论文标题
Stock2VEC:嵌入为公司改善预测模型的嵌入
Stock2Vec: An Embedding to Improve Predictive Models for Companies
论文作者
论文摘要
为公司建立预测模型通常依赖于使用同一行业中公司的历史数据推理。但是,在相关预测问题中应利用的各个方面的公司相似。对于大型,复杂的组织尤其如此,这可能不是一个行业可以很好地定义并且没有明确的同行。为了在各个维度上使用公司信息启用预测,我们创建了公司股票的嵌入stock2vec,可以轻松地将其添加到适用于相关股票价格的公司的任何预测模型中。我们描述了从股票价格波动中创建这种丰富的向量表示的过程,并表征了尺寸的代表。然后,我们进行全面的实验,以评估在各种业务环境中应用机器学习问题中的嵌入。我们的实验结果表明,Stock2VEC嵌入中的四个功能可以很容易地增强现有的跨公司模型并增强跨公司的预测。
Building predictive models for companies often relies on inference using historical data of companies in the same industry sector. However, companies are similar across a variety of dimensions that should be leveraged in relevant prediction problems. This is particularly true for large, complex organizations which may not be well defined by a single industry and have no clear peers. To enable prediction using company information across a variety of dimensions, we create an embedding of company stocks, Stock2Vec, which can be easily added to any prediction model that applies to companies with associated stock prices. We describe the process of creating this rich vector representation from stock price fluctuations, and characterize what the dimensions represent. We then conduct comprehensive experiments to evaluate this embedding in applied machine learning problems in various business contexts. Our experiment results demonstrate that the four features in the Stock2Vec embedding can readily augment existing cross-company models and enhance cross-company predictions.