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Autores principales: Jin, Dongnan, Liu, Yali, Song, Qiuzhi, Ma, Xunju, Liu, Yue, Wu, Dehao
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2407.11626
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author Jin, Dongnan
Liu, Yali
Song, Qiuzhi
Ma, Xunju
Liu, Yue
Wu, Dehao
author_facet Jin, Dongnan
Liu, Yali
Song, Qiuzhi
Ma, Xunju
Liu, Yue
Wu, Dehao
contents To effectively search for the optimal motion template in dynamic multidimensional space, this paper proposes a novel optimization algorithm, Dynamic Dimension Wrapping (DDW).The algorithm combines Dynamic Time Warping (DTW) and Euclidean distance, and designs a fitness function that adapts to dynamic multidimensional space by establishing a time-data chain mapping across dimensions. This paper also proposes a novel update mechanism,Optimal Dimension Collection (ODC), combined with the search strategy of traditional optimization algorithms, enables DDW to adjust both the dimension values and the number of dimensions of the population individuals simultaneously. In this way, DDW significantly reduces computational complexity and improves search accuracy. Experimental results show that DDW performs excellently in dynamic multidimensional space, outperforming 31 traditional optimization algorithms. This algorithm provides a novel approach to solving dynamic multidimensional optimization problems and demonstrates broad application potential in fields such as motion data analysis.
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id arxiv_https___arxiv_org_abs_2407_11626
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Dynamic Dimension Wrapping (DDW) Algorithm: A Novel Approach for Efficient Cross-Dimensional Search in Dynamic Multidimensional Spaces
Jin, Dongnan
Liu, Yali
Song, Qiuzhi
Ma, Xunju
Liu, Yue
Wu, Dehao
Machine Learning
Neural and Evolutionary Computing
To effectively search for the optimal motion template in dynamic multidimensional space, this paper proposes a novel optimization algorithm, Dynamic Dimension Wrapping (DDW).The algorithm combines Dynamic Time Warping (DTW) and Euclidean distance, and designs a fitness function that adapts to dynamic multidimensional space by establishing a time-data chain mapping across dimensions. This paper also proposes a novel update mechanism,Optimal Dimension Collection (ODC), combined with the search strategy of traditional optimization algorithms, enables DDW to adjust both the dimension values and the number of dimensions of the population individuals simultaneously. In this way, DDW significantly reduces computational complexity and improves search accuracy. Experimental results show that DDW performs excellently in dynamic multidimensional space, outperforming 31 traditional optimization algorithms. This algorithm provides a novel approach to solving dynamic multidimensional optimization problems and demonstrates broad application potential in fields such as motion data analysis.
title Dynamic Dimension Wrapping (DDW) Algorithm: A Novel Approach for Efficient Cross-Dimensional Search in Dynamic Multidimensional Spaces
topic Machine Learning
Neural and Evolutionary Computing
url https://arxiv.org/abs/2407.11626