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This chapter uses digital humanities approaches to discover the computational signature of the idea of government in the British eighteenth century. Data mining techniques are applied to the large dataset Eighteenth Century Collections Online in order to ascertain the precise composition of the idea of government and to track its evolution over the entire century. The connections between government and despotism are explored in the concluding argument.
This chapter uses methods in text mining in order to trace the history of the idea of liberty between 1600 and 1800. It seeks to investigate the standard account of this idea developed most rigorously by Quentin Skinner over many years. Using quantitative methods and the tools created by the Cambridge Concept Lab, it discovers a slightly different history from the standard accounts that complements and augments that history.
This chapter outlines a novel method for discerning the structure and history of concepts and their aggregation as ideas. Based on the analysis of co-ocurrence data in large data sets, the method creates a measure of ‘binding’ that allows one to inspect the larger constellations of words and concepts that comprise ideas which can be tracked diachronically. The chapter also describes the method used for ascertaining the ‘binding’ between concepts, and for modelling ‘ideas’. A detailed account of how the ‘shared lexis tool’ was built is also included.
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