Point processes are a useful mathematical tool for describing events over time, and so there are many recent approaches for representing and learning them. One notable open question is how to precisely describe the flexibility of point process models and whether there exists a general model that can represent all point processes. Our work bridges this gap. Focusing on the widely used event intensity function representation of point processes, we provide a proof that a class of learnable functions can universally approximate any valid intensity function. The proof connects the well known Stone-Weierstrass Theorem for function approximation, the uniform density of non-negative continuous functions using a transfer functions, the formulation o...
This thesis describes novel approaches to learning from time series and point processes, including l...
Point processes are random local finite sets of points in a space that are used for mod- elling and ...
8 pages, 6 figures. All code available online: https://github.com/hpaulkeeler/DetPoisson_MATLABInte...
Event sequence, asynchronously generated with random timestamp, is ubiquitous among applications. Th...
Learning the dynamics of spatiotemporal events is a fundamental problem. Neural point processes enha...
Attributed event sequences are commonly encountered in practice. A recent research line focuses on ...
A Neural Process (NP) is a map from a set of observed input-output pairs to a predictive distributio...
We introduce a probabilistic model for the factorisation of continuous Poisson process rate function...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Characterizing neural spiking activity as a function of intrinsic and extrinsic factors is important...
Point process modeling has the potential to capture the specificity of neural firing where the infor...
Determinantal point processes (DPPs) are well-suited for modeling repulsion and have proven useful i...
Abstract: Neural spike trains, the primary communication signals in the brain, can be accurately mod...
Point process models have been shown to be useful in character-izing neural spiking activity (NSA) a...
A common interest of scientists in many fields is to understand the relationship between the dynamic...
This thesis describes novel approaches to learning from time series and point processes, including l...
Point processes are random local finite sets of points in a space that are used for mod- elling and ...
8 pages, 6 figures. All code available online: https://github.com/hpaulkeeler/DetPoisson_MATLABInte...
Event sequence, asynchronously generated with random timestamp, is ubiquitous among applications. Th...
Learning the dynamics of spatiotemporal events is a fundamental problem. Neural point processes enha...
Attributed event sequences are commonly encountered in practice. A recent research line focuses on ...
A Neural Process (NP) is a map from a set of observed input-output pairs to a predictive distributio...
We introduce a probabilistic model for the factorisation of continuous Poisson process rate function...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Characterizing neural spiking activity as a function of intrinsic and extrinsic factors is important...
Point process modeling has the potential to capture the specificity of neural firing where the infor...
Determinantal point processes (DPPs) are well-suited for modeling repulsion and have proven useful i...
Abstract: Neural spike trains, the primary communication signals in the brain, can be accurately mod...
Point process models have been shown to be useful in character-izing neural spiking activity (NSA) a...
A common interest of scientists in many fields is to understand the relationship between the dynamic...
This thesis describes novel approaches to learning from time series and point processes, including l...
Point processes are random local finite sets of points in a space that are used for mod- elling and ...
8 pages, 6 figures. All code available online: https://github.com/hpaulkeeler/DetPoisson_MATLABInte...