Modality-aware Transformer for Financial Time series Forecasting
Hajar Emami, Xuan-Hong Dang, Yousaf Shah, Petros Zerfos

TL;DR
This paper introduces a modality-aware Transformer model that effectively integrates textual and numerical data for improved financial time series forecasting, leveraging feature and temporal attention mechanisms.
Contribution
The paper proposes a novel multimodal Transformer with feature-level attention and specialized multi-head attentions to enhance cross-modal and temporal feature integration in financial forecasting.
Findings
Outperforms existing methods on financial datasets
Effectively exploits textual and numerical data modalities
Provides interpretable attention-based insights
Abstract
Time series forecasting presents a significant challenge, particularly when its accuracy relies on external data sources rather than solely on historical values. This issue is prevalent in the financial sector, where the future behavior of time series is often intricately linked to information derived from various textual reports and a multitude of economic indicators. In practice, the key challenge lies in constructing a reliable time series forecasting model capable of harnessing data from diverse sources and extracting valuable insights to predict the target time series accurately. In this work, we tackle this challenging problem and introduce a novel multimodal transformer-based model named the \textit{Modality-aware Transformer}. Our model excels in exploring the power of both categorical text and numerical timeseries to forecast the target time series effectively while providing…
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Taxonomy
TopicsAdvanced Text Analysis Techniques · Stock Market Forecasting Methods · Time Series Analysis and Forecasting
MethodsMulti-Head Attention · Dense Connections · Linear Layer · Label Smoothing · Absolute Position Encodings · Attention Is All You Need · Adam · Residual Connection · Focus · Layer Normalization
