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Explain by Evidence: An Explainable Memory-based Neural Network for Question Answering

机译:通过证据解释:一个可解释的基于内存的神经网络,用于问题应答

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Interpretability and explainability of deep neural networks are challenging due to their scale, complexity, and the agreeable notions on which the explaining process rests. Previous work, in particular, has focused on representing internal components of neural networks through human-friendly visuals and concepts. On the other hand, in real life, when making a decision, human tends to rely on similar situations and/or associations in the past. Hence arguably, a promising approach to make the model transparent is to design it in a way such that the model explicitly connects the current sample with the seen ones, and bases its decision on these samples. Grounded on that principle, we propose in this paper an explainable, evidence-based memory network architecture, which learns to summarize the dataset and extract supporting evidences to make its decision. Our model achieves state-of-the-art performance on two popular question answering datasets (i.e. TrecQA and WikiQA). Via further analysis, we show that this model can reliably trace the errors it has made in the validation step to the training instances that might have caused these errors. We believe that this error-tracing capability provides significant benefit in improving dataset quality in many applications.
机译:由于其规模,复杂性和解释过程休息的令人愉快的概念,深度神经网络的可解释性和解释性具有挑战性。以前的工作,特别是通过人类友好的视觉和概念代表神经网络的内部组成部分。另一方面,在现实生活中,在做出决定时,人类往往依赖于过去的类似情况和/或联想。因此,可以说,使模型透明的有希望的方法是以这样的方式设计,使得模型明确地将当前样本与所看到的方式连接,并基于其对这些样本的决定。基于该原则,我们提出了一种可解释的证据基础的内存网络架构,该架构学会总结数据集和提取物支持证据来做出决定。我们的模型在两个流行的问题应答数据集(即TRECQA和WikiQA)上实现了最先进的性能。通过进一步的分析,我们显示此模型可以可靠地跟踪其在验证步骤中对可能导致这些错误的培训实例所做的错误。我们认为,这种错误跟踪功能在提高许多应用中提高数据集质量方面提供了显着的好处。

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