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Transfer learning-assisted multi-objective evolutionary clustering framework with decomposition for high-dimensional data

机译:转移学习辅助的多目标进化聚类框架,用于高维数据的分解

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Although multi-objective evolutionary subspace clustering approaches have shown promise in handling high-dimensional datasets, their performance is restricted by two main drawbacks. First, their local search strategies have not been well investigated. Second, while exploring the search space, they neglect the useful knowledge from previously solved problems. To tackle these issues, this paper proposes a transfer learning-assisted multi-objective evolutionary clustering framework with decomposition. Firstly, we provide a decomposition-based local search strategy. To capture a comprehensive data structure, this strategy updates the weights of features by considering both the within-class compactness and between-class separation, and spontaneously balances the two properties. Secondly, we develop a knowledge transfer strategy. By transferring search experience from a previously solved clustering problem, the strategy improves the search efficiency, consequently enhances the clustering accuracy of the current problem. It has a closed-form solution and can transfer knowledge across both homogeneous and heterogeneous problems from either different or the same domains. Finally, we conduct an extensive experimental study on the framework by comparing with six representative subspace clustering approaches on a wide range of benchmarks and real-world applications. Results demonstrate the superiority of our framework. (C) 2019 Elsevier Inc. All rights reserved.
机译:虽然多目标进化子空间聚类方法在处理高维数据集时显示了承诺,但它们的性能受到两个主要缺点的限制。首先,他们的本地搜索策略尚未得到很好的调查。其次,在探索搜索空间的同时,他们忽略了先前解决了问题的有用知识。为了解决这些问题,本文提出了一种与分解的转移学习辅助的多目标进化聚类框架。首先,我们提供基于分解的本地搜索策略。为了捕获全面的数据结构,该策略通过考虑课堂内容和类之间的分离来更新功能的权重,并自发地平衡两个属性。其次,我们制定知识转移策略。通过从先前解决的聚类问题转移搜索体验,策略提高了搜索效率,从而提高了当前问题的聚类精度。它具有封闭式解决方案,可以从不同或相同的域或相同的结构域跨均匀和异质问题转移知识。最后,我们通过比较六种代表子空间聚类方法对框架进行了广泛的实验研究,与各种基准和现实世界应用程序相比。结果展示了我们框架的优越性。 (c)2019 Elsevier Inc.保留所有权利。

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