Author:
Description:
We address the issue of domain adaptation for automatic Personality Recognition from Text (PRT). The PRT task consists in the classification of the personality traits of some authors, given some pieces of text they wrote. The purpose of our work is to improve current approaches to PRT in order to extract personality information from social network sites, which is a really challenging task. We argue that current approaches, based on supervised learning, have several limitations for the adaptation to social network domain, mainly due to 1) difficulties in data annotation, 2) overfitting, 3) lack of domain adaptability and 4) multilinguality issues. We propose and test a new approach to PRT, that we will call Adaptive Personality Recognition (APR). We argue that this new approach solves domain adaptability problems and it is suitable for the application in Social Network Sites. We start from an introduction that covers all the background knowledge required for understanding PRT. It includes arguments like personality, the the Big5 factor model, the sets of correlations between language features and personality traits and a brief survey on learning approaches, that includes also feature selection and domain adaptation. We also provide an overview of the state-of-theart in PRT and we outline the problems we see in the application of PRT to social network domain. Basically, our APR approach is based on 1) an external model: a set of features/correlations between language and Big5 personality traits (taken from literature); 2) an adaptive strategy, that makes the model fit the distribution of the features in the dataset at hand, before generating personality hypotheses; 3) an evaluation strategy, that compares all the hypotheses generated for each single text of each author, computing confidence scores. This allows domain adaptation, semi-supervised learning and the automatic extraction of patterns associated to personality traits, that can be added to the initial correlation set, thus combining top-down and bottom-up ...
Publisher:
University of Trento
Contributors:
Poesio, Massimo
Year of Publication:
2012-12-07
Document Type:
Doctoral Thesis ; NonPeerReviewed ; [Doctoral and postdoctoral thesis]
Subjects:
ING-INF/05 SISTEMI DI ELABORAZIONE DELLE INFORMAZIONI ; M-PSI/05 PSICOLOGIA SOCIALE
DDC:
004 Data processing & computer science (computed)
Relations:
http://eprints-phd.biblio.unitn.it/828/1/celli_phdthesis.pdf
;
Celli,
Fabio
(2012)
Adaptive
Personality
Recogntion
from
Text.
PhD
thesis,
University
of
Trento.
http://eprints-phd.biblio.unitn.it/828/1/celli_phdthesis.pdf
;
Celli,
Fabio
(2012)
Adaptive
Personality
Recogntion
from
Text.
PhD
thesis,
University
of
Trento.
Content Provider:
Università degli Studi di Trento: Unitn-eprints.PhD
Further nameUniversity of Trento: Unitn-eprints.PhD
Further nameUniversity of Trento: Unitn-eprints.PhD
- URL: http://eprints-phd.biblio.unitn.it/
- Research Organization Registry (ROR): University of Trento
- Continent: Europe
- Country: it
- Latitude / Longitude: 46.066700 / 11.119100 (Google Maps | OpenStreetMap)
- Number of documents: 1,734
- Open Access: unknown
- Type: Academic publications
- System: Eprints 3
- Content provider indexed in BASE since:
- BASE URL: https://www.base-search.net/Search/Results?q=coll:ftutrentophd
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