LETS-GZSL: A Latent Embedding Model for Time Series Generalized Zero
Shot Learning
- URL: http://arxiv.org/abs/2207.12007v1
- Date: Mon, 25 Jul 2022 09:31:22 GMT
- Title: LETS-GZSL: A Latent Embedding Model for Time Series Generalized Zero
Shot Learning
- Authors: Sathvik Bhaskarpandit, Priyanka Gupta, Manik Gupta
- Abstract summary: We propose a Latent Embedding for Time Series - GZSL (LETS-GZSL) model that can solve the problem of GZSL for time series classification (TSC)
Our framework is able to achieve a harmonic mean value of at least 55% on most datasets except when the number of unseen classes is greater than 3.
- Score: 1.4665304971699262
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: One of the recent developments in deep learning is generalized zero-shot
learning (GZSL), which aims to recognize objects from both seen and unseen
classes, when only the labeled examples from seen classes are provided. Over
the past couple of years, GZSL has picked up traction and several models have
been proposed to solve this problem. Whereas an extensive amount of research on
GZSL has been carried out in fields such as computer vision and natural
language processing, no such research has been carried out to deal with time
series data. GZSL is used for applications such as detecting abnormalities from
ECG and EEG data and identifying unseen classes from sensor, spectrograph and
other devices' data. In this regard, we propose a Latent Embedding for Time
Series - GZSL (LETS-GZSL) model that can solve the problem of GZSL for time
series classification (TSC). We utilize an embedding-based approach and combine
it with attribute vectors to predict the final class labels. We report our
results on the widely popular UCR archive datasets. Our framework is able to
achieve a harmonic mean value of at least 55% on most of the datasets except
when the number of unseen classes is greater than 3 or the amount of data is
very low (less than 100 training examples).
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