compositional axiom. Axiom K $\sigma $ 5 is introduced to compensate for this deficiency.

4 Connection with the Friedman–Sheard system for type-free truth

We will relate $\mathrm {RKf}$ and $\mathrm {RK}\sigma $ to the Friedman–Sheard theory $\mathrm {FS}$ of type-free truth, which we assume the readers to be familiar with.Footnote 12 But $\mathrm {FS}$ is formulated “over” $\mathbb {N}$ , whilst $\mathrm {RKf}$ is formulated “over” $\mathbb {Q}$ , and $\mathrm {RK}\sigma $ is formulated “over” $\mathbb {R}$ . So when we speak about $\mathrm {FS}$ from now on, we will assume it to be formulated “over” $\mathbb {Q}$ or “over” $\mathbb {R}$ : the context will make clear which is meant. We will not go into the boring but routine details of how to formulate $\mathrm {FS}$ “over” $\mathbb {Q}$ or “over” $\mathbb {R}$ .

Theorem 1. $\mathrm {RK}\sigma $ is consistent, $\omega $ -inconsistent, but sound for its mathematical sub-language.

Proof. See [Reference Leitgeb19].

The proofs of these properties are more or less “borrowed” from the metamathematics of $\mathrm {FS}$ . For instance, the proof of the $\omega $ -inconsistency of $\mathrm {RK}\sigma $ is a straightforward adaptation of McGee’s argument that shows that $\mathrm {FS}$ is $\omega $ -inconsistent (see [Reference Halbach13]). Alternatively, $\omega $ -inconsistency follows from interpretability of $\mathrm {FS}$ in $\mathrm {RK}\sigma $ (see Theorem 2). As in the case of $\mathrm {FS}$ , the consistency of $\mathrm {RK}\sigma $ can be established by providing natural models for subsystems of $\mathrm {RK}\sigma $ with limited number of applications of the Necessitation rule K $\sigma $ 7.

This should not surprise us. The system $\mathrm {FS}$ is known as “the most compositional type-free theory of truth.” The systems $\mathrm {RKf}$ and $\mathrm {RK}\sigma $ are also to a high degree compositional, and include the Necessitation rule.Footnote 13

Theorem 1 shows that $\mathrm {RK}\sigma $ cannot serve as an acceptable background framework for formally investigating debatable principles concerning type-free subjective probability.Footnote 14 Despite its mathematical soundness, its $\omega $ -inconsistency is, in our opinion, almost as bad as full inconsistency.

The theory $\mathrm {RKf}$ can be trusted: all its theorems can be interpreted as true under the standard interpretation (see Corollary 2). Since, as we have seen in Section 3.2, no simple introspection principles (with the exception of CPr4) can be consistently added as axioms to $\mathrm {RKf}$ , they do not form a part of the minimal theory of subjective probability. On the other hand, the theory $\mathrm {RK}\sigma $ is not to be be trusted, as it cannot be interpreted as true under the standard interpretation. In this context, we remind the reader that there is a long history of scepticism towards $\sigma $ -additivity as a principle governing subjective probability [Reference de Finetti8, Reference De Howson9].Footnote 15

The connection between $\mathrm {RK}\sigma $ and $\mathrm {FS}$ goes even further than what Theorem 1 describes:

Theorem 2. $\mathrm {FS}$ is relatively interpretable in $\mathrm {RK}\sigma $ .

Proof. (Sketch.)

Let an intermediary system $\mathrm {RK}\sigma ^+$ be defined as $\mathrm {RK}\sigma $ +

$$ \begin{align*}\forall x,y: \Pr(x,y) \rightarrow (y=0 \vee y=1).\end{align*} $$

Consider the translation $\mu $ which is the homophonic translation for atomic mathematical formulae, commutes with the logical operators but restricts the quantifiers to the natural numbers, and has the following recursive clause for the truth predicate T:

$$ \begin{align*}\mu (T x) \equiv \Pr ( \mu (x), 1) .\end{align*} $$

Then $\mu $ is an interpretation of $FS$ in $\mathrm {RK}\sigma ^+$ .Footnote 16 In particular, for interpreting the right to left implication in the FS axiom “ $\forall \varphi , \psi \big (T(\varphi \vee \psi ) \equiv T(\varphi ) \vee T(\psi ) \big )$ ” axiom K $\sigma $ 5 is used.

