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  4. A Machine Learning Approach For The Automatic Classification Of Schizophrenic Discourse
 
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A Machine Learning Approach For The Automatic Classification Of Schizophrenic Discourse

Journal
IEEE Access
ISSN
2169-3536
Date Issued
2019-01-01
DOI
10.1109/access.2019.2908620
WoS ID
WOS:000465476300001
Abstract
Schizophrenia is a chronic neurobiological disorder whose early detection has attracted significant attention from the clinical, psychiatric, and also artificial intelligence communities. This latter approach has been mainly focused on the analysis of neuroimaging and genetic data. A less explored strategy consists in exploiting the power of natural language processing (NLP) algorithms applied over narrative texts produced by schizophrenic subjects. In this paper, a novel dataset collected from a proper field study is presented. Also, grammatical traits discovered in narrative documents are used to build computational representations of texts, allowing an automatic classification of discourses generated by schizophrenic and non-schizophrenic subjects. The attained results showed that the use of the proposed computational representations along with machine learning techniques enables a novel and precise strategy to automatically detect texts produced by schizophrenic subjects.
Subjects

Computer Science, Inf...

Computer Science

Engineering, Electric...

Engineering

Materials Science

Telecommunications

OCDE Subjects

Natural Sciences::Com...

Author(s)
Hector Allende-Cid
Juan Zamora
Pedro Alfaro-Faccio
Alonso, María Francisca  
Facultad de Medicina  

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