4.7 Article

INSTINCT: Inception-based Symbolic Time Intervals series classification

Journal

INFORMATION SCIENCES
Volume 642, Issue -, Pages -

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.ins.2023.119147

Keywords

Symbolic Time Intervals; Classification; Deep learning; Inception

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In this paper, a novel deep learning-based framework called INSTINCT is proposed for Symbolic Time Intervals (STIs) series classification (STIC). INSTINCT transforms raw STIs series into real matrices while preserving almost all information and uses a ensemble of deep inception based convolutional neural networks for classification. Experimental results show that INSTINCT significantly improves accuracy compared to state-of-the-art methods and deep learning-based baselines on six real-world STIC benchmark datasets. Additionally, a comprehensive architecture study and scalability analysis of INSTINCT are conducted, revealing an overall linear time complexity in each main property of the input STIs series.
Symbolic Time Intervals (STIs) describe events having a non-zero time duration, which occur in a wide range of application domains. In this paper, we target the challenge of STIs series classification (STIC), which refers to the categorization of series of STIs. Over the recent years several advancements have been made in STIC, all of which are based on either distance-metrics or feature-based traditional classifiers, mostly relying on hand-engineering of features. Due to the high computational cost of either distance calculation or feature extraction, most methods also have quite little potential to scale. We introduce INSTINCT - a novel deep learning-based framework for STIC, which 1) proposes an almost fully information-preserving transformation of raw STIs series into real matrices, and 2) presents a novel ensemble of deep inception based convolutional neural networks for their classification. The evaluation is applied to the six real-world STIC benchmark datasets and demonstrates that INSTINCT significantly improves accuracy over seven state-of-the-art methods, as well as over three deep learning-based baselines. In addition, a comprehensive architecture study of INSTINCT is conducted as well as a scalability analysis, reporting an overall time complexity which is linear in each of the main properties of the input STIs series.

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