Traffic Event Detection as a Slot Filling Problem
Xiangyu Yang, Giannis Bekoulis, Nikos Deligiannis

TL;DR
This paper presents a novel approach to extracting detailed traffic event information from Twitter data by framing it as a slot filling problem, achieving high accuracy with new datasets and models.
Contribution
It introduces the traffic event detection as a slot filling task, along with new datasets and models that outperform existing methods in accuracy.
Findings
Achieved over 95% F1 score on traffic event detection datasets.
Joint models outperform separate models in accuracy.
Incorporating tweet-level info improves performance.
Abstract
In this paper, we introduce the new problem of extracting fine-grained traffic information from Twitter streams by also making publicly available the two (constructed) traffic-related datasets from Belgium and the Brussels capital region. In particular, we experiment with several models to identify (i) whether a tweet is traffic-related or not, and (ii) in the case that the tweet is traffic-related to identify more fine-grained information regarding the event (e.g., the type of the event, where the event happened). To do so, we frame (i) the problem of identifying whether a tweet is a traffic-related event or not as a text classification subtask, and (ii) the problem of identifying more fine-grained traffic-related information as a slot filling subtask, where fine-grained information (e.g., where an event has happened) is represented as a slot/entity of a particular type. We propose the…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Internet Traffic Analysis and Secure E-voting · Text and Document Classification Technologies