But $\mathrm {RK}\sigma ^+$ can be interpreted in $\mathrm {RK}\sigma $ as follows. Let $\theta $ be the translation which is the homophonic translation for atomic mathematical formulae, commutes with the logical operators, and has the following recursive clause for $\Pr $ :

$$ \begin{align*}\theta (\Pr (x,y)) \equiv \Pr ( \theta (x) ,y) \wedge (y=0 \vee y=1).\end{align*} $$

Then $\theta $ interprets $\mathrm {RK}\sigma ^+$ into $\mathrm {RK}\sigma $ .

Stringing these two facts together gives us an interpretation of $FS$ in $\mathrm {RK}\sigma $ .

Corollary 1. $\mathrm {RK}\sigma $ is at least as strong as the first-order part of Ramified Analysis up to level $\omega $ .

Proof. This follows directly from Theorem 2 and the fact that the arithmetical strength of $FS$ is exactly the first-order fragment of Ramified Analysis up to level $\omega $ [Reference Halbach13, sec. 5].

So if $\mathrm {RK}\sigma $ is to be believed—but it isn’t!—then just like the notion of set, and the notion of truth, the notion of (type-free) subjective probability has (some) mathematical power.

On the other hand, the notion of probability captured by $\mathrm {RKf}$ does not have mathematical power.

Definition 1. Let $FS^-$ be like FS but without the quantifier commutation axiom $\forall y : \exists x T y (x) \leftrightarrow T \exists x : y (x)$ . Instead, $FS^-$ contains the axiom schema “ $ \forall t \in {Tm}^{{c}} \big ( \Pr (\varphi (t)) = 1 \equiv \varphi (t^{\circ }) \big )$ ” for all formulas $\varphi $ of the base language (without the probability predicate).

The thought is that by moving from FS to $\mathrm {FS}^-$ , we remove the mathematical “sting” from it, and that moreover $\mathrm {RKf}$ can be interpreted in the conservative system $\mathrm {FS}^-$ .

Conservativity of $\mathrm {FS}^-$ can be established by interpreting it the theory RT of iterated truth, which is conservative over its base theory containing PA. Let $L_0$ be the base language; let $L_{n+1}$ be $L_n$ enriched with the new truth predicate $T_n$ . (In effect, $L_{n+1}$ contains the truth predicates $T_0, \ldots , T_n$ .) A theory $RT_n$ in the language $L_n$ is defined in the following way.

Definition 2. $RT_0$ is PA. Apart from the axioms of PA, $RT_{n+1}$ contains the following axioms, for every $i \leq n$ :

  • $ \forall t \in {Tm}^{{c}} \big ( T_i(\varphi (t)) \equiv \varphi (t^{\circ }) \big )$ for each $\varphi \in L_0$ .

  • $\forall \varphi \in L_i \big (T_i(\neg \varphi ) \equiv \neg T_i(\varphi ) \big )$ .

  • $\forall \varphi , \psi \in L_i \big (T_i(\varphi \vee \psi ) \equiv T_i(\varphi ) \vee T_i(\psi ) \big )$ .

  • Full induction for formulas of $L_{n+1}$ .

In addition, $RT_{n+1}$ has the following Necessitation rules for every $i \leq n$ and for every $\varphi \in L_i$ :

$$ \begin{align*}\frac{\vdash \phi}{\vdash T_i (\phi)}.\end{align*} $$

Lemma 1. For every n, $RT_n$ is conservative over its background mathematical theory.

Proof. Let $RT_n \upharpoonright k$ denote the set of theorems of $RT_n$ having proofs with gödel numbers smaller than k. We demonstrate that:

  1. (*) $\forall k, n \forall M \big ( M \models RT_n \rightarrow \exists S (M, S) \models RT_{n+1} \upharpoonright k \big )$ .

In words: every model of $RT_n$ can be expanded to a model satisfying all the theorems of $RT_{n+1}$ which have proofs with gödel numbers smaller than k.

For the proof of (*), fix k, n and $M \models RT_n$ . Define the set $S_n$ as $\{\psi \in L_n: \psi < k \wedge M \models \psi \}$ (so, $S_n$ contains only sentences with gödel numbers smaller than k). Since $S_n$ is the set of true sentences of restricted syntactic complexity, $RT_n$ proves that $S_n$ is consistent. Define S (the intended interpretation of the predicate ‘ $T_n$ ’ of $RT_{n+1}$ ) as a maximal consistent extension of $S_n$ . Note that S is definable in M, hence it is fully inductive.

It is easy to verify that every proof in $RT_{n+1}$ with gödel number smaller than k contains only sentences true in $(M, S)$ . This finishes the proof of (*).

