A. S. Syed Shahul Hameed, R. Allwin, Manindra Narayan Singh, Narendran Rajagopalan, Animesh Nanda
{"title":"少即是多:通过自由度透视纯随机正交搜索的维度分析","authors":"A. S. Syed Shahul Hameed, R. Allwin, Manindra Narayan Singh, Narendran Rajagopalan, Animesh Nanda","doi":"10.1007/s13369-024-09098-z","DOIUrl":null,"url":null,"abstract":"<div><p>Nature-inspired metaheuristic algorithm plays an autocratic role in optimization (OP). The dominance of metaheuristic algorithms has managed to solicit the focus upon themselves and has overshadowed other types of OP algorithms. Random optimization (RO) is one such type of underrepresented OP algorithm, which commanded significant interest in the mid-’60 s but eventually lost its glitter due to its lackluster OP performance. Pure random orthogonal search (PROS) is a recently published RO algorithm that has revived interest in RO. PROS is a simple, hyperparameter-free OP algorithm capable of dissipating performance better than some established metaheuristic algorithms. Unlike pure random search (PRS), where the optimizer is free to move anywhere within the feasible region, PROS effectively restricts the explorable feasible region to the region strictly orthogonal to the current location, and this restriction immensely boosts its OP performance. Between the two extremes of PRS and PROS, a spectrum of possible movement patterns merits our attention. In this paper, we perform several numerical experiments to study how the freedom to move in different dimensions (Degrees of Freedom) influences the performance of the PRS & PROS algorithm. Further, the notion of an ‘Active Feasible Region’ is introduced to analyze PROS and other related RO algorithms. We propose two simple modifications to the PROS algorithm based on the experiments. The modifications yield marginal performance gains over PROS. Nevertheless, valuable insights are revealed upon the effect of different degrees of freedom and orthogonality constraint and how they could be leveraged to our advantage. The python code is publicly available at: https://github.com/Shahul-Rahman/Less-is-more.</p></div>","PeriodicalId":54354,"journal":{"name":"Arabian Journal for Science and Engineering","volume":"50 2","pages":"1109 - 1126"},"PeriodicalIF":2.6000,"publicationDate":"2024-05-24","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Less is More: Dimensionality Analysis of Pure Random Orthogonal Search Through the Lens of Degrees of Freedom\",\"authors\":\"A. S. Syed Shahul Hameed, R. Allwin, Manindra Narayan Singh, Narendran Rajagopalan, Animesh Nanda\",\"doi\":\"10.1007/s13369-024-09098-z\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>Nature-inspired metaheuristic algorithm plays an autocratic role in optimization (OP). The dominance of metaheuristic algorithms has managed to solicit the focus upon themselves and has overshadowed other types of OP algorithms. Random optimization (RO) is one such type of underrepresented OP algorithm, which commanded significant interest in the mid-’60 s but eventually lost its glitter due to its lackluster OP performance. Pure random orthogonal search (PROS) is a recently published RO algorithm that has revived interest in RO. PROS is a simple, hyperparameter-free OP algorithm capable of dissipating performance better than some established metaheuristic algorithms. Unlike pure random search (PRS), where the optimizer is free to move anywhere within the feasible region, PROS effectively restricts the explorable feasible region to the region strictly orthogonal to the current location, and this restriction immensely boosts its OP performance. Between the two extremes of PRS and PROS, a spectrum of possible movement patterns merits our attention. In this paper, we perform several numerical experiments to study how the freedom to move in different dimensions (Degrees of Freedom) influences the performance of the PRS & PROS algorithm. Further, the notion of an ‘Active Feasible Region’ is introduced to analyze PROS and other related RO algorithms. We propose two simple modifications to the PROS algorithm based on the experiments. The modifications yield marginal performance gains over PROS. Nevertheless, valuable insights are revealed upon the effect of different degrees of freedom and orthogonality constraint and how they could be leveraged to our advantage. 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Less is More: Dimensionality Analysis of Pure Random Orthogonal Search Through the Lens of Degrees of Freedom
Nature-inspired metaheuristic algorithm plays an autocratic role in optimization (OP). The dominance of metaheuristic algorithms has managed to solicit the focus upon themselves and has overshadowed other types of OP algorithms. Random optimization (RO) is one such type of underrepresented OP algorithm, which commanded significant interest in the mid-’60 s but eventually lost its glitter due to its lackluster OP performance. Pure random orthogonal search (PROS) is a recently published RO algorithm that has revived interest in RO. PROS is a simple, hyperparameter-free OP algorithm capable of dissipating performance better than some established metaheuristic algorithms. Unlike pure random search (PRS), where the optimizer is free to move anywhere within the feasible region, PROS effectively restricts the explorable feasible region to the region strictly orthogonal to the current location, and this restriction immensely boosts its OP performance. Between the two extremes of PRS and PROS, a spectrum of possible movement patterns merits our attention. In this paper, we perform several numerical experiments to study how the freedom to move in different dimensions (Degrees of Freedom) influences the performance of the PRS & PROS algorithm. Further, the notion of an ‘Active Feasible Region’ is introduced to analyze PROS and other related RO algorithms. We propose two simple modifications to the PROS algorithm based on the experiments. The modifications yield marginal performance gains over PROS. Nevertheless, valuable insights are revealed upon the effect of different degrees of freedom and orthogonality constraint and how they could be leveraged to our advantage. The python code is publicly available at: https://github.com/Shahul-Rahman/Less-is-more.
期刊介绍:
King Fahd University of Petroleum & Minerals (KFUPM) partnered with Springer to publish the Arabian Journal for Science and Engineering (AJSE).
AJSE, which has been published by KFUPM since 1975, is a recognized national, regional and international journal that provides a great opportunity for the dissemination of research advances from the Kingdom of Saudi Arabia, MENA and the world.