Robust topological information commonly comes in the form of a set of persistence diagrams, finite measures that are in nature uneasy to affix to generic machine learning frameworks. We introduce a fast, learnt, unsupervised vectorization method for measures in Euclidean spaces and use it for reflecting underlying changes in topological behaviour in machine learning contexts. The algorithm is simple and efficiently discriminates important space regions where meaningful differences to the mean measure arise. It is proven to be able to separate clusters of persistence diagrams. We showcase the strength and robustness of our approach on a number of applications, from emulous and modern graph collections where the method reaches state-of-the-ar...
International audienceDespite the obvious similarities between the metrics used in topological data ...
Generalisation measures are metrics that indicate how well a neural network will perform in presence...
Topological data analysis (TDA) allows one to extract rich information from structured data (such as...
Robust topological information commonly comes in the form of a set of persistence diagrams, finite m...
International audienceIn the last decade, there has been increasing interest in topological data ana...
In the context of supervised Machine Learning, finding alternate representations, or descriptors, fo...
The rising field of Topological Data Analysis (TDA) provides a new approach to learning from data th...
Persistent homology is a rigorous mathematical theory that provides a robust descriptor of data in t...
International audienceComputational topology has recently seen an important development toward data ...
This paper addresses the case where data come as point sets, or more generally as discrete measures....
International audiencePersistence diagrams, the most common descriptors of Topological Data Analysis...
Topological data analysis (TDA) is a young field that has been rapidly growing over the last years ...
23 pages, 4 figuresThe use of topological descriptors in modern machine learning applications, such ...
This dissertation presents novel approaches and applications of machine learning architectures. In p...
PhD Theses.The eld of topological data analysis (TDA) combines computational geometry and algebrai...
International audienceDespite the obvious similarities between the metrics used in topological data ...
Generalisation measures are metrics that indicate how well a neural network will perform in presence...
Topological data analysis (TDA) allows one to extract rich information from structured data (such as...
Robust topological information commonly comes in the form of a set of persistence diagrams, finite m...
International audienceIn the last decade, there has been increasing interest in topological data ana...
In the context of supervised Machine Learning, finding alternate representations, or descriptors, fo...
The rising field of Topological Data Analysis (TDA) provides a new approach to learning from data th...
Persistent homology is a rigorous mathematical theory that provides a robust descriptor of data in t...
International audienceComputational topology has recently seen an important development toward data ...
This paper addresses the case where data come as point sets, or more generally as discrete measures....
International audiencePersistence diagrams, the most common descriptors of Topological Data Analysis...
Topological data analysis (TDA) is a young field that has been rapidly growing over the last years ...
23 pages, 4 figuresThe use of topological descriptors in modern machine learning applications, such ...
This dissertation presents novel approaches and applications of machine learning architectures. In p...
PhD Theses.The eld of topological data analysis (TDA) combines computational geometry and algebrai...
International audienceDespite the obvious similarities between the metrics used in topological data ...
Generalisation measures are metrics that indicate how well a neural network will perform in presence...
Topological data analysis (TDA) allows one to extract rich information from structured data (such as...