B. V. Pawar

Work place: K. C. E. Society’s Institute of Management and Research, Jalgaon, Maharashtra 425001, India

E-mail: director@imr.ac.in

Website:

Research Interests:

Biography

B. V. Pawar completed his B.E. in Production Engineering from the renowned VJTI Mumbai in 1986, followed by an M.Sc. in Computer Science from Mumbai University in 1988. He completed his Doctor of Philosophy (Ph.D.) in Computer Science at Kavayitri Bahinabai Chaudhari North Maharashtra University, Jalgaon, India. With an extensive background spanning 34 years in teaching and research in computer science. Presently, he is working as Director of K. C. E. Society’s Institute of Management and Research, Jalgaon. His research interests encompass NLP, Web computing, Information Retrieval, Machine Translation, and Machine Learning. Dr. Pawar has supervised 17 research scholars in their doctoral research and has a prolific publication record, with over 89 research/journal papers, 128 conference paper presentations, and 05 invited talks.

Author Articles
Part-of-speech Tagging for Marathi using Maximum Entropy Markove Model

By Swati Prakash Sonawane Kavita Tukaram Patil R. P. Bhavsar B. V. Pawar

DOI: https://doi.org/10.5815/ijitcs.2026.03.02, Pub. Date: 8 Jun. 2026

Part-of-Speech (POS) tagging is an essential and important pre-processing activity for many Natural Language Processing (NLP) applications, this is particularly more evident for morphologically rich languages such as Marathi. This research investigates POS tagging for Marathi using the Maximum Entropy Markov Model (MEMM). MEMM combines the strengths of conditional probability modelling and sequence prediction, allowing the integration of rich contextual features. Features used include word forms, suffixes, prefixes, and neighboring tags, effectively tackling the challenges presented by inflectional variations and ambiguity in Marathi. Experimental results demonstrate that the MEMM-based POS tagger achieves an accuracy of 83.72%. This performance marks a notable advancement in Marathi POS tagging, given the linguistic diversity and the scarcity of annotated data. Error analysis enhances the issues like ambiguity in homonyms and out-of-vocabulary words, providing methods for further improvement through enriched datasets and sophisticated modelling techniques. This study enhances NLP applications such as machine translation, spell checking, and sentiment analysis for Indian languages and offers a solid foundation for future research in Marathi POS tagging.

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