Causal Knowledge Guided Societal Event Forecasting
Songgaojun Deng, Huzefa Rangwala, Yue Ning

TL;DR
This paper introduces a deep learning framework that incorporates causal effect estimation to improve societal event forecasting, addressing challenges like hidden confounders and non-IID data for more robust predictions.
Contribution
The work presents a novel causal inference model for estimating individual treatment effects from spatiotemporal data and integrates this causal knowledge into event prediction models.
Findings
Effective causal effect estimation on real-world datasets.
Robust learning modules improve event prediction accuracy.
Causal information enhances deep learning models for societal events.
Abstract
Data-driven societal event forecasting methods exploit relevant historical information to predict future events. These methods rely on historical labeled data and cannot accurately predict events when data are limited or of poor quality. Studying causal effects between events goes beyond correlation analysis and can contribute to a more robust prediction of events. However, incorporating causality analysis in data-driven event forecasting is challenging due to several factors: (i) Events occur in a complex and dynamic social environment. Many unobserved variables, i.e., hidden confounders, affect both potential causes and outcomes. (ii) Given spatiotemporal non-independent and identically distributed (non-IID) data, modeling hidden confounders for accurate causal effect estimation is not trivial. In this work, we introduce a deep learning framework that integrates causal effect…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Advanced Causal Inference Techniques
