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Convergence to the Truth and Nothing but the Truth

Published online by Cambridge University Press:  01 April 2022

Kevin T. Kelly
Affiliation:
Department of Philosophy, Carnegie-Mellon University
Clark Glymour
Affiliation:
University of Pittsburgh

Abstract

One construal of convergent realism is that for each clear question, scientific inquiry eventually answers it. In this paper we adapt the techniques of formal learning theory to determine in a precise manner the circumstances under which this ideal is achievable. In particular, we define two criteria of convergence to the truth on the basis of evidence. The first, which we call EA convergence, demands that the theorist converge to the complete truth “all at once”. The second, which we call AE convergence, demands only that for every sentence in the theorist's language, there is a time at which the theorist settles the status of the sentence. The relative difficulties of these criteria are compared for effective and ineffective agents. We then examine in detail how the enrichment of an agent's hypothesis language makes the task of converging to the truth more difficult. In particular, we parametrize first-order languages by predicate and function symbol arity, presence or absence of identity, and quantifier prefix complexity. For nearly each choice of values of these parameters, we determine the senses in which effective and ineffective agents can converge to the complete truth on an arbitrary structure for the language. Finally, we sketch directions in which our learning theoretic setting can be generalized or made more realistic.

Type
Research Article
Copyright
Copyright © 1989 by the Philosophy of Science Association

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Footnotes

We thank Dan Osherson for helpful comments on a draft of this paper.

References

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