Literature DB >> 25308549

Comparing supervised learning methods for classifying sex, age, context and individual Mudi dogs from barking.

Ana Larrañaga1, Concha Bielza, Péter Pongrácz, Tamás Faragó, Anna Bálint, Pedro Larrañaga.   

Abstract

Barking is perhaps the most characteristic form of vocalization in dogs; however, very little is known about its role in the intraspecific communication of this species. Besides the obvious need for ethological research, both in the field and in the laboratory, the possible information content of barks can also be explored by computerized acoustic analyses. This study compares four different supervised learning methods (naive Bayes, classification trees, [Formula: see text]-nearest neighbors and logistic regression) combined with three strategies for selecting variables (all variables, filter and wrapper feature subset selections) to classify Mudi dogs by sex, age, context and individual from their barks. The classification accuracy of the models obtained was estimated by means of [Formula: see text]-fold cross-validation. Percentages of correct classifications were 85.13 % for determining sex, 80.25 % for predicting age (recodified as young, adult and old), 55.50 % for classifying contexts (seven situations) and 67.63 % for recognizing individuals (8 dogs), so the results are encouraging. The best-performing method was [Formula: see text]-nearest neighbors following a wrapper feature selection approach. The results for classifying contexts and recognizing individual dogs were better with this method than they were for other approaches reported in the specialized literature. This is the first time that the sex and age of domestic dogs have been predicted with the help of sound analysis. This study shows that dog barks carry ample information regarding the caller's indexical features. Our computerized analysis provides indirect proof that barks may serve as an important source of information for dogs as well.

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Year:  2014        PMID: 25308549     DOI: 10.1007/s10071-014-0811-7

Source DB:  PubMed          Journal:  Anim Cogn        ISSN: 1435-9448            Impact factor:   3.084


  2 in total

1.  Polyphony of domestic dog whines and vocal cues to body size.

Authors:  Olga V Sibiryakova; Ilya A Volodin; Elena V Volodina
Journal:  Curr Zool       Date:  2020-08-13       Impact factor: 2.624

2.  The acoustic bases of human voice identity processing in dogs.

Authors:  Anna Gábor; Noémi Kaszás; Tamás Faragó; Paula Pérez Fraga; Melinda Lovas; Attila Andics
Journal:  Anim Cogn       Date:  2022-02-10       Impact factor: 2.899

  2 in total

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