1Yacouba Conde, 2Zhoulianying
1,2Jiangsu University, 301 Xuefu Road, Jingkou, Zhenjiang, Jiangsu, 212013, P.R. China
DOI : https://doi.org/10.47191/ijmra/v4-i11-23Google Scholar Download Pdf
ABSTRACT:
In the machine learning technique, the knowledge graph is advancing swiftly; however, the basic models are not able to grasp all the affluence of the script that comes from the different personal web graphics, social media, ads, and diaries, etc., ignoring the semantic of the basic text identification. The knowledge graph provides a real way to extract structured knowledge from the texts and desire images of neural network, to expedite their semantics examination. In this study, we propose a new hybrid analytic approach for sentiment evaluation based on knowledge graphs, to identify the polarity of sentiment with positive and negative attitudes in short documents, particularly in 4 chirps. We used the tweets graphs, then the similarity of graph highlighted metrics and algorithm classification pertain sentimentality pre-dictions. This technique facilitates the explicability and clarifies the results in the knowledge graph. Also, we compare our differentiate the embeddings n-gram based on sentiment analysis and the result is indicated that our study can outperform classical n-gram models, with an F1-score of 89% and recall up to 90%.
KeywordsKnowledge Graph, Sentiment Analysis, Graph Similarities and Long-Short Term Memory
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VOLUME 04 ISSUE 11 NOVEMBER 2021
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