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 bridging machine learning


Bridging Machine Learning and Logical Reasoning by Abductive Learning

Neural Information Processing Systems

Perception and reasoning are two representative abilities of intelligence that are integrated seamlessly during human problem-solving processes. In the area of artificial intelligence (AI), the two abilities are usually realised by machine learning and logic programming, respectively. However, the two categories of techniques were developed separately throughout most of the history of AI. In this paper, we present the abductive learning targeted at unifying the two AI paradigms in a mutually beneficial way, where the machine learning model learns to perceive primitive logic facts from data, while logical reasoning can exploit symbolic domain knowledge and correct the wrongly perceived facts for improving the machine learning models. Furthermore, we propose a novel approach to optimise the machine learning model and the logical reasoning model jointly. We demonstrate that by using abductive learning, machines can learn to recognise numbers and resolve unknown mathematical operations simultaneously from images of simple hand-written equations. Moreover, the learned models can be generalised to longer equations and adapted to different tasks, which is beyond the capability of state-of-the-art deep learning models.


Reviews: Bridging Machine Learning and Logical Reasoning by Abductive Learning

Neural Information Processing Systems

Still, if you can do some version of the Mayan hieroglyphics, or work that example into the introduction, it would improve the paper even more. They restrict themselves to classification problems, i.e., a mapping from perceptual input to {0,1}; the discrete symbols output by the perception model act as latent variables sitting in between the input and the binary decision. Their approach is to alternate between (1) inferring a logic program consistent with the training examples, conditioned on the output of the perception model, and (2) training the perception model to predict the latent discrete symbols. Because the perception model may be unreliable, particularly early on in training, the logic program is allowed to revise or abduce the outputs of perception. The problem they pose -- integrating learned perception with learned symbolic reasoning -- is eminently important.


Reviews: Bridging Machine Learning and Logical Reasoning by Abductive Learning

Neural Information Processing Systems

The reviewer consensus was that, despite requiring some improvements in terms of presentation, with some areas flagged by reviewers as necessitating more detail, and the toy-ish nature of the experiments, that this paper addresses an important problem with the NeurIPS community in attempting to reconcile deep networks with symbolic-like reasoning. The paper is thus deemed of an acceptable standard, but the authors should note that while they are not expected to change their experimental setting for the camera-ready, should the paper be included in the proceedings, they should pay careful attention to the reviewer comments and recommendations when revising their paper in order to insure that the points of clarification requested are expanded upon, possibly in an appendix.


Bridging Machine Learning and Logical Reasoning by Abductive Learning

Neural Information Processing Systems

Perception and reasoning are two representative abilities of intelligence that are integrated seamlessly during human problem-solving processes. In the area of artificial intelligence (AI), the two abilities are usually realised by machine learning and logic programming, respectively. However, the two categories of techniques were developed separately throughout most of the history of AI. In this paper, we present the abductive learning targeted at unifying the two AI paradigms in a mutually beneficial way, where the machine learning model learns to perceive primitive logic facts from data, while logical reasoning can exploit symbolic domain knowledge and correct the wrongly perceived facts for improving the machine learning models. Furthermore, we propose a novel approach to optimise the machine learning model and the logical reasoning model jointly. We demonstrate that by using abductive learning, machines can learn to recognise numbers and resolve unknown mathematical operations simultaneously from images of simple hand-written equations.


Bridging Machine Learning and Logical Reasoning by Abductive Learning

Neural Information Processing Systems

Perception and reasoning are two representative abilities of intelligence that are integrated seamlessly during human problem-solving processes. In the area of artificial intelligence (AI), the two abilities are usually realised by machine learning and logic programming, respectively. However, the two categories of techniques were developed separately throughout most of the history of AI. In this paper, we present the abductive learning targeted at unifying the two AI paradigms in a mutually beneficial way, where the machine learning model learns to perceive primitive logic facts from data, while logical reasoning can exploit symbolic domain knowledge and correct the wrongly perceived facts for improving the machine learning models. Furthermore, we propose a novel approach to optimise the machine learning model and the logical reasoning model jointly.