Approximating Permutations with Neural Network Components for Travelling Photographer Problem

C. Sin
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Abstract

Most of current inference techniques rely upon Bayesian inference on Probabilistic Graphical Models of observations, and does prediction and classification on observations rather well. Event understanding of machines with observation inputs needs to deal with understanding of the relationship between sets of observations, and thus there is a crucial need to build models and come up with effective data structures to accumulate and organize relationships between observations. Given a set of states probabilisitcally-related with observations, this paper attempts to fit a permutation of states to a sequence of observation tokens (The Travelling Photographer Problem). We have devised a machine learning inspired architecture for randomized approximation of state permutation, facilitating parallelization of heuristic search of permutations. Our algorithm is able to solve The Travelling Photographer Problem with very small error. We demonstrate that by mimicking components of machine learning such as normalization, dropout, lambda layer with randomized algorithm, we are able to devise an architecture which solves TPP, a permutation NP-Hard problem. Other than TPP, we are also able to provide a 2-Local improvement heuristic for the Travelling Salesman Problem (TSP) with similar ideas.
用神经网络分量逼近旅行摄影师问题的排列
目前大多数推理技术都依赖于基于概率图模型的贝叶斯推理,并能很好地对观测结果进行预测和分类。具有观测输入的机器的事件理解需要处理对观测集之间关系的理解,因此建立模型并提出有效的数据结构来积累和组织观测之间的关系是至关重要的。给定一组与观测值概率相关的状态,本文试图将状态的排列拟合到一系列观测令牌中(旅行摄影师问题)。我们设计了一个受机器学习启发的结构,用于状态排列的随机逼近,促进排列的启发式搜索的并行化。我们的算法能够以很小的误差解决旅行摄影师问题。我们证明,通过用随机算法模拟机器学习的组件,如归一化、dropout、lambda层,我们能够设计一个解决TPP(置换NP-Hard问题)的架构。除了TPP之外,我们还能够为旅行推销员问题(TSP)提供一个具有类似思想的2-Local改进启发式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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