2015
Contribution to conference  Open Access

Twitter for election forecasts: a joint machine learning and complex network approach applied to an italian case study

Coletto M., Lucchese C., Orlando S., Perego R., Chessa A., Puliga M.

Twitter  Political  Elections 

Several studies have shown how to approximately predict real-world phenomena, such as political elections, by analyzing user activities in micro-blogging platforms. This approach has proven to be interesting but with some limitations, such as the representativeness of the sample of users, and the hardness of understanding polarity in short messages. We believe that predictions based on social network analysis can be significantly improved by exploiting machine learning and complex network tools, where the latter pro- vides valuable high-level features to support the former in learning an accurate prediction function.

Source: International Conference on Computational Social Science (ICCSS 2015), Helsinki, Finland, 08-11/06/2015



Back to previous page
BibTeX entry
@inproceedings{oai:it.cnr:prodotti:346883,
	title = {Twitter for election forecasts: a joint machine learning and complex network approach applied to an italian case study},
	author = {Coletto M. and Lucchese C. and Orlando S. and Perego R. and Chessa A. and Puliga M.},
	booktitle = {International Conference on Computational Social Science (ICCSS 2015), Helsinki, Finland, 08-11/06/2015},
	year = {2015}
}