Integrated prediction intervals and specific value predictions for regression problems using neural networks
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摘要
Improving the robustness of neural nets in regression tasks is key to their application in multiple domains. Deep learning-based approaches aim to achieve this goal either by improving their prediction of specific values (i.e., point prediction), or by producing prediction intervals (PIs) that quantify uncertainty. We present IPIV, a deep neural network for producing both a PI and a value prediction. Our loss function expresses the value prediction as a function of the upper and lower bounds, thus ensuring that it falls within the interval without increasing model complexity. Moreover, our approach makes no assumptions regarding data distribution within the PI, making its value prediction more effective for various real-world problems. Experiments and ablation tests on known benchmarks show that our approach produces tighter uncertainty bounds than the current state-of-the-art approaches for producing PIs, while maintaining comparable performance to the state-of-the-art approach for value-prediction. Additionally, we go beyond previous work and include large image datasets in our evaluation, where IPIV is combined with modern neural nets.
论文关键词:Prediction intervals,Regression,Deep learning
论文评审过程:Received 11 September 2021, Revised 24 November 2021, Accepted 25 March 2022, Available online 31 March 2022, Version of Record 20 April 2022.
论文官网地址:https://doi.org/10.1016/j.knosys.2022.108685