论文标题
使用深度学习来找到下一个独角兽:实用的综合
Using Deep Learning to Find the Next Unicorn: A Practical Synthesis
论文作者
论文摘要
初创企业通常代表与破坏性创新和高扩展性相关的新成立的业务模型。它们通常被视为经济和社会发展的强大引擎。同时,初创企业受到许多因素(例如有限的财务资金和人力资源)的限制。因此,创业公司最终成功的机会很少像“在野外发现独角兽”一样罕见。 Venture Capital(VC)努力在早期阶段识别和投资独角兽初创企业,希望获得高回报。为了避免完全依靠人类领域的专业知识和直觉,投资者通常采用数据驱动的方法来预测初创企业的成功概率。在过去的二十年中,该行业经历了从传统统计方法转变为基于机器学习(ML)的范式转变。值得注意的是,数据量和多样性的快速增长迅速迎来了深度学习(DL),这是ML的一个子集,作为一种潜在的卓越方法,就其能力和表现力而言。在这项工作中,我们对基于DL的方法进行了文献综述和综合,涵盖了整个DL生命周期。目的是a)获得对使用DL的启动评估方法的彻底和深入的理解,而b)为从业者提供宝贵和可行的学习。据我们所知,我们的工作是第一个。
Startups often represent newly established business models associated with disruptive innovation and high scalability. They are commonly regarded as powerful engines for economic and social development. Meanwhile, startups are heavily constrained by many factors such as limited financial funding and human resources. Therefore, the chance for a startup to eventually succeed is as rare as "spotting a unicorn in the wild". Venture Capital (VC) strives to identify and invest in unicorn startups during their early stages, hoping to gain a high return. To avoid entirely relying on human domain expertise and intuition, investors usually employ data-driven approaches to forecast the success probability of startups. Over the past two decades, the industry has gone through a paradigm shift moving from conventional statistical approaches towards becoming machine-learning (ML) based. Notably, the rapid growth of data volume and variety is quickly ushering in deep learning (DL), a subset of ML, as a potentially superior approach in terms of capacity and expressivity. In this work, we carry out a literature review and synthesis on DL-based approaches, covering the entire DL life cycle. The objective is a) to obtain a thorough and in-depth understanding of the methodologies for startup evaluation using DL, and b) to distil valuable and actionable learning for practitioners. To the best of our knowledge, our work is the first of this kind.