From (*) it follows that each $RT_n$ is conservative over its background mathematical theory.

Remark: The proof of Lemma 1 employed the idea of expandability of models of $RT_n$ to models of certain fragments of $RT_{n+1}$ . It should be emphasized that this does not generalize to full expandability, i.e., it is not true that every model of $RT_n$ is expandable to a model of full $RT_{n+1}$ . In fact, the general expandability theorem fails already for $RT_0$ and $RT_{1}$ .Footnote 17

Lemma 2. $FS^-$ is proof-theoretically conservative over its background mathematical theory Q.

This is not surprising, since it is known that the “formalised $\omega $ -rule”

$$ \begin{align*}\forall y:\forall x T (y(x)) \rightarrow T( \forall x:(y(x))\end{align*} $$

is the main factor in the mathematical strength of $FS$ .Footnote 18

Proof. The proof is basically a repetition of the argument for Theorem 14.31 in [Reference Halbach14, pp. 181–185] with only minor changes: we use the functions $g_n$ defined on page 181 in [Reference Halbach14] to provide an interpretation of fragments of FS without the quantifier axioms (fragments with restricted number of application of Necessitation) in the $RT_n$ ’s.

Theorem 3. $\mathrm {RKf}$ is proof-theoretically conservative (for the mathematical base language) over its background mathematical theory Q.

Proof. (Sketch.)

Let again $\mathrm {RKf}^+$ be defined as $\mathrm {RKf} + \forall x,y: \Pr (x,y) \rightarrow (y=0 \vee y=1)$ , and let $FS^-$ (over Q) be just like in definition 1. Now consider the translation $\tau $ which is the homophonic translation for atomic mathematical formulae, commutes with the logical operators, and has the following recursive clause for $\Pr $ :

$$ \begin{align*}\tau (\Pr (x,y)) \equiv (\neg T(\tau (x) ) \wedge y=0) \vee (T(\tau (x) ) \wedge y=1) .\end{align*} $$

Then $\tau $ is an interpretation of $\mathrm {RKf}^+$ in $FS^-$ . By Lemma 2, $FS^-$ is conservative over Q. Stringing these facts together gives us the conservativity result for $\mathrm {RKf}$ .

Lemma 3. $FS^-$ can be interpreted in the standard model of arithmetic, hence it is $\omega $ -consistent.

Proof. The interpretation of $FS^-$ in the standard model of arithmetic is obtained by revision semantics. Let N be the standard model of arithmetic. Define $T_0$ as empty, $T_{k+1} = \{\psi : (N, T_k) \models \psi \}$ . Let $T_{\omega }$ be the set of stable sentences, that is,

$$ \begin{align*} T_{\omega } = \{\psi : \exists m \forall k \geq m (N, T_k) \models \psi \}. \end{align*} $$

Define T as a maximal consistent extension of $T_{\omega }$ . Then $(N, T) \models FS^-$ . Namely, given a proof $(\varphi _0 \ldots \varphi _k)$ in $FS^-$ , it can be demonstrated by induction that $\forall i \leq k (\varphi _i \in T_{\omega } \wedge (N, T) \models \varphi _i)$ . In particular, in the step for the Necessitation rule, we use the fact that $T_{\omega }$ is closed under Necessitation.

Since $\mathrm {RKf}$ is interpretable in $FS^-$ , we obtain the following corollary.

Corollary 2. $\mathrm {RKf}$ can be interpreted in the standard model of arithmetic, hence it is $\omega $ -consistent.

Theorem 2 and Corollary 2 provide support for the hypothesis that $\mathrm {RKf}$ is an acceptable background framework for formally investigating debatable principles concerning type-free subjective probability, whilst $\mathrm {RK}\sigma $ most definitely is not. $\mathrm {RKf}$ is a minimal system for reflexive subjective probability, whilst $\mathrm {RK}\sigma $ is a maximal system for reflexive subjective probability. Both systems represent natural positions in the landscape of systems of reflexive subjective probability.

5 Probabilistic reflection

Since $\mathrm {RKf}$ is an acceptable basic theory of type-free subjective probability, it is a suitable formal background against which questions of formal epistemology might be investigated. Let us have look at one example of this.

In [Reference van Fraassen23], van Fraassen proposed and explored the following probabilistic reflection principle:

Definition 3. (V, “van Fraassen”)

$$ \begin{align*} [n>0 \wedge \mathrm{Pr}_t(\mathrm{Pr}_{t+n} (\varphi) = a ) \neq 0 ] \rightarrow \\ \mathrm{Pr}_t ( \varphi \mid \mathrm{Pr}_{t+n}(\varphi) = a) = a. \end{align*} $$

Here the subscripts of $\Pr $ are real numbers, representing moments in time. Then V imposes a connection between future and current credences. The antecedent is of course needed to ensure that the conditional probability in the consequent is well defined.

