I-SEA: Importance Sampling and Expected Alignment-Based Deep Distance Metric Learning for Time Series Analysis and Embedding
Abstract
Learning effective embeddings for potentially irregularly sampled time-series, evolving at different time scales, is fundamental for machine learning tasks such as classification and clustering. Task-dependent embeddings rely on similarities between data samples to learn effective geometries. However, many popular time-series similarity measures are not valid distance metrics, and as a result they do not reliably capture the intricate relationships between the multi-variate time-series data samples for learning effective embeddings. One of the primary ways to formulate an accurate distance metric is by forming distance estimates via Monte-Carlo-based expectation evaluations. However, the high-dimensionality of the underlying distribution, and the inability to sample from it, pose significant challenges. To this end, we develop an Importance Sampling based distance metric -- I-SEA -- which enjoys the properties of a metric while consistently achieving superior performance for machine learning tasks such as classification and representation learning. I-SEA leverages Importance Sampling and Non-parametric Density Estimation to adaptively estimate distances, enabling implicit estimation from the underlying high-dimensional distribution, resulting in improved accuracy and reduced variance. We theoretically establish the properties of I-SEA and demonstrate its capabilities via experimental evaluations on real-world healthcare datasets.
Cite
Text
Rambhatla et al. "I-SEA: Importance Sampling and Expected Alignment-Based Deep Distance Metric Learning for Time Series Analysis and Embedding." AAAI Conference on Artificial Intelligence, 2022. doi:10.1609/AAAI.V36I7.20776Markdown
[Rambhatla et al. "I-SEA: Importance Sampling and Expected Alignment-Based Deep Distance Metric Learning for Time Series Analysis and Embedding." AAAI Conference on Artificial Intelligence, 2022.](https://mlanthology.org/aaai/2022/rambhatla2022aaai-i/) doi:10.1609/AAAI.V36I7.20776BibTeX
@inproceedings{rambhatla2022aaai-i,
title = {{I-SEA: Importance Sampling and Expected Alignment-Based Deep Distance Metric Learning for Time Series Analysis and Embedding}},
author = {Rambhatla, Sirisha and Che, Zhengping and Liu, Yan},
booktitle = {AAAI Conference on Artificial Intelligence},
year = {2022},
pages = {8045-8053},
doi = {10.1609/AAAI.V36I7.20776},
url = {https://mlanthology.org/aaai/2022/rambhatla2022aaai-i/}
}