We present a novel approach for imputing missing data that incorporates temporal information into bipartite graphs through an extension of graph representation learning. Missing data is abundant in several domains, particularly when observations are made over time. Most imputation methods make strong assumptions about the distribution of the data. While novel methods may relax some assumptions, they may not consider temporality. Moreover, when such methods are extended to handle time, they may not generalize without retraining. We propose using a joint bipartite graph approach to incorporate temporal sequence information. Specifically, the observation nodes and edges with temporal information are used in message passing to learn node and ed...
A networked time series (NETS) is a family of time series on a given graph, one for each node. It ha...
BACKGROUND: Different phenomena like the spread of a disease, social interactions or the biological ...
We present an approach that uses a deep learning model, in particular, a MultiLayer Perceptron, for ...
GNNs have been proven to perform highly effective in various node-level, edge-level, and graph-level...
Missing data imputation (MDI) is the task of replacing missing values in a dataset with alternative,...
International audienceTraffic forecasting has attracted widespread attention recently. In reality, t...
Graphs are a commonly used construct for representing relationships between elements in complex hig...
Learning representations for graph-structured data is essential for graph analytical tasks. While re...
Graph Neural Networks (GNNs) have become the leading paradigm for learning on (static) graph-structu...
Graphs are a commonly used construct for repre- senting relationships between elements in complex hi...
Missing values appear in most multivariate time series, especially in the monitored network traffic ...
For the real-world time series analysis, data missing is a ubiquitously existing problem due to anom...
Modeling multivariate time series as temporal signals over a (possibly dynamic) graph is an effectiv...
Traffic forecasting has attracted widespread attention recently. In reality, traffic data usually co...
International audienceGraph autoencoders (GAE), also known as graph embedding methods, learn latent ...
A networked time series (NETS) is a family of time series on a given graph, one for each node. It ha...
BACKGROUND: Different phenomena like the spread of a disease, social interactions or the biological ...
We present an approach that uses a deep learning model, in particular, a MultiLayer Perceptron, for ...
GNNs have been proven to perform highly effective in various node-level, edge-level, and graph-level...
Missing data imputation (MDI) is the task of replacing missing values in a dataset with alternative,...
International audienceTraffic forecasting has attracted widespread attention recently. In reality, t...
Graphs are a commonly used construct for representing relationships between elements in complex hig...
Learning representations for graph-structured data is essential for graph analytical tasks. While re...
Graph Neural Networks (GNNs) have become the leading paradigm for learning on (static) graph-structu...
Graphs are a commonly used construct for repre- senting relationships between elements in complex hi...
Missing values appear in most multivariate time series, especially in the monitored network traffic ...
For the real-world time series analysis, data missing is a ubiquitously existing problem due to anom...
Modeling multivariate time series as temporal signals over a (possibly dynamic) graph is an effectiv...
Traffic forecasting has attracted widespread attention recently. In reality, traffic data usually co...
International audienceGraph autoencoders (GAE), also known as graph embedding methods, learn latent ...
A networked time series (NETS) is a family of time series on a given graph, one for each node. It ha...
BACKGROUND: Different phenomena like the spread of a disease, social interactions or the biological ...
We present an approach that uses a deep learning model, in particular, a MultiLayer Perceptron, for ...