Task-based learning via task-oriented prediction network with applications in finance

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Abstract

Real-world applications often involve domain-specific and task-based performance objectives that are not captured by the standard machine learning losses, but are critical for decision making. A key challenge for direct integration of more meaningful domain and task-based evaluation criteria into an end-to-end gradient-based training process is the fact that often such performance objectives are not necessarily differentiable and may even require additional decision-making optimization processing. We propose the Task-Oriented Prediction Network (TOPNet), an end-to-end learning scheme that automatically integrates task-based evaluation criteria into the learning process via a learnable surrogate loss function, which directly guides the model towards the task-based goal. A major benefit of the proposed TOPNet learning scheme lies in its capability of automatically integrating non-differentiable evaluation criteria, which makes it particularly suitable for diversified and customized task-based evaluation criteria in real-world tasks. We validate the performance of TOPNet on two real-world financial prediction tasks, revenue surprise forecasting and credit risk modeling. The experimental results demonstrate that TOPNet significantly outperforms both traditional modeling with standard losses and modeling with hand-crafted heuristic differentiable surrogate losses.

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APA

Chen, D., Zhu, Y., Cui, X., & Gomes, C. P. (2020). Task-based learning via task-oriented prediction network with applications in finance. In IJCAI International Joint Conference on Artificial Intelligence (Vol. 2021-January, pp. 4476–4482). International Joint Conferences on Artificial Intelligence. https://doi.org/10.24963/ijcai.2020/617

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