--- date: '2022-11-21T20:09:49' hypothesis-meta: created: '2022-11-21T20:09:49.369906+00:00' document: title: - IEEEtran-7.pdf flagged: false group: __world__ hidden: false id: c71vQmnYEe2a7ffZp-667A links: html: https://hypothes.is/a/c71vQmnYEe2a7ffZp-667A incontext: https://hyp.is/c71vQmnYEe2a7ffZp-667A/www.researchgate.net/profile/Lin-Gui-5/publication/342058196_Multi-Task_Learning_with_Mutual_Learning_for_Joint_Sentiment_Classification_and_Topic_Detection/links/5f96fd48458515b7cf9f3abd/Multi-Task-Learning-with-Mutual-Learning-for-Joint-Sentiment-Classification-and-Topic-Detection.pdf json: https://hypothes.is/api/annotations/c71vQmnYEe2a7ffZp-667A permissions: admin: - acct:ravenscroftj@hypothes.is delete: - acct:ravenscroftj@hypothes.is read: - group:__world__ update: - acct:ravenscroftj@hypothes.is tags: - multi-task learning - topic modelling - NLProc target: - selector: - end: 8039 start: 7778 type: TextPositionSelector - exact: "e argue that mutual learningwould benefit sentiment classification since\ \ it enriches theinformation required for the training of the sentiment clas-sifier\ \ (e.g., when the word \u201Cincredible\u201D is used to describe\u201Cacting\u201D\ \ or \u201Cmovie\u201D, the polarity should be positive)" prefix: "thewords \u201Cacting\u201D and \u201Cmovie\u201D. W" suffix: . At thesame time, mutual learni type: TextQuoteSelector source: https://www.researchgate.net/profile/Lin-Gui-5/publication/342058196_Multi-Task_Learning_with_Mutual_Learning_for_Joint_Sentiment_Classification_and_Topic_Detection/links/5f96fd48458515b7cf9f3abd/Multi-Task-Learning-with-Mutual-Learning-for-Joint-Sentiment-Classification-and-Topic-Detection.pdf text: By training a topic model that has "similar" weights to the word vector model the sentiment task can also be improved (as per the example "incredible" should be positive when used to describe "acting" or "movie" in this context updated: '2022-11-21T20:09:49.369906+00:00' uri: https://www.researchgate.net/profile/Lin-Gui-5/publication/342058196_Multi-Task_Learning_with_Mutual_Learning_for_Joint_Sentiment_Classification_and_Topic_Detection/links/5f96fd48458515b7cf9f3abd/Multi-Task-Learning-with-Mutual-Learning-for-Joint-Sentiment-Classification-and-Topic-Detection.pdf user: acct:ravenscroftj@hypothes.is user_info: display_name: James Ravenscroft in-reply-to: https://www.researchgate.net/profile/Lin-Gui-5/publication/342058196_Multi-Task_Learning_with_Mutual_Learning_for_Joint_Sentiment_Classification_and_Topic_Detection/links/5f96fd48458515b7cf9f3abd/Multi-Task-Learning-with-Mutual-Learning-for-Joint-Sentiment-Classification-and-Topic-Detection.pdf tags: - multi-task learning - topic modelling - NLProc - hypothesis type: annotation url: /annotation/2022/11/21/1669061389 ---
e argue that mutual learningwould benefit sentiment classification since it enriches theinformation required for the training of the sentiment clas-sifier (e.g., when the word “incredible” is used to describe“acting” or “movie”, the polarity should be positive)
By training a topic model that has "similar" weights to the word vector model the sentiment task can also be improved (as per the example "incredible" should be positive when used to describe "acting" or "movie" in this context