TY - GEN
T1 - Web-based similarity for emotion recognition in web objects
AU - Biondi, Giulio
AU - Franzoni, Valentina
AU - Li, Yuanxi
AU - Milani, Alfredo
N1 - Publisher Copyright:
© 2016 ACM.
PY - 2016/12/6
Y1 - 2016/12/6
N2 - In this project we propose a new approach for emotion recognition using web-based similarity (e.g. confidence, PMI and PMING). We aim to extract basic emotions from short sentences with emotional content (e.g. news titles, tweets, captions), performing a web-based quantitative evaluation of semantic proximity between each word of the analyzed sentence and each emotion of a psychological model (e.g. Plutchik, Ekman, Lovheim). The phases of the extraction include: text preprocessing (tokenization, stop words, filtering), search engine automated query, HTML parsing of results (i.e. scraping), estimation of semantic proximity, ranking of emotions according to proximity measures. The main idea is that, since it is possible to generalize semantic similarity under the assumption that similar concepts co-occur in documents indexed in search engines, therefore also emotions can be generalized in the same way, through tags or terms that express them in a particular language, ranking emotions. Training results are compared to human evaluation, then additional comparative tests on results are performed, both for the global ranking correlation (e.g. Kendall, Spearman, Pearson) both for the evaluation of the emotion linked to each single word. Different from sentiment analysis, our approach works at a deeper level of abstraction, aiming to recognize specific emotions and not only the positive/negative sentiment, in order to predict emotions as semantic data.
AB - In this project we propose a new approach for emotion recognition using web-based similarity (e.g. confidence, PMI and PMING). We aim to extract basic emotions from short sentences with emotional content (e.g. news titles, tweets, captions), performing a web-based quantitative evaluation of semantic proximity between each word of the analyzed sentence and each emotion of a psychological model (e.g. Plutchik, Ekman, Lovheim). The phases of the extraction include: text preprocessing (tokenization, stop words, filtering), search engine automated query, HTML parsing of results (i.e. scraping), estimation of semantic proximity, ranking of emotions according to proximity measures. The main idea is that, since it is possible to generalize semantic similarity under the assumption that similar concepts co-occur in documents indexed in search engines, therefore also emotions can be generalized in the same way, through tags or terms that express them in a particular language, ranking emotions. Training results are compared to human evaluation, then additional comparative tests on results are performed, both for the global ranking correlation (e.g. Kendall, Spearman, Pearson) both for the evaluation of the emotion linked to each single word. Different from sentiment analysis, our approach works at a deeper level of abstraction, aiming to recognize specific emotions and not only the positive/negative sentiment, in order to predict emotions as semantic data.
KW - Affective data
KW - Emotion extraction
KW - Emotion recognition
KW - Information retrieval
KW - Semantic similarity measures
UR - http://www.scopus.com/inward/record.url?scp=85009113178&partnerID=8YFLogxK
U2 - 10.1145/2996890.3007883
DO - 10.1145/2996890.3007883
M3 - Conference proceeding
AN - SCOPUS:85009113178
T3 - Proceedings - IEEE/ACM International Conference on Utility and Cloud Computing, UCC
SP - 327
EP - 332
BT - Proceedings - 9th IEEE/ACM International Conference on Utility and Cloud Computing, UCC 2016
PB - Association for Computing Machinery (ACM)
T2 - 9th IEEE/ACM International Conference on Utility and Cloud Computing, UCC 2016
Y2 - 6 December 2016 through 9 December 2016
ER -