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Model can classify speech into Positive, Neutral and Negative with there probabilities.

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utkarsh-iitbhu/Sentimental-Analysis

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Sentimental-Analysis

Sentiment analysis is contextual mining of text which identifies and extracts subjective information in source material, and helping a business to understand the social sentiment of their brand, product or service while monitoring online conversations.

Data preprocessing is one of the critical steps in any machine learning project. It includes cleaning and formatting the data before feeding into a machine learning algorithm. For NLP, the preprocessing steps are comprised of the following tasks :

  1. Tokenizing the string
  2. Lowercasing
  3. Removing stop words and punctuation
  4. Stemming
  5. Sequential modelling

Video link of demonstration of our Sentiments analysis model Link

Case 1: Positive

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Case 2: Neutral

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Case 3: Negative

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Background images change time to time according to the sentiments and are taken from Unsplash

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Model can classify speech into Positive, Neutral and Negative with there probabilities.

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