Title
Emotional Intensity analysis in Bipolar subjects.
Abstract
The massive availability of digital repositories of human thought opens radical novel way of studying the human mind. Natural language processing tools and computational models have evolved such that many mental conditions are predicted by analysing speech. Transcription of interviews and discourses are analyzed using syntactic, grammatical or sentiment analysis to infer the mental state. Here we set to investigate if classification of Bipolar and control subjects is possible. We develop the Emotion Intensity Index based on the Dictionary of Affect, and find that subjects categories are distinguishable. Using classical classification techniques we get more than 75% of labeling performance. These results sumed to previous studies show that current automated speech analysis is capable of identifying altered mental states towards a quantitative psychiatry.
Year
Venue
Field
2016
arXiv: Artificial Intelligence
Computer science,Sentiment analysis,Computational model,Artificial intelligence,Syntax,Mental state,Machine learning
DocType
Volume
Citations 
Journal
abs/1606.02231
0
PageRank 
References 
Authors
0.34
2
7
Name
Order
Citations
PageRank
Facundo Carrillo141.82
Natalia Mota211.09
Mauro Copelli3144.57
Sidarta Ribeiro4295.50
Mariano Sigman57913.24
Guillermo A. Cecchi619934.56
Diego Fernández Slezak7325.86