Stock2Vec: An Embedding to Improve Predictive Models for Companies

01/27/2022
by   Ziruo Yi, et al.
0

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.

READ FULL TEXT
research
09/24/2019

Exploring Graph Neural Networks for Stock Market Predictions with Rolling Window Analysis

Recently, there has been a surge of interest in the use of machine learn...
research
12/08/2017

Collaborative Company Profiling: Insights from an Employee's Perspective

Company profiling is an analytical process to build an indepth understan...
research
09/28/2020

An Iterative Approach based on Explainability to Improve the Learning of Fraud Detection Models

Implementing predictive models in utility companies to detect Non-Techni...
research
06/09/2022

Open ERP System Data For Occupational Fraud Detection

Recent estimates report that companies lose 5 occupational fraud. Since ...
research
04/26/2021

Geographic ratemaking with spatial embeddings

Spatial data is a rich source of information for actuarial applications:...
research
03/10/2017

Deep Learning in Customer Churn Prediction: Unsupervised Feature Learning on Abstract Company Independent Feature Vectors

As companies increase their efforts in retaining customers, being able t...

Please sign up or login with your details

Forgot password? Click here to reset