AIJun 4, 2018

Learning from Exemplars and Prototypes in Machine Learning and Psychology

arXiv:1806.01130v12 citations
Originality Synthesis-oriented
AI Analysis

It bridges concepts between machine learning and psychology to inspire new similarity-based models, but is incremental as it primarily reviews and juxtaposes existing ideas.

This paper compares similarity-based categorization models from cognitive psychology with nearest neighbor classifiers in machine learning, highlighting methods for selecting representative reference sets to improve classification.

This paper draws a parallel between similarity-based categorisation models developed in cognitive psychology and the nearest neighbour classifier (1-NN) in machine learning. Conceived as a result of the historical rivalry between prototype theories (abstraction) and exemplar theories (memorisation), recent models of human categorisation seek a compromise in-between. Regarding the stimuli (entities to be categorised) as points in a metric space, machine learning offers a large collection of methods to select a small, representative and discriminative point set. These methods are known under various names: instance selection, data editing, prototype selection, prototype generation or prototype replacement. The nearest neighbour classifier is used with the selected reference set. Such a set can be interpreted as a data-driven categorisation model. We juxtapose the models from the two fields to enable cross-referencing. We believe that both machine learning and cognitive psychology can draw inspiration from the comparison and enrich their repertoire of similarity-based models.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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