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		<www.jsetms.com>
		<Title>Text Analyzer Using Machine Learning </Title>
		<Author>R.Kalpana, M. SAI KOUSHIK, N. SRAVANI, P. HARSHITHA, P. KAVERI</Author>
		<Volume>03</Volume>
		<Issue>3(1)</Issue>
		<Abstract>With the rapid growth of textual data generated daily from social media emails articles and online platforms extracting meaningful insights has become increasingly challenging The Text Analyzer using Machine Learning is a system developed to automatically process classify and derive valuable information from large volumes of text data By applying machine learning techniques the system performs tasks such as sentiment analysis topic classification keyword extraction and text summarization enabling users to interpret content more effectively The system preprocesses textual data using methods like tokenization stopword removal and vectorization to transform unstructured text into structured numerical formats Machine learning algorithms such as Support Vector Machines SVM Random Forest Nave Bayes and Neural Networks are then utilized to analyze and classify the data based on specific objectives This approach enables automatic detection of patterns trends and sentiments within large datasets By incorporating predictive analytics and intelligent classification the Text Analyzer supports better decisionmaking improves content management and delivers actionable insights across domains such as marketing education and social media analysis The system demonstrates strong accuracy scalability and efficiency making it an effective solution for realtime text analysis and management</Abstract>
		<permissions>
<copyright-statement>Copyright (c) Journal of Science Engineering Technology and Management Science. All rights reserved</copyright-statement>
<copyright-year>2026</copyright-year>
</permissions>
		</www.jsetms.com>
		