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Categorization based Belief formations

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  • Bleile, Jörg

    (Center for Mathematical Economics, Bielefeld University)

Abstract

An agent needs to determine a belief over potential outcomes for a new problem based on past observations gathered in her database (memory). There is a rich literature in cognitive science showing that human minds process and order information in categories, rather than piece by piece. We assume that agents are naturally equipped (by evolution) with a efficient heuristic intuition how to categorize. Depending on how available categorized information is activated and processed, we axiomatize two different versions of belief formation relying on categorizations. In one approach an agent relies only on the estimates induced by the single pieces of information contained in so called target categories that are activated by the problem for which a belief is asked for. Another approach forms a prototype based belief by averaging over all category-based estimates (so called prototypical estimates) corresponding to each category in the database. In both belief formations the involved estimates are weighted according to their similarity or relevance to the new problem. We impose normatively desirable and natural properties on the categorization of databases. On the stage of belief formation our axioms specify the relationship between different categorized databases and their corresponding induced (category or prototype based) beliefs. The axiomatization of a belief formation in Billot et al. (Econometrica, 2005) is covered for the situation of a (trivial) categorization of a database that consists only of singleton categories and agents basically do not process information categorical.

Suggested Citation

  • Bleile, Jörg, 2016. "Categorization based Belief formations," Center for Mathematical Economics Working Papers 519, Center for Mathematical Economics, Bielefeld University.
  • Handle: RePEc:bie:wpaper:519
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    File URL: https://pub.uni-bielefeld.de/download/2901641/2902674
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    References listed on IDEAS

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    1. Paola Manzini & Marco Mariotti, 2012. "Categorize Then Choose: Boundedly Rational Choice And Welfare," Journal of the European Economic Association, European Economic Association, vol. 10(5), pages 1141-1165, October.
    2. Antoine Billot & Itzhak Gilboa & Dov Samet & David Schmeidler, 2012. "Probabilities as Similarity-Weighted Frequencies," World Scientific Book Chapters, in: Case-Based Predictions An Axiomatic Approach to Prediction, Classification and Statistical Learning, chapter 7, pages 169-184, World Scientific Publishing Co. Pte. Ltd..
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    5. Eichberger, Jürgen & Guerdjikova, Ani, 2010. "Case-based belief formation under ambiguity," Mathematical Social Sciences, Elsevier, vol. 60(3), pages 161-177, November.
    6. Mohlin, Erik, 2014. "Optimal categorization," Journal of Economic Theory, Elsevier, vol. 152(C), pages 356-381.
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    9. Bleile, Jörg, 2016. "Limited Attention in Case-Based Belief Formation," Center for Mathematical Economics Working Papers 518, Center for Mathematical Economics, Bielefeld University.
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    1. Bleile, Jörg, 2016. "Limited Attention in Case-Based Belief Formation," Center for Mathematical Economics Working Papers 518, Center for Mathematical Economics, Bielefeld University.

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    Keywords

    Belief formation; prior; case-based reasoning; similarity; categorization; prototype;
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