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The Compressed Annotation Matrix: An Efficient Data Structure for Computing Persistent Cohomology

机译:压缩注释矩阵:用于计算持续同学的有效数据结构

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Persistent homology with coefficients in a field F coincides with the same for cohomology because of duality. We propose an implementation of a recently introduced algorithm for persistent cohomology that attaches annotation vectors with the simplices. We separate the representation of the simplicial complex from the representation of the cohomology groups, and introduce a new data structure for maintaining the annotation matrix, which is more compact and reduces substancially the amount of matrix operations. In addition, we propose a heuristic to simplify further the representation of the cohomology groups and improve both time and space complexities. The paper provides a theoretical analysis, as well as a detailed experimental study of our implementation and comparison with state-of-the-art software for persistent homology and cohomology.
机译:由于二元性,FIENT中的持续同源与场中的系数与同学相一致。我们提出了最近引入的持续同学算法的实施,该持续的协作算法与简档附加注释向量。我们将单纯性复合物的表示从协调组的表示分开,并引入了一种用于维护注释矩阵的新数据结构,该注释矩阵更紧凑,并减少了矩阵操作的算法。此外,我们提出了一种启发式,简化了同学群的代表性,并改善了时间和空间复杂性。本文提供了理论分析,以及对我们实施的详细实验研究以及与最先进的软件对持续同源性和同学的比较。

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