An Exhaustive Variable Selection Study for Linear Models of Soundscape Emotions: Rankings and Gibbs Analysis Articles uri icon

authors

  • San Millan-Castillo, Roberto
  • MARTINO, LUCA
  • Morgado, Eduardo
  • LLORENTE FERNANDEZ, FERNANDO

publication date

  • January 2022

start page

  • 2460

end page

  • 2474

volume

  • 30

International Standard Serial Number (ISSN)

  • 2329-9290

Electronic International Standard Serial Number (EISSN)

  • 2329-9304

abstract

  • In the last decade, soundscapes have become one of the most active topics in Acoustics, providing a holistic approach to the acoustic environment, which involves human perception and context. Soundscapes-elicited emotions are central and substantially subtle and unnoticed (compared to speech or music). Currently, soundscape emotion recognition is a very active topic in the literature. We provide an exhaustive variable selection study (i.e., a selection of the soundscapes indicators) to a well-known dataset (emo-soundscapes). We consider linear soundscape emotion models for two soundscapes descriptors: arousal and valence. Several ranking schemes and procedures for selecting the number of variables are applied. We have also performed an alternating optimization scheme for obtaining the best sequences keeping fixed a certain number of features. Furthermore, we have designed a novel technique based on Gibbs sampling, which provides a more complete and clear view of the relevance of each variable. Finally, we have also compared our results with the analysis obtained by the classical methods based on p-values. As a result of our study, we suggest two simple and parsimonious linear models of only 7 and 16 variables (within the 122 possible features) for the two outputs (arousal and valence), respectively. The suggested linear models provide very good and competitive performance, with R2>0.86 and R2>0.63 (values obtained after a cross-validation procedure), respectively.

subjects

  • Statistics
  • Telecommunications

keywords

  • best sequence search; gibbs sampling; mcmc algorithms; ranking methods; soundscape emotion; variable selection