Similarity Self/Ideal Index (SSI): A Feature-Based Approach to Modeling Psychological Well-Being

Other authors

Universitat Ramon Llull. Facultat de Psicologia, Ciències de l'Educació i de l'Esport Blanquerna

Publication date

2025-12



Abstract

This paper introduces a similarity index aimed at modeling psychological well-being through a set-theoretic formalization of self–ideal alignment. Inspired by Tversky’s feature-based model of similarity, the proposed index quantifies the degree of overlap and divergence between the current self-perception and the ideal self, each represented as a vector of signed attributes. The formulation extends traditional approaches in Personal Construct Psychology by incorporating directional and magnitude-based comparisons across constructs, and its mathematical properties can be expressed within a fuzzy similarity space that ensures boundedness and internal coherence. Unlike standard correlational methods commonly used in psychological assessment, this model provides an alternative framework that allows for asymmetric weighting of discrepancies and non-linear representations of similarity. Developed within the WimpGrid formalism—a graph-theoretical extension of constructivist assessment—the index offers potential applications in clinical modeling, idiographic measurement, and the mathematical analysis of dynamic self-concept systems. We discuss its relevance as a generalizable tool for quantitative psychology, and its potential for integration into computational models of personality and self-organization.

Document Type

Article

Document version

Published version

Language

English

Pages

22 p.

Publisher

MDPI AG

Published in

Mathematics, 13(24)

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© L'autor/a

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Attribution 4.0 International

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