Abstract:
Today's world extensively depends on analytics of high dimensional sensor time-series, and, extracting informative representation. Sensor time-series across various appli...Show MoreMetadata
Abstract:
Today's world extensively depends on analytics of high dimensional sensor time-series, and, extracting informative representation. Sensor time-series across various applications such as healthcare and human wellness, machine maintenance etc., are generally unlabelled, and, getting the annotations is costly and time-consuming. Here, we propose an unsupervised feature selection method exploiting representation learning with a choice of best clustering and recommended distance measure. Proposed method reduces the feature space, to a compressed latent representation, known as Auto-encoded Compact Sequence of features, by retaining the most informative parts. It further selects a set of discriminative features, by computing the sim-ilarity / dissimilarity among the features in latent space using the recommended best distance measure. We have experimented using diverse time-series from UCR Time Series Classification archive, and observed, proposed method consistently outperforms state-of-the-art feature selection approaches.
Date of Conference: 29 August 2022 - 02 September 2022
Date Added to IEEE Xplore: 18 October 2022
ISBN Information:
ISSN Information:
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- IEEE Keywords
- Index Terms
- Representation Learning ,
- Distancing Measures ,
- Feature Space ,
- Unsupervised Methods ,
- Discriminative Features ,
- Latent Space ,
- Feature Selection Methods ,
- Latent Representation ,
- Feature Selection Approach ,
- Unsupervised Feature ,
- Hyperparameters ,
- Support Vector Machine ,
- Feature Representation ,
- Mutual Information ,
- Feature Subset ,
- Feature Matrix ,
- Mahalanobis Distance ,
- Agglomerative Clustering ,
- Choice Of Measure ,
- Pair Distance ,
- Correlation-based Feature Selection ,
- Feature Pairs ,
- Raw Time Series ,
- Conditional Mutual Information ,
- Compact Representation ,
- Triangular Matrix ,
- Feature Selection Techniques ,
- Maximum Mutual Information ,
- Instances In The Dataset ,
- Redundant Features
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Representation Learning ,
- Distancing Measures ,
- Feature Space ,
- Unsupervised Methods ,
- Discriminative Features ,
- Latent Space ,
- Feature Selection Methods ,
- Latent Representation ,
- Feature Selection Approach ,
- Unsupervised Feature ,
- Hyperparameters ,
- Support Vector Machine ,
- Feature Representation ,
- Mutual Information ,
- Feature Subset ,
- Feature Matrix ,
- Mahalanobis Distance ,
- Agglomerative Clustering ,
- Choice Of Measure ,
- Pair Distance ,
- Correlation-based Feature Selection ,
- Feature Pairs ,
- Raw Time Series ,
- Conditional Mutual Information ,
- Compact Representation ,
- Triangular Matrix ,
- Feature Selection Techniques ,
- Maximum Mutual Information ,
- Instances In The Dataset ,
- Redundant Features
- Author Keywords