使用监督学习回归模型预测印度创业公司数量

Darshanaben D. Pandya, Amit Patel, Janki Manishkumar Purohit, Madhavi Nandlal Bhuptani, S. Degadwala, Dhairya Vyas
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引用次数: 0

摘要

对于监管机构和投资者来说,估计印度市场的潜力需要准确预测印度生态系统中初创公司的数量。使用监督学习回归模型可以非常准确地预测创业公司的成长。这些模型考虑了广泛的变量,包括融资、市场需求和竞争。本研究的目的是使用监督学习回归模型来预测印度创业场景的未来。来自Startup Database、官方论文和学术期刊的信息都被纳入了分析。然后使用监督学习回归模型,根据识别的变量,使用过去的训练数据,对未来的增长做出预测。报告指出,包括资金可用性、政府法规和市场需求在内的因素对印度初创企业的数量有重大影响。通过使用监督学习回归模型来预测印度生态系统中未来的公司数量,可以预见印度创业部门的潜在扩张。这项研究的结果支持使用线性模型来估计印度未来的创业活动。政策制定者和投资者可能会从这项研究的结果中受益,因为他们可以更多地了解推动印度初创企业发展的力量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Number of Indian Startups using Supervised Learning Regression Models
For regulators and investors, estimating the potential of the Indian market requires accurately predicting the number of startups in the Indian ecosystem. Startup growth may be predicted with great accuracy using Supervised Learning Regression models. These models take into account a wide range of variables, including financing, market demand, and competition. The purpose of this research is to use Supervised Learning Regression models to make predictions about the future of the startup scene in India. Information from the Startup Database, official papers, and scholarly journals all factored into the analysis. Supervised Learning Regression models are then used to make predictions about future growth based on the identified variables, using training data taken from the past. Factors including finance availability, government regulations, and market demand are identified in the report as having a substantial influence on the number of startups in India. The potential expansion of the startup sector in India is foreseen by using Supervised Learning Regression models to forecast the future number of companies in the Indian ecosystem. The findings of this research support the use of linear models for estimating future startup activity in India. Policymakers and investors may benefit from this study's results by learning more about the forces that are propelling India's startup scene forward.
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