"The Squawk Bot": Joint Learning of Time Series and Text Data Modalities for Automated Financial Information Filtering
Xuan-Hong Dang, Syed Yousaf Shah, Petros Zerfos

TL;DR
This paper introduces MSIN, a multi-modal neural model that jointly learns from time series and textual data to automatically identify relevant textual stories associated with financial time series, enhancing interpretability and information filtering.
Contribution
The paper presents a novel multi-modal neural network, MSIN, that effectively associates time series with relevant textual articles, outperforming existing attention-based models in recall performance.
Findings
MSIN achieves up to 87.2% recall on stock data.
MSIN significantly outperforms state-of-the-art attention models.
The model effectively filters relevant news articles for financial time series.
Abstract
Multimodal analysis that uses numerical time series and textual corpora as input data sources is becoming a promising approach, especially in the financial industry. However, the main focus of such analysis has been on achieving high prediction accuracy while little effort has been spent on the important task of understanding the association between the two data modalities. Performance on the time series hence receives little explanation though human-understandable textual information is available. In this work, we address the problem of given a numerical time series, and a general corpus of textual stories collected in the same period of the time series, the task is to timely discover a succinct set of textual stories associated with that time series. Towards this goal, we propose a novel multi-modal neural model called MSIN that jointly learns both numerical time series and…
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