INTERNATIONAL RESEARCH JOURNAL OF SCIENCE ENGINEERING AND TECHNOLOGY

( Online- ISSN 2454 -3195 ) New DOI : 10.32804/RJSET

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EFFICIENT MACHINE LEARNING ALGORITHM FOR PREDICTING NEW VENTURE SURVIVAL

    3 Author(s):  MRS.SAJITHA JANARDHANAN , MS.DIVYA.R , DR.M.RAJESWARI

Vol -  10, Issue- 2 ,         Page(s) : 103 - 107  (2020 ) DOI : https://doi.org/10.32804/RJSET

Abstract

Predicting new venture survival plays vital role in todays world. Research also shows that interactions on social media can able to make valid predictions about future . This project, find best algorithm for predict new venture survival based on Twitter content and also trying to shown that social media helps in prediction. Specifically, here analyze more than 100,000 tweets from new venture’s Twitter accounts using context-specific machine learning approaches such as random forest, gradient boosting, modified LSTM etc. Then some evaluation metrics are used to evaluate machine learning models. This project is very helpful in funding rounds of start-up, also helps new venture to improve their work

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