Reference:

Timo Honkela, Zaur Izzatdust, and Krista Lagus. Text mining for wellbeing: Selecting stories using semantic and pragmatic features. In Proceedings of ICANN 2012, 22nd International Conference on Artificial Neural Networks, Volume II, pages 467–474, 2012.

Abstract:

In this article, we explore an application in an area of research called wellbeing informatics. More specifically, we consider how to build a system that could be used for searching stories that relate to the interest of the user (content relevance), and help the user in his or her developmental process by providing encouragement, useful experiences, or otherwise supportive content (emotive relevance). The first objective is covered through topic modeling applying independent component analysis and the second by using sentiment analysis. We also use style analysis to exclude stories that are inappropriate in style. We discuss linguistic theories and methodological aspects of this area, outline a hybrid methodology that can be used in selecting stories that match both the content and emotive criteria, and present the results of experiments that have been used to validate the approach.

Suggested BibTeX entry:

@inproceedings{HonkelaIzzatdustLagusICANN12,
    author = {Timo Honkela and Zaur Izzatdust and Krista Lagus},
    booktitle = {Proceedings of ICANN 2012, 22nd International Conference on Artificial Neural Networks, Volume II},
    language = {eng},
    pages = {467-474},
    title = {Text Mining for Wellbeing: Selecting Stories Using Semantic and Pragmatic Features},
    year = {2012},
}

See www.springerlink.com ...