2015
Conference article  Open Access

Electoral predictions with Twitter: a machine-learning approach

Coletto M., Lucchese C., Orlando S., Perego R.

Twitter analysis  data mining twitter political 

Several studies have shown how to approximately predict public opinion, such as in political elections, by analyzing user activities in blogging platforms and on-line social networks. The task is challenging for several reasons. Sample bias and automatic understanding of textual content are two of several non trivial issues. In this work we study how Twitter can provide some interesting insights concerning the primary elections of an Italian political party. State-of-the-art approaches rely on indicators based on tweet and user volumes, often including sentiment analysis. We investigate how to exploit and improve those indicators in order to reduce the bias of the Twitter users sample. We propose novel indicators and a novel content-based method. Furthermore, we study how a machine learning approach can learn correction factors for those indicators. Experimental results on Twitter data support the validity of the proposed methods and their improvement over the state of the art.

Source: 6th Italian Information Retrieval Workshop, pp. 1–12, Cagliari, 25/06/2015



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BibTeX entry
@inproceedings{oai:it.cnr:prodotti:337329,
	title = {Electoral predictions with Twitter: a machine-learning approach},
	author = {Coletto M. and Lucchese C. and Orlando S. and Perego R.},
	booktitle = {6th Italian Information Retrieval Workshop, pp. 1–12, Cagliari, 25/06/2015},
	year = {2015}
}
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