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Graph matching based reasoner: A symbolic approach to question answering

机译:基于图形的图表匹配:象征性接听的象征方法

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摘要

Text understanding and reasoning are among the core areas of artificial intelligence. Even a total solution to automatic text understanding and reasoning is still beyond the current techniques, thus it is time to build the stepping stones to solve a more straightforward problem set like question-answering (QA) without ambiguous utterances in the contexts or questions. The reported state-of-the-art approaches to this kind of problem are nearly all connectionist models based on neural networks. Significant progress has even been made in this direction. It is still hard for the pure connectionist models to handle logical reasoning. They generally suffer from the longstanding drawback of poor explainability and sensitivity to data noise and distribution. In this paper, we propose a complementary symbolic approach, GMR (Graph Matching based Reasoner) to QA - it automatically generates reasoning rules in the form of graphs from the training set and uses the generated rules to infer answers to the questions in the test set via graph matching. By employing this symbolic approach, 20 tasks in bAbI are solved with an average accuracy of 99.38%, and it outperforms the state-of-the-art for a real-life QA dataset WikiTableQuestions. After analyzing the accuracy of the basic evaluation indicators, we studied the generalization ability of the model in the paper, including the anti-noise ability, the convergence of the model, the stability of the model, the complexity of the algorithm, and the uncertainty of the parameters. Through comprehensive analysis and comparison, our model is stronger than the neural network model regarding anti-noise interference. Compared with the neural network model, our model performs very well in multi-tasking, and the stability of the model is quite high. The diversity of tasks did not reduce the stability of the model. We have conducted a comprehensive analysis and comparison of the parameter uncertainties. Our model can optimally select parameter configurations and will not cause a sharp drop in performance due to the parameter uncertainties. Finally, we describe the complexity of the GMR method and the optimal configuration of its parameters.
机译:文本了解和推理是人工智能的核心领域。即使是自动文本理解和推理的总解决方案仍然超出了当前技术,因此是时候构建踩踏石头来解决更直接的问题,如上下文或问题中没有模糊的话语。据报道的最先进的这种问题方法几乎是基于神经网络的所有连接主义模型。甚至在这方面取得了重大进展。纯粹的连接主义模型仍然很难处理逻辑推理。它们通常遭受可释放可扩展性和对数据噪声和分布的敏感性的长期缺点。在本文中,我们提出了一种互补的符号方法,GMR(基于图形匹配的推理)到QA - 它自动以训练集的图表形式生成推理规则,并使用生成的规则来推断测试集中问题的答案通过图形匹配。通过采用这种符号方法,Babi中的20个任务以99.38%的平均精度求解,它优于现实生活质量QA数据集WikitableQuestions的最先进。在分析基本评估指标的准确性后,我们研究了模型的泛化能力,包括抗噪声能力,模型的收敛,模型的稳定性,算法的复杂性以及不确定性参数。通过全面的分析和比较,我们的模型比关于抗噪声干扰的神经网络模型强。与神经网络模型相比,我们的模型在多任务中表现得非常好,模型的稳定性非常高。任务的多样性并未降低模型的稳定性。我们对参数不确定性进行了全面的分析和比较。我们的模型可以最佳选择参数配置,并且由于参数不确定性而不会导致性能急剧下降。最后,我们描述了GMR方法的复杂性和其参数的最佳配置。

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