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Temporally Disentangled Representation Learning under Unknown Nonstationarity

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In unsupervised causal representation learning for sequential data with time-delayed latent causal influences, strong identifiability results for the disentanglement of causally-related latent variables have been established in stationary settings by leveraging temporal structure. However, in nonstationary setting, existing work only partially addressed the problem by either utilizing observed auxiliary variables (e.g., class labels and/or domain indexes) as side information or assuming simplified latent causal dynamics. Both constrain the method to a limited range of scenarios. In this study, we further explored the Markov Assumption under time-delayed causally related process in nonstationary setting and showed that under mild conditions, the independent latent components can be recovered from their nonlinear mixture up to a permutation and a component-wise transformation, without the observation of auxiliary variables. We then introduce NCTRL, a principled estimation framework, to reconstruct time-delayed latent causal variables and identify their relations from measured sequential data only. Empirical evaluations demonstrated the reliable identification of time-delayed latent causal influences, with our methodology substantially outperforming existing baselines that fail to exploit the nonstationarity adequately and then, consequently, cannot distinguish distribution shifts.

Xiangchen Song, Weiran Yao, Yewen Fan, Xinshuai Dong, Guangyi Chen, Juan Carlos Niebles, Eric Xing, Kun Zhang• 2023

Related benchmarks

TaskDatasetResultRank
ForecastingExchange (test)
MSE13.6292
63
Time Series ForecastingTraffic
MAE2.5353
58
Forecasting and state estimation10-variable simulated dataset (infrequent transitions)
Accuracy90.31
18
State estimation3-variable simulated dataset (No. 2) with frequent transitions v1 (test)
Accuracy80.11
18
ForecastingExchange dataset
MAE1.8486
13
Nonlinear Temporal ICASynthetic dataset S2.1 (test)
z_t MCC47.27
10
State estimation3-variable simulated dataset with infrequent transitions (test)
Accuracy79.53
9
State estimation3-variable simulated dataset No. 1 with frequent transitions v1 (test)
Accuracy80.93
9
State estimationSimulated dataset (3 variables) with infrequent transitions
Accuracy79.53
9
State estimation3-variable simulated dataset with frequent transitions 1
Accuracy80.93
9
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