According to the feature-based model of semantic memory, concepts are described by a set of semantic features that contribute, with different weights, to the meaning of a concept. Interestingly, this theoretical framework has introduced numerous dimensions to describe semantic features. Recently, we proposed a new parameter to measure the importance of a semantic feature for the conceptual representation-that is, semantic significance. Here, with speeded verification tasks, we tested the predictive value of our index and investigated the relative roles of conceptual and featural dimensions on the participants' performance. The results showed that semantic significance is a good predictor of participants' verification latencies and suggested that it efficiently captures the salience of a feature for the computation of the meaning of a given concept. Therefore, we suggest that semantic significance can be considered an effective index of the importance of a feature in a given conceptual representation. Moreover, we propose that it may have straightforward implications for feature-based models of semantic memory, as an important additional factor for understanding conceptual representation.

Semantic significance: A new measure of feature salience / Montefinese, Maria; Ambrosini, Ettore; Fairfield, Beth; Mammarella, Nicola. - In: MEMORY & COGNITION. - ISSN 0090-502X. - 42:3(2014), pp. 355-369. [10.3758/s13421-013-0365-y]

Semantic significance: A new measure of feature salience

FAIRFIELD, Beth;
2014

Abstract

According to the feature-based model of semantic memory, concepts are described by a set of semantic features that contribute, with different weights, to the meaning of a concept. Interestingly, this theoretical framework has introduced numerous dimensions to describe semantic features. Recently, we proposed a new parameter to measure the importance of a semantic feature for the conceptual representation-that is, semantic significance. Here, with speeded verification tasks, we tested the predictive value of our index and investigated the relative roles of conceptual and featural dimensions on the participants' performance. The results showed that semantic significance is a good predictor of participants' verification latencies and suggested that it efficiently captures the salience of a feature for the computation of the meaning of a given concept. Therefore, we suggest that semantic significance can be considered an effective index of the importance of a feature in a given conceptual representation. Moreover, we propose that it may have straightforward implications for feature-based models of semantic memory, as an important additional factor for understanding conceptual representation.
2014
Semantic significance: A new measure of feature salience / Montefinese, Maria; Ambrosini, Ettore; Fairfield, Beth; Mammarella, Nicola. - In: MEMORY & COGNITION. - ISSN 0090-502X. - 42:3(2014), pp. 355-369. [10.3758/s13421-013-0365-y]
File in questo prodotto:
File Dimensione Formato  
Montefinese2014_Article_SemanticSignificanceANewMeasur.pdf

non disponibili

Dimensione 427.9 kB
Formato Adobe PDF
427.9 kB Adobe PDF   Visualizza/Apri   Richiedi una copia

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/871863
Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus 26
  • ???jsp.display-item.citation.isi??? 22
social impact