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From recursion to prediction: modeling backtracking effort in TSP with machine learning
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The Traveling Salesman Problem (TSP) is a well-known Nondeterministic Polynomial-time (NP)-hard problem in combinatorial optimization. Solving TSP instances optimally using backtracking algorithms guarantees accuracy but incurs significant computational costs, especially for medium-scale problems. Little attention has been given to predicting the computational workload of TSP solvers based on backtracking using artificial intelligence. The precise estimation of resource usage is a complex and challenging issue due to the high variability of heterogeneous optimization problems. This article proposes a method for predicting the computational cost of solving the TSP using a backtrack solver through a machine learning approach. We propose a machine learning framework for estimating the computational effort required to solve TSP instances using backtracking techniques. Synthetic datasets are generated where each instance includes engineered features. Supervised machine learning models are proposed, tuned, and evaluated using various methods to estimate the computational cost for the TSP accurately. Results illustrate that among the 12 machine learning models of different classes, the regression models perform better. These models achieve a predictive accuracy of 99%, demonstrating strong consistency with actual results. The results also validate the potential of artificial intelligence (AI), focusing on the computational demands of optimization problems like TSP. We propose a machine learning framework that can be applied to optimization problems for intelligent solver selection, runtime estimation, and resource-aware scheduling.
Title: From recursion to prediction: modeling backtracking effort in TSP with machine learning
Description:
The Traveling Salesman Problem (TSP) is a well-known Nondeterministic Polynomial-time (NP)-hard problem in combinatorial optimization.
Solving TSP instances optimally using backtracking algorithms guarantees accuracy but incurs significant computational costs, especially for medium-scale problems.
Little attention has been given to predicting the computational workload of TSP solvers based on backtracking using artificial intelligence.
The precise estimation of resource usage is a complex and challenging issue due to the high variability of heterogeneous optimization problems.
This article proposes a method for predicting the computational cost of solving the TSP using a backtrack solver through a machine learning approach.
We propose a machine learning framework for estimating the computational effort required to solve TSP instances using backtracking techniques.
Synthetic datasets are generated where each instance includes engineered features.
Supervised machine learning models are proposed, tuned, and evaluated using various methods to estimate the computational cost for the TSP accurately.
Results illustrate that among the 12 machine learning models of different classes, the regression models perform better.
These models achieve a predictive accuracy of 99%, demonstrating strong consistency with actual results.
The results also validate the potential of artificial intelligence (AI), focusing on the computational demands of optimization problems like TSP.
We propose a machine learning framework that can be applied to optimization problems for intelligent solver selection, runtime estimation, and resource-aware scheduling.
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