CEPAE: Conditional Entropy-Penalized Autoencoders for Time Series Counterfactuals
AI 摘要
提出了基于条件熵惩罚自编码器(CEPAE)的时间序列反事实推断方法。
主要贡献
- 提出了CEPAE模型,使用熵惩罚鼓励解耦数据表示
- 将自编码器应用于时间序列反事实推断
- 在合成、半合成和真实数据集上验证了CEPAE的有效性
方法论
基于结构因果模型框架,利用诱导-行动-预测流程,结合变分和对抗自编码器,提出CEPAE,并使用熵惩罚损失。
原文摘要
The ability to accurately perform counterfactual inference on time series is crucial for decision-making in fields like finance, healthcare, and marketing, as it allows us to understand the impact of events or treatments on outcomes over time. In this paper, we introduce a new counterfactual inference approach tailored to time series data impacted by market events, which is motivated by an industrial application. Utilizing the abduction-action-prediction procedure and the Structural Causal Model framework, we first adapt methods based on variational autoencoders and adversarial autoencoders, both previously used in counterfactual literature although not in time series settings. Then, we present the Conditional Entropy-Penalized Autoencoder (CEPAE), a novel autoencoder-based approach for counterfactual inference, which employs an entropy penalization loss over the latent space to encourage disentangled data representations. We validate our approach both theoretically and experimentally on synthetic, semi-synthetic, and real-world datasets, showing that CEPAE generally outperforms the other approaches in the evaluated metrics.