Continual Learning for Multivariate Time Series Tasks with Variable Input Dimensions
Vibhor Gupta, Jyoti Narwariya, Pankaj Malhotra, Lovekesh Vig, Gautam, Shroff

TL;DR
This paper introduces a continual learning approach for multivariate time series tasks with variable input dimensions, addressing challenges of partial sensor data and data privacy, by leveraging task-specific generative models and a graph neural network conditioning module.
Contribution
It proposes a novel method combining generative models and graph neural networks to handle variable input dimensions in continual learning for time series tasks.
Findings
Effective on activity recognition datasets
Improves performance on sequential tasks
Handles partial sensor observations
Abstract
We consider a sequence of related multivariate time series learning tasks, such as predicting failures for different instances of a machine from time series of multi-sensor data, or activity recognition tasks over different individuals from multiple wearable sensors. We focus on two under-explored practical challenges arising in such settings: (i) Each task may have a different subset of sensors, i.e., providing different partial observations of the underlying 'system'. This restriction can be due to different manufacturers in the former case, and people wearing more or less measurement devices in the latter (ii) We are not allowed to store or re-access data from a task once it has been observed at the task level. This may be due to privacy considerations in the case of people, or legal restrictions placed by machine owners. Nevertheless, we would like to (a) improve performance on…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning
