We propose a model for hierarchical structured data as an extension to the stochastic temporal convolutional network. The proposed model combines an autoregressive model with a hierarchical variational autoencoder and downsampling to achieve superior computational complexity. We evaluate the proposed model on two different types of sequential data: speech and handwritten text. The results are promising with the proposed model achieving state-of-the-art performance
Multivariate time series forecasting with hierarchical structure is pervasive in real-world applicat...
We marry ideas from deep neural networks and approximate Bayesian inference to derive a generalised ...
International audienceProbabilistic Latent Variable Models (LVMs) provide an alternative to self-sup...
Consider the problem where we want a computer program capable of recognizing a pedestrian on the roa...
Hierarchical structures arise in many real world applications and domains. For example, in social ne...
We introduce a deep, generative autoencoder ca-pable of learning hierarchies of distributed rep-rese...
Hierarchical autoregressive (AR) models can describe many complex physical processes. Unfortunately,...
Time series often have a temporal hierarchy, with information that is spread out over multiple time ...
Extraction of complex temporal patterns, such as human behaviors, from time series data is a challen...
We consider a set of probabilistic functions of some input variables as a representation of the inpu...
In this paper, we introduce an unsupervised hierarchical framework for modeling trajectories in surv...
Current autoregressive language generative models in the deep learning literature have achieved impr...
Longitudinal datasets measured repeatedly over time from individual subjects, arise in many biomedic...
INST: L_200In this work I explore deep learning from the basics to more complex theories like recurr...
This thesis proposes a hierarchical clustering algorithm for time series, comprised of a variational...
Multivariate time series forecasting with hierarchical structure is pervasive in real-world applicat...
We marry ideas from deep neural networks and approximate Bayesian inference to derive a generalised ...
International audienceProbabilistic Latent Variable Models (LVMs) provide an alternative to self-sup...
Consider the problem where we want a computer program capable of recognizing a pedestrian on the roa...
Hierarchical structures arise in many real world applications and domains. For example, in social ne...
We introduce a deep, generative autoencoder ca-pable of learning hierarchies of distributed rep-rese...
Hierarchical autoregressive (AR) models can describe many complex physical processes. Unfortunately,...
Time series often have a temporal hierarchy, with information that is spread out over multiple time ...
Extraction of complex temporal patterns, such as human behaviors, from time series data is a challen...
We consider a set of probabilistic functions of some input variables as a representation of the inpu...
In this paper, we introduce an unsupervised hierarchical framework for modeling trajectories in surv...
Current autoregressive language generative models in the deep learning literature have achieved impr...
Longitudinal datasets measured repeatedly over time from individual subjects, arise in many biomedic...
INST: L_200In this work I explore deep learning from the basics to more complex theories like recurr...
This thesis proposes a hierarchical clustering algorithm for time series, comprised of a variational...
Multivariate time series forecasting with hierarchical structure is pervasive in real-world applicat...
We marry ideas from deep neural networks and approximate Bayesian inference to derive a generalised ...
International audienceProbabilistic Latent Variable Models (LVMs) provide an alternative to self-sup...