Towards hypergraph cognitive networks as feature-rich models of knowledge
Salvatore Citraro, Simon De Deyne, Massimo Stella, Giulio, Rossetti

TL;DR
This paper introduces feature-rich cognitive hypergraphs that incorporate higher-order associations and psycholinguistic features to better model human memory and improve predictions of concept concreteness.
Contribution
It presents a novel hypergraph model that captures higher-order concept relationships and psycholinguistic features, outperforming traditional pairwise networks in predicting word concreteness.
Findings
Hypergraph models outperform pairwise networks in predicting concreteness.
Higher-order associations contain richer information than pairwise links.
Psycholinguistic features improve the interpretability and accuracy of memory models.
Abstract
Semantic networks provide a useful tool to understand how related concepts are retrieved from memory. However, most current network approaches use pairwise links to represent memory recall patterns. Pairwise connections neglect higher-order associations, i.e. relationships between more than two concepts at a time. These higher-order interactions might covariate with (and thus contain information about) how similar concepts are along psycholinguistic dimensions like arousal, valence, familiarity, gender and others. We overcome these limits by introducing feature-rich cognitive hypergraphs as quantitative models of human memory where: (i) concepts recalled together can all engage in hyperlinks involving also more than two concepts at once (cognitive hypergraph aspect), and (ii) each concept is endowed with a vector of psycholinguistic features (feature-rich aspect). We build hypergraphs…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Topic Modeling · Complex Network Analysis Techniques