The principle V (and variations on it) has been much discussed in the literature, and enjoys considerable popularity. Principle V has an air of ill-foundedness. If we think of later credences as determined, perhaps by conditionalisation, by earlier credences, in a way similar to the way in which higher level typed truth predicates are determined by lower level typed truth predicates, then V seems to break type restrictions.

The variant of van Fraassen’s V by setting $n=0$ in V, is truly type free; and as a coordination principle for probability functions through time, it seems interesting [Reference Christensen4, p. 322]:

Definition 4. (RV)

$$ \begin{align*} \mathrm{Pr}(\mathrm{Pr}(\varphi) = a ) \neq 0 \rightarrow \mathrm{Pr} ( \varphi \mid \mathrm{Pr}(\varphi) = a) = a. \end{align*} $$

Nonetheless, RV cannot consistently be added as a new axiom to $\mathrm {RKf}$ :

Proposition 6. $\mathrm {RKf}$ + RV is inconsistent.

Proof. We reason in $\mathrm {RKf}$ + RV.

By the diagonal lemma, we may take a sentence $\lambda $ such that $\vdash \lambda \leftrightarrow \Pr (\lambda ) <1, $ or, equivalently, $\vdash \neg \lambda \leftrightarrow \Pr (\lambda ) =1. $

Assume, for a reductio, that $\mathrm {Pr}(\mathrm {Pr}(\lambda ) = 1 ) \neq 0$ . Then, by RV for the case where $a=1$ , $\mathrm {Pr} ( \lambda \mid \mathrm {Pr}(\lambda )= 1) = 1,$ which is equivalent to $\mathrm {Pr} ( \Pr (\lambda ) <1 \mid \mathrm {Pr}(\lambda ) = 1 ) = 1,$ which is in turn equivalent to

$$ \begin{align*}\frac{\Pr ( \Pr (\lambda) <1 \wedge \mathrm{Pr}(\lambda) = 1)}{\Pr ( {\mathrm{Pr}(\lambda) = 1} )}=1,\end{align*} $$

which yields a contradiction.

So we conclude $ \vdash \mathrm {Pr}(\mathrm {Pr}(\lambda ) = 1 ) = 0$ . Then, by the diagonal property, $ \vdash \mathrm {Pr}( \neg \lambda ) = 0, $ which by a Kolmogorov axiom is equivalent to $ \vdash \mathrm {Pr}( \lambda ) = 1. $ By Necessitation, we then get $\vdash \Pr (\mathrm {Pr}( \lambda ) = 1) = 1$ , which gives us a contradiction.

This again illustrates the restrictiveness of even the minimal calculus $\mathrm {RKf}$ .

Other variants of van Fraassen’s principle V have been considered in the literature. In the light of Proposition 6, they should be regarded with suspicion. Indeed, Campbell–Moore considers the following variant V $^*$ :

$$ \begin{align*} \Pr\nolimits _t (\varphi \mid \Pr\nolimits _{\mathrm {t+n}} (\varphi ) \in [a,b]) \in [a,b]\ \mathrm {for\ all}\ a,b\ \mathrm {with}\ a\leq b . \end{align*} $$

She shows by a simple diagonal argument:

Proposition 7. $RKf + V^*$ is inconsistent.

Proof. Theorem 1.7.1 in [Reference Campbell-Moore2].

Observe that Proposition 6 also tells against van Fraassen’s principle V. An agent may not update her probability function during some interval $[t, t+n]$ , for some $n>0$ , because no new evidence has come in to conditionalize on, and because she has in this interval no reasons for adopting a radically different probability function. Moreover, she might be certain at t that $Pr_t=Pr_{t+n},$ i.e.,

$$ \begin{align*}Pr_t(Pr_t=Pr_{t+n}) = 1 .\end{align*} $$

However, if $Pr_t, Pr_t+n$ satisfy RKf+V, then we have:Footnote 19

Proposition 8. For all positive rational numbers $n,t$ : $Pr_t=Pr_{t+n} \rightarrow Pr_t(Pr_t=Pr_{t+n}) < 1.$

