Reviewing the Application of Data Analysis in Managing Venture Capital
DOI:
https://doi.org/10.22105/mznamv83Keywords:
Vanture Capital, Data Analysis, Chi-square, Artificial Intelligence, Risk managementAbstract
This research comprehensively analyzes the application of data analysis within the Venture Capital (VC) market, emphasizing the burgeoning intersection of technology, data science, and finance to guide astute investment decisions. Recognizing the complexities inherent in VC, this study begins by elucidating the concept of VC, outlining its operational challenges, and explaining the sector's considerable potential for innovation and growth. Subsequent sections delve into applying rigorous analytical methodologies across various segments of the VC market. The research methodology involves a meticulous compilation of primary and secondary data. Primary data was systematically gathered through questionnaires targeted at relevant stakeholders in the VC domain. In contrast, secondary data was sourced from a comprehensive literature review, including academic journals, industry-specific websites, and other relevant publications. The analysis used statistical tools, such as graphical representations, mean averages, and advanced tests, including Analysis of Variance (ANOVA) and the Chi-square test, to ensure robust and reliable insights. This paper aims to enhance strategic investment decisions in the VC sector by offering detailed analytical perspectives.
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