TCube: Domain-Agnostic Neural Time-series Narration
Mandar Sharma, John S. Brownstein, Naren Ramakrishnan

TL;DR
TCube is a novel domain-agnostic neural framework that uses knowledge graphs and pre-trained language models to generate rich, fluent narratives from time-series data, overcoming data scarcity issues.
Contribution
It introduces the first neural approach for time-series narration that leverages knowledge graphs and transfer learning, applicable across domains without domain-specific templates.
Findings
Improves lexical diversity of narratives by up to 65.38%.
Maintains grammatical integrity of generated narratives.
Expert review favors TCube as a deployable system.
Abstract
The task of generating rich and fluent narratives that aptly describe the characteristics, trends, and anomalies of time-series data is invaluable to the sciences (geology, meteorology, epidemiology) or finance (trades, stocks, or sales and inventory). The efforts for time-series narration hitherto are domain-specific and use predefined templates that offer consistency but lead to mechanical narratives. We present TCube (Time-series-to-text), a domain-agnostic neural framework for time-series narration, that couples the representation of essential time-series elements in the form of a dense knowledge graph and the translation of said knowledge graph into rich and fluent narratives through the transfer-learning capabilities of PLMs (Pre-trained Language Models). TCube's design primarily addresses the challenge that lies in building a neural framework in the complete paucity of annotated…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques · Advanced Text Analysis Techniques
