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SYMPTOM-BASED DISEASE PREDICTION AND PRECAUTION SYSTEM USING MACHINE LEARNING & DEEP LEARNING

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dc.contributor.author Hasan , Md Fuad
dc.date.accessioned 2025-04-29T05:13:38Z
dc.date.available 2025-04-29T05:13:38Z
dc.date.issued 2025-02-01
dc.identifier.uri http://ar.cou.ac.bd:8080/xmlui/handle/123456789/128
dc.description.abstract The joining of machine learning and common dialect handling (NLP) has changed healthcare, empowering mechanized frameworks for foreseeing and diagnosing maladies. This consideration pointed to create an progressed system for malady classification utilizing literary portrayals of indications. The system's establishment may be a K-nearest neighbor (KNN) classifier, chosen for its direct approach and demonstrated viability in classification errands. Side effect portrayals are preprocessed utilizing TF-IDF vectorization, changing over content into numerical information reasonable for machine learning calculations. To progress information comprehension, exploratory information examination (EDA) strategies, counting word cloud visualization and stop word disposal, are utilized. The inquiry examines modern Neural Arrange structures, such as CNN, Bi-LSTM, GRU, LSTM, CNN+GRU, RNN, and CNN+LSTM, nearby routine machine learning models like Back Vector Machine (SVM), Calculated Relapse (LR), Choice Tree (DT), Multinomial Gullible Bayes (MNB), and Irregular Timberland Classifier (RFC). Besides, transformer-based models, counting BERT and DISTILBERT, are utilized to tackle state-of-the-art NLP capabilities. Execution evaluation was conducted utilizing exactness measurements, classification reports, and perplexity frameworks, with the Choice Tree (DT) demonstrate developing as the best entertainer. To improve availability, a Gradio-powered intuitively chatbot was made, empowering clients to input symptoms and get infection forecasts in conjunction with preventive measures. This inquires about underscores the potential of coordination NLP methods with machine learning to upgrade symptomatic accuracy and productivity in healthcare. By combining prescient analytics with user-friendly interfacing, this extend contributes to the extending field of AI-driven restorative arrangements, advertising a versatile and viable device for infection determination and quiet care. Social media stages have advanced into a essential source of news utilization for groups of onlookers. The expansion of deluding data over conventional media sources, counting social organizing locales, news web journal posts, and online gatherings, has made it challenging to recognize valid news sources en_US
dc.language.iso en en_US
dc.publisher Comilla University en_US
dc.subject Core Idea en_US
dc.subject Methodology en_US
dc.subject Classifier en_US
dc.subject Feature Engineering en_US
dc.subject Data Exploration en_US
dc.subject Model Comparison en_US
dc.subject Traditional models en_US
dc.subject Neural Network architectures en_US
dc.subject Transformer-based models en_US
dc.subject Evaluation en_US
dc.subject Best Performing Model en_US
dc.subject User Interface en_US
dc.subject Enhanced Diagnostic Accuracy en_US
dc.subject User-Friendly Accessibility en_US
dc.subject Advancement in AI-Driven Healthcare en_US
dc.subject Connection to the Second Part of the Text en_US
dc.title SYMPTOM-BASED DISEASE PREDICTION AND PRECAUTION SYSTEM USING MACHINE LEARNING & DEEP LEARNING en_US
dc.type Other en_US


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