Proof. Assume that $Pr_t=Pr_{t+n}$ . Let $\lambda $ be the liar sentence, i.e., $\vdash \lambda \equiv P_{t+n}(\lambda ) < 1$ . Suppose $P_{t+n}(\lambda ) < 1$ . Then $P_{t+n}(\neg \lambda )> 0$ . By assumption, $P_t(P_{t+n}(\lambda ) = 1)> 0$ . By RV, $P_t(\lambda \mid P_{t+n}(\lambda ) = 1) = 1$ . On the other hand, $P_t(\lambda \mid P_{t+n}(\lambda ) = 1) = P_t(\lambda \mid \neg \lambda ) = 0$ , a contradiction. So $\vdash P_t = P_{t+n} \rightarrow P_{t+n}(\lambda ) = 1$ . By Necessitation, $\vdash P_t(P_t {\kern-1pt}={\kern-1pt} P_{t+n} \rightarrow P_{t+n}(\lambda ) {\kern-1pt}={\kern-1pt} 1) {\kern-1pt}={\kern-1pt} 1$ . So $\vdash P_t(P_t {\kern-1pt}={\kern-1pt} P_{t+n}) = 1 \rightarrow P_t(P_{t+n}(\lambda ) = 1)) = 1$ . But $P_t(P_{t+n}(\lambda ) = 1) = 1$ implies that $1 = P_t(\lambda \mid P_{t+n}(\lambda ) = 1) = Pt(\lambda \mid \neg \lambda ) = 0$ , a contradiction. So $\vdash P_t(P_{t+n}(\lambda ) = 1)) <1$ , which means $\vdash P_t(P_t = P_{t+n}) <1$ .

Van Fraassen’s principle V has been criticised anyway. Some drug might make one confident that one can fly; if I think I’ll take this drug tomorrow, my present conditional confidence that I’ll be able to fly tomorrow, given that tomorrow I’ll be quite sure that I can fly, should not be very high [Reference Christensen4, p. 321]. But RV has been taken by many as a law of rational subjective probability. Van Fraassen, for instance, refers to RV as the “synchronic—I should think, uncontroversial— part of [V]” [Reference van Fraassen24, p. 19]. The point of Proposition 6 is that the inconsistency of RV can be proved from Kolmogorov principles for finitely additive probability in a type-free setting.

Acknowledgment

We are very grateful to Bas van Fraassen for helpful discussions concerning his reflection principle.

Funding

The research by Cezary Cieśliński was supported by an NCN MAESTRO grant 2019/34/A/HS1/00399 “Epistemic and Semantic Commitments of Foundational Theories.”

Footnotes

2 See, for instance, [Reference Halbach14, chaps. 14 and 15]. In this article we assume familiarity with FS, not with KF.

4 In the interest of readability, we will be somewhat sloppy with notation, especially regarding coding, in this article.

5 See, for instance, [Reference Hajek12].

7 An alternative way of proceeding for the language of the real numbers is to work with a probability-satisfaction predicate $\mathrm {Pr}(x,y,z)$ , which expresses that the probability of x holding of y is z.

10 Weisberg calls this condition Luminosity [Reference Weisberg25, p. 184].

11 Weisberg observes that Luminosity implies Transparency [Reference Weisberg25, p. 196, footnote 6].

12 FS was first introduced in [Reference Friedman and Sheard10]. The locus classicus for the proof-theoretic investigation of $\mathrm {FS}$ is [Reference Halbach13].

13 It is known that given the presence of Necessitation, the Co-Necessitation rule does not make a proof theoretic difference for $\mathrm {FS}$ [Reference Halbach13, p. 322].

14 Assuming, as we do, that probabilities are assigned to all sentences of our object language. An interesting question for future work would be to explore to what extent this limitative result could be avoided by restricting the assignment of probabilities to “grounded” sentences, thereby excluding self-referential probabilistic sentences by treating them much like non-measurable sets in measure theory. (We are grateful to an anonymous reviewer for pointing out this connection.)

15 In [Reference Leitgeb and Schurz20] it is argued that even for frequency interpretations of probability, $\sigma $ -additivity is suspect.

16 $FS$ is standardly presented as containing not just Necessitation but also the Co-Necessitation rule CONEC (from $T(\varphi )$ , infer $\varphi $ ). However, when discussing arithmetical strength, CONEC can be ignored, since it is known that every arithmetical sentence provable in $FS$ can be proved without CONEC. See [Reference Halbach13, sec. 5].

17 For the proof, see [Reference Cieśliński6], Theorem 6.0.13, p. 96.

18 See [Reference Sheard22].

19 Thanks to an anonymous referee for this proposition and for the proof of it.

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