创业金融:利用机器学习和大数据的新兴方法

IF 1.5 Q3 BUSINESS Foundations and Trends in Entrepreneurship Pub Date : 2021-04-27 DOI:10.1561/0300000099
Francesco Ferrati, M. Muffatto
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引用次数: 4

摘要

对于股权投资者来说,确定最有可能实现预期投资回报的企业是一项极其复杂的任务。为了选择早期公司,风险投资家和商业天使传统上依赖于评估标准和他们自己的经验。然而,考虑到新的创新公司的高风险,投资组合中财务成功的初创公司的数量通常很低。在这种不确定性的背景下,数据驱动的投资决策方法可以提供更有效的结果。具体而言,机器学习技术的应用可以为股权投资者和创业金融学者提供对成功创业公司常见模式的新见解。本研究全面概述了机器学习算法在Crunchbase数据库中的应用。我们强调了Francesco Ferrati和Moreno Muffatto(2021)的主要研究目标,“创业金融:使用机器学习和大数据的新兴方法”,创业基础和趋势®:第17卷,第3期,第232–329页。DOI:10.1561/030000099。全文可在:http://dx.doi.org/10.1561/0300000099
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Entrepreneurial Finance: Emerging Approaches Using Machine Learning and Big Data
For equity investors the identification of ventures that most likely will achieve the expected return on investment is an extremely complex task. To select early-stage companies, venture capitalists and business angels traditionally rely on a mix of assessment criteria and their own experience. However, given the high level of risk with new, innovative companies, the number of financially successful startups within an investment portfolio is generally very low. In this context of uncertainty, a data-driven approach to investment decision-making can provide more effective results. Specifically, the application of machine learning techniques can provide equity investors and scholars in entrepreneurial finance with new insights on patterns common to successful startups. This study presents a comprehensive overview of the applications of machine learning algorithms to the Crunchbase database. We highlight the main research goals that can Francesco Ferrati and Moreno Muffatto (2021), “Entrepreneurial Finance: Emerging Approaches Using Machine Learning and Big Data”, Foundations and Trends® in Entrepreneurship: Vol. 17, No. 3, pp 232–329. DOI: 10.1561/0300000099. Full text available at: http://dx.doi.org/10.1561/0300000099
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来源期刊
CiteScore
5.80
自引率
0.00%
发文量
7
期刊介绍: Foundations and Trends® in Entrepreneurship publishes survey and tutorial articles in the following topics: - Nascent and start-up entrepreneurs - Opportunity recognition - New venture creation process - Business formation - Firm ownership - Market value and firm growth - Franchising - Managerial characteristics and behavior of entrepreneurs - Strategic alliances and networks - Government programs and public policy - Gender and ethnicity - New business financing - Business angels - Family-owned firms - Management structure, governance and performance - Corporate entrepreneurship - High technology - Small business and economic growth
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