Comparative analysis of Start-up Success Rate Prediction Using Machine Learning Techniques

Citation

Belgaum, Mohammad Riyaz and Viswanath, Ediga Kasi and Chakradhar, Pavukolla and Goud, Ediga Chenna Kesava and Chandu, Kuruva (2024) Comparative analysis of Start-up Success Rate Prediction Using Machine Learning Techniques. In: 2024 Third International Conference on Smart Technologies and Systems for Next Generation Computing (ICSTSN), 18-19 July 2024, Villupuram, India.

[img] Text
a.pdf - Published Version
Restricted to Repository staff only

Download (3MB)

Abstract

Software startups create innovative products or services using programming, which can lead to a need for products from potential customers. Researchers suggest that trial and error methodology can increase the success rate of these organizations by evaluating assumptions about client needs before fostering a product. However, programming new businesses typically do not require trial and error. The study aims to predict the success of startup companies in their early development stages by analyzing their success based on initial funding. A study of 106 unsuccessful software start-ups was conducted to predict the success rate. The experimentation progression model (X Pro) was developed to show that effective experimentation requires understanding trial and error, setting objectives, conducting tests, analyzing results, and acting based on new knowledge. The findings provide insights into supporting procedures and approaches that enhance trial- and-error reception in developing new business models. Researchers can become aware of potential factors leading to startup disappointment and take precautions to avoid them. The research focuses on using web-based open sources, including social networking services and the web, to model the task. The study uses machine learning techniques like Random Forest, Gradient Boost Classifier, XG Boost, and Ada Boost Classifier. The analysis provides insights into the types of useful signals discovered on the web and market mechanisms underlying the funding process. This approach offers a more comprehensive approach to predicting startup success.

Item Type: Conference or Workshop Item (Paper)
Uncontrolled Keywords: Pre-process, Flask, Machine learning, Random Forest, Gradient Boosting Classifier, XG Boost, Ada-boost Classifier
Subjects: Q Science > QA Mathematics > QA71-90 Instruments and machines
Divisions: Faculty of Computing and Informatics (FCI)
Depositing User: Ms Nurul Iqtiani Ahmad
Date Deposited: 04 Nov 2024 01:19
Last Modified: 04 Nov 2024 01:19
URII: http://shdl.mmu.edu.my/id/eprint/13077

Downloads

Downloads per month over past year

View ItemEdit (login required)