TL;DR
This paper introduces a neural joint model that simultaneously performs segmentation and dependency parsing to convert real estate ads into structured property trees, improving accuracy and reducing error propagation.
Contribution
It presents a novel attentive neural architecture for joint segmentation and parsing, specifically tailored for real estate ads, outperforming pipeline approaches.
Findings
Over 3% improvement in edge F1 score with the joint model
Additional 2% gain using attention mechanisms
Effective in converting ads into structured property trees
Abstract
In processing human produced text using natural language processing (NLP) techniques, two fundamental subtasks that arise are (i) segmentation of the plain text into meaningful subunits (e.g., entities), and (ii) dependency parsing, to establish relations between subunits. In this paper, we develop a relatively simple and effective neural joint model that performs both segmentation and dependency parsing together, instead of one after the other as in most state-of-the-art works. We will focus in particular on the real estate ad setting, aiming to convert an ad to a structured description, which we name property tree, comprising the tasks of (1) identifying important entities of a property (e.g., rooms) from classifieds and (2) structuring them into a tree format. In this work, we propose a new joint model that is able to tackle the two tasks simultaneously and construct the property…
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