反事实协同推理

Jianchao Ji, Zelong Li, Shuyuan Xu, Max Xiong, Juntao Tan, Yingqiang Ge, Hao Wang, Yongfeng Zhang
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引用次数: 6

摘要

因果推理和逻辑推理是人类智力的两种重要推理能力。然而,它们之间的关系并没有在机器智能背景下得到广泛的探讨。在本文中,我们探讨了如何将这两种推理能力联合建模,以提高机器学习模型的准确性和可解释性。更具体地说,通过整合两种重要的推理能力——反事实推理和(神经)逻辑推理——我们提出了反事实协同推理(CCR),它通过反事实逻辑推理来提高性能。我们特别以推荐系统为例,展示了CCR如何缓解数据稀缺、提高准确性和增强透明度。从技术上讲,我们利用反事实推理为数据增强生成“困难的”反事实训练示例,它与原始训练示例一起可以增强模型性能。由于增强的数据与模型无关,因此它们可以用于增强任何模型,从而使该技术具有广泛的适用性。此外,现有的数据增强方法大多侧重于对用户隐式反馈进行“隐式数据增强”,而我们的框架基于反事实逻辑推理对用户显式反馈进行“显式数据增强”。在三个真实数据集上的实验表明,CCR比非增广模型和隐式增广模型取得了更好的性能,并且通过生成反事实解释提高了模型的透明度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Counterfactual Collaborative Reasoning
Causal reasoning and logical reasoning are two important types of reasoning abilities for human intelligence. However, their relationship has not been extensively explored under machine intelligence context. In this paper, we explore how the two reasoning abilities can be jointly modeled to enhance both accuracy and explainability of machine learning models. More specifically, by integrating two important types of reasoning ability--counterfactual reasoning and (neural) logical reasoning--we propose Counterfactual Collaborative Reasoning (CCR), which conducts counterfactual logic reasoning to improve the performance. In particular, we use recommender system as an example to show how CCR alleviate data scarcity, improve accuracy and enhance transparency. Technically, we leverage counterfactual reasoning to generate "difficult" counterfactual training examples for data augmentation, which--together with the original training examples--can enhance the model performance. Since the augmented data is model irrelevant, they can be used to enhance any model, enabling the wide applicability of the technique. Besides, most of the existing data augmentation methods focus on "implicit data augmentation" over users' implicit feedback, while our framework conducts "explicit data augmentation" over users explicit feedback based on counterfactual logic reasoning. Experiments on three real-world datasets show that CCR achieves better performance than non-augmented models and implicitly augmented models, and also improves model transparency by generating counterfactual explanations.
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