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Artificial Intelligence, Knowledge and Data Engineering
Sentiment analysis framework for telugu text based on novel contrived passive aggressive with fuzzy weighting classifier (CPSC-FWC)
G. Naidu, M. Seshashayee Gandhi Institute of Technology and Management GITAM (Deemed to be University)
Abstract:
Natural language processing (NLP) is a subset of artificial intelligence demonstrating how algorithms can interact with individuals in their unique languages. In addition, sentiment analysis in NLP is better in numerous programs, including evaluating sentiment in Telugu. Several unsupervised machine-learning algorithms, such as k-means clustering with cuckoo search, are used to detect Telugu text. However, these techniques struggle to cluster data with variable cluster sizes and densities, slow search speeds, and poor convergence accuracy. This study developed a unique ML-based sentiment analysis system for Telugu text to address the shortcomings. Initially, in the pre-processing stage, the proposed Linear Pursuit Algorithm (LPA) removes words in white spaces, punctuation, and stops. Then, for POS tagging, this research proposed a Conditional Random Field with Lexicon weighting; following that, a Contrived Passive Aggressive with Fuzzy Weighting Classifier (CPSC-FWC) is proposed to classify the sentiments in Telugu text. Consequently, the method we propose produces efficient outcomes in terms of accuracy, precision, recall, and f1-score.
Keywords:
machine learning, natural language processing, polarity, sentiment analysis, Telugu.
Received: 31.07.2023
Citation:
G. Naidu, M. Seshashayee, “Sentiment analysis framework for telugu text based on novel contrived passive aggressive with fuzzy weighting classifier (CPSC-FWC)”, Informatics and Automation, 23:1 (2024), 39–64
Linking options:
https://www.mathnet.ru/eng/trspy1280 https://www.mathnet.ru/eng/trspy/v23/i1/p39
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Abstract page: | 41 | Full-text PDF : | 29 |
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