Complementing Solutions for Facility Location Optimization via Video Game Crowdsourcing and Machine Learning Approach

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Abstract

The facility location problem (FLP) is a complex optimization problem that has been widely researched and applied in industry. In this research, we proposed two innovative approaches to complement the limitations of traditional methods, such as heuristics, metaheuristics, and genetic algorithms. The first approach involves utilizing crowdsourcing through video game players to obtain improved solutions, filling the gap in existing research on crowdsourcing for FLP. The second approach leverages machine learning techniques, specifically prediction methods, to provide an efficient exploration of the solution space. Our findings indicate that machine learning techniques can complement existing solutions by providing a more comprehensive approach to solving FLP and filling gaps in the solution space. Furthermore, machine learning predictive models are efficient for decision making and provide quick insights into the system’s behavior. In conclusion, this research contributes to the advancement of problem-solving techniques and has potential implications for solving a wide range of complex, NP-hard problems in various domains.

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Vargas-Santiago, M., León-Velasco, D. A., Marcelín Jiménez, R., & Morales-Rosales, L. A. (2023). Complementing Solutions for Facility Location Optimization via Video Game Crowdsourcing and Machine Learning Approach. Applied Sciences (Switzerland), 13(8). https://doi.org/10.3390/app13084884

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