In this paper, we propose a novel approach for the optimal identification of correlated segments in noisy correlation matrices. The proposed model is known as CoSeNet (Correlation Seg-mentation Network) and is based on a four-layer algorithmic architecture that includes several processing layers: input, formatting, re-scaling, and segmentation layer. The proposed model can effectively identify correlated segments in such matrices, better than previous approaches for similar problems. Internally, the proposed model utilizes an overlapping technique and uses pre-trained Machine Learning (ML) algorithms, which makes it robust and generalizable. CoSeNet approach also includes a method that optimizes the parameters of the re-scaling layer using a heuristic algorithm and fitness based on a Window Difference-based metric. The output of the model is a binary noise-free matrix representing optimal segmentation as well as its seg-mentation points and can be used in a variety of applications, obtaining compromise solutions between efficiency, memory, and speed of the proposed deployment model.
翻译:本文提出了一种新颖的方法,用于在噪声相关矩阵中实现相关片段的最优识别。所提出的模型称为CoSeNet(相关分割网络),其基于四层算法架构,包含多个处理层:输入层、格式化层、重缩放层和分割层。该模型能够有效识别此类矩阵中的相关片段,其性能优于以往针对类似问题的方法。在内部,所提出的模型采用了一种重叠技术,并使用了预训练的机器学习算法,这使其具有鲁棒性和良好的泛化能力。CoSeNet方法还包含一种基于启发式算法和基于窗口差异度量的适应度函数来优化重缩放层参数的方法。模型的输出是一个表示最优分割的二元无噪声矩阵及其分割点,可应用于多种场景,在所提出部署模型的效率、内存和速度之间取得折衷解决方案。