AIQUANT-PHNov 7, 2018

Uncertainty in Quantum Rule-Based Systems

arXiv:1811.02782v16 citations
Originality Synthesis-oriented
AI Analysis

This work addresses uncertainty in rule-based systems for AI applications, but it is incremental as it builds on prior concepts and applies existing quantum techniques.

The authors tackled uncertainty in rule-based systems by proposing a quantum computing model, showing it is a valid, effective, and efficient method for handling this uncertainty.

This article deals with the problem of the uncertainty in rule-based systems (RBS), but from the perspective of quantum computing (QC). In this work we first remember the characteristics of Quantum Rule-Based Systems (QRBS), a concept defined in a previous article by one of the authors of this paper, and we introduce the problem of quantum uncertainty. We assume that the subjective uncertainty that affects the facts of classical RBSs can be treated as a direct consequence of the probabilistic nature of quantum mechanics (QM), and we also assume that the uncertainty associated with a given hypothesis is a consequence of the propagation of the imprecision through the inferential circuits of RBSs. This article does not intend to contribute anything new to the QM field: it is a work of artificial intelligence (AI) that uses QC techniques to solve the problem of uncertainty in RBSs. Bearing the above arguments in mind a quantum model is proposed. This model has been applied to a problem already defined by one of the authors of this work in a previous publication and which is briefly described in this article. Then the model is generalized, and it is thoroughly evaluated. The results obtained show that QC is a valid, effective and efficient method to deal with the inherent uncertainty of RBSs

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