The paper proposes DoubleAdapt, a meta-learning approach to incremental learning (IL) for stock trend forecasting. The key insights are:
Data Adaptation: DoubleAdapt introduces a data adapter that transforms the features and labels of the incremental data and the test data to mitigate the effects of distribution shifts. The data adapter contains a multi-head feature adaptation layer and a multi-head label adaptation layer.
Model Adaptation: DoubleAdapt introduces a model adapter that provides a good initialization of model parameters for each IL task and then adapts the initial parameters to fit the incremental data.
DoubleAdapt casts each IL task as a meta-learning task and optimizes the data adapter and the model adapter to minimize the forecast error on the adapted test data. Experiments on real-world stock datasets demonstrate that DoubleAdapt achieves state-of-the-art predictive performance and shows considerable efficiency compared to rolling retraining methods.
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arxiv.org
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