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Summarizing Sentiment From Social Media Discourses Given In SportDomain Using Machine Learning

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dc.contributor.author Negash, Rehima
dc.contributor.author Urgesa, Tekilu
dc.contributor.author Hilu, Hilu
dc.date.accessioned 2023-02-01T12:55:58Z
dc.date.available 2023-02-01T12:55:58Z
dc.date.issued 2022-09-23
dc.identifier.uri https://repository.ju.edu.et//handle/123456789/7608
dc.description.abstract The sentiment discourse (i.e. responses and replay) on the social media such as, Facebook, Twitter, YouTube, Forums, etc., forms the outbreaks of ample of opinionated thread chains.To drive a complete message, from social Network discourses every single opinionated text under opinion thread has to be seen interdependently. But, the methods of straight forward sentiment mining or computational linguistics being applied, cannot notice the interdependency between two nodes in the absence of opinion oriented graph. In This study, a graph-based opinion summarizing model, whose vertices contain message objects or topic under discussion and its reply nodes that are labeled with opinion polarity is anticipated. The major contribution of this study is the use of back-trace enabled rule based applied on opinion-oriented graph. The total Data set used to undertake this study ware collected from social Network site Facebook, from sport domain and annotated experts. The proposed model extracts the summary of opinions polarity from the corpus of opinion-oriented graph. Hence, it is possible to achieve enhanced decisions by summarized sentiments polarity derived from this graph. Experiments are conducted and have confirmed that the proposed model provided an encouraging result, The result from the model show that the entropy of thread of discussions are between 0 and 0.5 this indicates that the opinion posted were the same type and positive. This reveals that the feedbacks given on sport event are positive feedbacks that encourage National team. However, the graph-based opinion mining model by itself does not automatically identify the orientation of a text. For this, we put forward the automatic sentiment annotation for better performance and the use of separate model for local language for enhanced decisions on domain of the study en_US
dc.language.iso en_US en_US
dc.subject Sentiment summary en_US
dc.subject back-tracing en_US
dc.subject discourse en_US
dc.subject opinion oriented-graph en_US
dc.subject social network en_US
dc.subject thread analysis en_US
dc.title Summarizing Sentiment From Social Media Discourses Given In SportDomain Using Machine Learning en_US
dc.type Thesis en_US


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