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Neuro-symbolic Architectures for Context Understanding (2003.04707v1)

Published 9 Mar 2020 in cs.AI, cs.CL, and cs.SC

Abstract: Computational context understanding refers to an agent's ability to fuse disparate sources of information for decision-making and is, therefore, generally regarded as a prerequisite for sophisticated machine reasoning capabilities, such as in AI. Data-driven and knowledge-driven methods are two classical techniques in the pursuit of such machine sense-making capability. However, while data-driven methods seek to model the statistical regularities of events by making observations in the real-world, they remain difficult to interpret and they lack mechanisms for naturally incorporating external knowledge. Conversely, knowledge-driven methods, combine structured knowledge bases, perform symbolic reasoning based on axiomatic principles, and are more interpretable in their inferential processing; however, they often lack the ability to estimate the statistical salience of an inference. To combat these issues, we propose the use of hybrid AI methodology as a general framework for combining the strengths of both approaches. Specifically, we inherit the concept of neuro-symbolism as a way of using knowledge-bases to guide the learning progress of deep neural networks. We further ground our discussion in two applications of neuro-symbolism and, in both cases, show that our systems maintain interpretability while achieving comparable performance, relative to the state-of-the-art.

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Authors (5)
  1. Alessandro Oltramari (19 papers)
  2. Jonathan Francis (48 papers)
  3. Cory Henson (11 papers)
  4. Kaixin Ma (35 papers)
  5. Ruwan Wickramarachchi (12 papers)
Citations (25)