风险投资网络的分析与预测

Hongyi Lan, Jiarao Liu, Zhong Yu, Shuqi Zi
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引用次数: 0

摘要

风险投资网络揭示了投资者之间的共同投资关系。对其结构进行综合分析,不仅可以发现各投资者的投资偏好,还可以揭示其合作参与中隐藏的一些规律。本文构建了两个有向和无向网络,以节点为投资者,以边缘为其协作关系,从不同角度分析了投资者网络。我们首先分析了基于图论的传统技术(如社区检测和PageRank中心性)的两个网络,并获得了一些关于决策模式和每个投资者声望的有趣发现。鉴于这一指示性发现,我们还尝试通过将每个投资者的信息编码到向量嵌入中,使用图卷积网络(GCN)和个性化神经预测传播(PPNP)来预测投资者的特征。这一结果再次显示了这两种新兴神经网络的强大和优势,也为进一步的研究和分析提供了便利。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis and Prediction of Venture Capital Network
Venture capital network reveals co-investment relationships between investors. The comprehensive analysis of its structure could not only detect the investment preference of each investor, but also uncover some hidden patterns within their cooperation's engagement. In this paper, we construct two networks-one directed and another undirected-with nodes as investors and edges as their collaboration relationships to analyze the investor networks from different perspectives. We first analyze two networks based on conventional techniques from graph theory such as community detection and PageRank centrality and obtain some interesting findings concerning the patterns of decision-making and each investor's prestige. Given such indicative discovery, we also attempt to predict investors' characteristics with Graph Convolutional Network (GCN) and Personalized Propagation of Neural Predictions (PPNP) by encoding each investor's information into a vector embedding. The results once again display the power and advantages of these two emerging neural networks, and it would also facilitate further research and analysis.
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