RigLSTM: Recurrent Independent Grid LSTM for Generalizable Sequence Learning

Wang, Ziyu, Jiang, Wenhao, Zhang, Zixuan, Tang, Wei, Yan, Junchi

arXiv.org Artificial Intelligence 

Abstract--Sequential processes in real-world often carry a combination of simple subsystems that interact with each other in certain forms. Learning such a modular structure can often improve the robustness against environmental changes. In this paper, we propose recurrent independent Grid LSTM (RigLSTM), composed of a group of independent LSTM cells that cooperate with each other, for exploiting the underlying modular structure of the target task. Our model adopts cell selection, input feature selection, hidden state selection, and soft state updating to achieve a better generalization ability on the basis of the recent Grid LSTM for the tasks where some factors differ between training and evaluation. Specifically, at each time step, only a fraction of cells are activated, and the activated cells select relevant inputs and cells to communicate with. At the end of one time step, the hidden states of the activated cells are updated by considering the relevance between the inputs and the hidden states from the last and current time steps. Extensive experiments on diversified sequential modeling tasks are conducted to show the superior generalization ability when there exist changes in the testing environment. A certain patterns and characterizing real-world dynamic processes, such as component is corresponding to a certain part of the environment. Therefore, models adopt such reinforcement learning for intelligent agents [11], [12].

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