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Autori principali: Dernedde, Tim, Thyssens, Daniela, Dittrich, Sören, Stubbemann, Maximilian, Schmidt-Thieme, Lars
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2402.04915
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author Dernedde, Tim
Thyssens, Daniela
Dittrich, Sören
Stubbemann, Maximilian
Schmidt-Thieme, Lars
author_facet Dernedde, Tim
Thyssens, Daniela
Dittrich, Sören
Stubbemann, Maximilian
Schmidt-Thieme, Lars
contents Relevant combinatorial optimization problems (COPs) are often NP-hard. While they have been tackled mainly via handcrafted heuristics in the past, advances in neural networks have motivated the development of general methods to learn heuristics from data. Many approaches utilize a neural network to directly construct a solution, but are limited in further improving based on already constructed solutions at inference time. Our approach, Moco, defines a lightweight solution construction procedure, guided by a single continuous vector $θ$ (called heatmap) and learns a neural network to update $θ$ for a single instance of a COP at inference time. The update is based on various features of the current search state. The training procedure is budget aware, targeting the overall best solution found during the entire search. Moco is a fully learnable meta optimizer not utilizing problem specific heuristics or requiring optimal solutions for training. We test Moco on the Traveling Salesman Problem (TSP) and Maximum Independent Set (MIS) and show that it significantly improves over other heatmap based methods.
format Preprint
id arxiv_https___arxiv_org_abs_2402_04915
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Moco: A Learnable Meta Optimizer for Combinatorial Optimization
Dernedde, Tim
Thyssens, Daniela
Dittrich, Sören
Stubbemann, Maximilian
Schmidt-Thieme, Lars
Machine Learning
Relevant combinatorial optimization problems (COPs) are often NP-hard. While they have been tackled mainly via handcrafted heuristics in the past, advances in neural networks have motivated the development of general methods to learn heuristics from data. Many approaches utilize a neural network to directly construct a solution, but are limited in further improving based on already constructed solutions at inference time. Our approach, Moco, defines a lightweight solution construction procedure, guided by a single continuous vector $θ$ (called heatmap) and learns a neural network to update $θ$ for a single instance of a COP at inference time. The update is based on various features of the current search state. The training procedure is budget aware, targeting the overall best solution found during the entire search. Moco is a fully learnable meta optimizer not utilizing problem specific heuristics or requiring optimal solutions for training. We test Moco on the Traveling Salesman Problem (TSP) and Maximum Independent Set (MIS) and show that it significantly improves over other heatmap based methods.
title Moco: A Learnable Meta Optimizer for Combinatorial Optimization
topic Machine Learning
url https://arxiv.org/abs/2402.04915