MLAIQUANT-PHNov 24, 2016

Quantum Enhanced Inference in Markov Logic Networks

arXiv:1611.08104v130 citations
Originality Incremental advance
AI Analysis

This work addresses the computational bottleneck in machine learning for domains requiring uncertain reasoning, though it appears incremental as it builds on existing quantum results.

The paper tackles the problem of speeding up probabilistic inference in Markov logic networks by applying quantum protocols to Gibbs sampling, achieving an exponential speedup compared to classical heuristics.

Markov logic networks (MLNs) reconcile two opposing schools in machine learning and artificial intelligence: causal networks, which account for uncertainty extremely well, and first-order logic, which allows for formal deduction. An MLN is essentially a first-order logic template to generate Markov networks. Inference in MLNs is probabilistic and it is often performed by approximate methods such as Markov chain Monte Carlo (MCMC) Gibbs sampling. An MLN has many regular, symmetric structures that can be exploited at both first-order level and in the generated Markov network. We analyze the graph structures that are produced by various lifting methods and investigate the extent to which quantum protocols can be used to speed up Gibbs sampling with state preparation and measurement schemes. We review different such approaches, discuss their advantages, theoretical limitations, and their appeal to implementations. We find that a straightforward application of a recent result yields exponential speedup compared to classical heuristics in approximate probabilistic inference, thereby demonstrating another example where advanced quantum resources can potentially prove useful in machine learning.

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