Ukrainian Language Chatbot for Sentiment Analysis and User Interests Recognition based on Data Mining

Real-time sentiment analysis allows to monitor social networks and process negative comments before the situation worsens, gives an opportunity to gather customer response to the marketing campaigns or product launches and get an overview of how customers react to the product or prevent negative ones events determining the mood of people (posts on social networks, videos on YouTube, Twitch or live). The development of this system aims at testing the capabilities of the natural language processing system in the recognition of the Ukrainian language.

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