CLAILGJun 11, 2024

Markov Constraint as Large Language Model Surrogate

arXiv:2406.10269v13 citations
Originality Incremental advance
AI Analysis

This is an incremental improvement for constraint programming researchers and practitioners, enhancing text generation efficiency.

The paper tackles the problem of text generation in constraint programming by introducing NgramMarkov, a constraint that uses LLM probabilities to limit n-gram sequences, resulting in reduced candidate sentences, improved computation times, and enabling the use of 4-grams instead of 5-grams in a real-world problem.

This paper presents NgramMarkov, a variant of the Markov constraints. It is dedicated to text generation in constraint programming (CP). It involves a set of n-grams (i.e., sequence of n words) associated with probabilities given by a large language model (LLM). It limits the product of the probabilities of the n-gram of a sentence. The propagator of this constraint can be seen as an extension of the ElementaryMarkov constraint propagator, incorporating the LLM distribution instead of the maximum likelihood estimation of n-grams. It uses a gliding threshold, i.e., it rejects n-grams whose local probabilities are too low, to guarantee balanced solutions. It can also be combined with a "look-ahead" approach to remove n-grams that are very unlikely to lead to acceptable sentences for a fixed-length horizon. This idea is based on the MDDMarkovProcess constraint propagator, but without explicitly using an MDD (Multi-Valued Decision Diagram). The experimental results show that the generated text is valued in a similar way to the LLM perplexity function. Using this new constraint dramatically reduces the number of candidate sentences produced, improves computation times, and allows larger corpora or smaller n-grams to be used. A real-world problem has been solved for the first time using 4-grams instead of 5-grams.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes