SOTAVerified

Stock2Vec: A Hybrid Deep Learning Framework for Stock Market Prediction with Representation Learning and Temporal Convolutional Network

2020-09-29Unverified0· sign in to hype

Xing Wang, Yijun Wang, Bin Weng, Aleksandr Vinel

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

We have proposed to develop a global hybrid deep learning framework to predict the daily prices in the stock market. With representation learning, we derived an embedding called Stock2Vec, which gives us insight for the relationship among different stocks, while the temporal convolutional layers are used for automatically capturing effective temporal patterns both within and across series. Evaluated on S&P 500, our hybrid framework integrates both advantages and achieves better performance on the stock price prediction task than several popular benchmarked models.

Tasks

Reproductions