Time-varying phenomena are ubiquitous across pure and applied mathematics, from path spaces and stochastic differential equations to multivariate time series and dynamic point clouds. The path signature provides a powerful characterization of such sequential data in terms of power series of tensors, weaving together these diverse concepts. Originally defined as part of Chen\u27s iterated integral cochain algebra, the path signature has since been used as the foundation for the theory of rough paths in stochastic analysis. More recently, it has been shown to be a universal and characteristic feature map for multivariate time series, providing theoretical guarantees for its application to time series analysis in the context of kernel methods ...
Rough path theory is focused on capturing and making precise the interactions between highly oscilla...
Persistence is a fairly well established tool in topological data analysis used to infer geometric i...
Abstract. Persistent homology is a widely used tool in Topological Data Analysis that encodes multi-...
Time-varying phenomena are ubiquitous across pure and applied mathematics, from path spaces and stoc...
We introduce a new feature map for barcodes as they arise in persistent homology computation. The ma...
Sequential and temporal data arise in many fields of research, such as quantitative finance, medicin...
We introduce a new feature map for barcodes as they arise in persistent homology computation. The ma...
Modern applications of artificial intelligence lead to high-dimensional multivariate temporal data t...
The main object of study in this work is the extension of the classical characteristic function to t...
This thesis explores the use of Signatures in Machine Learning through the lens of Kernel Methods. S...
Discrete signatures are invariants computed from time series that correspond to the discretised vers...
In both physical and social sciences, we usually use controlled differential equation to model vario...
The rising field of Topological Data Analysis (TDA) provides a new approach to learning from data th...
Persistent homology is a widely used tool in Topological Data Analysis that encodes multi-scale topo...
The signature of Brownian motion in {Mathematical expression} over a running time interval {Mathemat...
Rough path theory is focused on capturing and making precise the interactions between highly oscilla...
Persistence is a fairly well established tool in topological data analysis used to infer geometric i...
Abstract. Persistent homology is a widely used tool in Topological Data Analysis that encodes multi-...
Time-varying phenomena are ubiquitous across pure and applied mathematics, from path spaces and stoc...
We introduce a new feature map for barcodes as they arise in persistent homology computation. The ma...
Sequential and temporal data arise in many fields of research, such as quantitative finance, medicin...
We introduce a new feature map for barcodes as they arise in persistent homology computation. The ma...
Modern applications of artificial intelligence lead to high-dimensional multivariate temporal data t...
The main object of study in this work is the extension of the classical characteristic function to t...
This thesis explores the use of Signatures in Machine Learning through the lens of Kernel Methods. S...
Discrete signatures are invariants computed from time series that correspond to the discretised vers...
In both physical and social sciences, we usually use controlled differential equation to model vario...
The rising field of Topological Data Analysis (TDA) provides a new approach to learning from data th...
Persistent homology is a widely used tool in Topological Data Analysis that encodes multi-scale topo...
The signature of Brownian motion in {Mathematical expression} over a running time interval {Mathemat...
Rough path theory is focused on capturing and making precise the interactions between highly oscilla...
Persistence is a fairly well established tool in topological data analysis used to infer geometric i...
Abstract. Persistent homology is a widely used tool in Topological Data Analysis that encodes multi-...