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		<Title>HIDDEN PATTERN MINING IN FAILED BUSINESS STARTUPS </Title>
		<Author>SK. AHMED MOHIDDIN, GOPISETTI BHANUVARSHA, ERADALA NAGA MAHA JAYA SRI, PAVANA SRI RAM BASWANI, KUMBHAM BABY SWARUPA</Author>
		<Volume>03</Volume>
		<Issue>03</Issue>
		<Abstract>The rapid growth of the global startup ecosystem has created significant opportunities for innovation economic development and technological advancement However despite the increasing number of startups emerging each year a large proportion of them fail during their early operational stages due to factors such as poor market fit financial instability inefficient resource management and strategic misalignment Identifying the underlying causes of startup failure is therefore essential for investors founders and policymakers to make informed decisions and reduce financial risk This project titled Hidden Pattern Mining in Failed Business Startups aims to develop an intelligent analytical platform capable of predicting startup failure risk and uncovering hidden patterns associated with unsuccessful ventures The proposed system called the Startup Failure Risk Intelligence Platform SFRIP integrates fullstack web technologies with advanced machine learning techniques to analyze structured startup data such as funding history industry type team size operational duration and burn rate The platform employs the XGBoost algorithm for predictive classification to estimate the probability of startup success or failure In addition KMeans clustering is used to segment startups into meaningful risk categories while the FPGrowth algorithm is applied to discover frequent patterns and associations that commonly occur in failed startups These analytical techniques enable the system to generate both quantitative risk predictions and qualitative insights into contributing factors The results are presented through interactive dashboards that transform complex analytical outputs into intuitive visualizations for nontechnical users By combining predictive analytics pattern mining and visualization within a webbased system the project demonstrates how datadriven intelligence can enhance investment decisionmaking support startup founders in identifying weaknesses and ultimately contribute to reducing failure rates within the entrepreneurial ecosystem</Abstract>
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<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>
		