Title
Spatially oriented convolutional neural network for spatial relation extraction from natural language texts
Abstract
Spatial relation extraction (e.g., topological relations, directional relations, and distance relations) from natural language descriptions is a fundamental but challenging task in several practical applications. Current state-of-the-art methods rely on rule-based metrics, either those specifically developed for extracting spatial relations or those integrated in methods that combine multiple metrics. However, these methods all rely on developed rules and do not effectively capture the characteristics of natural language spatial relations because the descriptions may be heterogeneous and vague and may be context sparse. In this article, we present a spatially oriented piecewise convolutional neural network (SP-CNN) that is specifically designed with these linguistic issues in mind. Our method extends a general piecewise convolutional neural network with a set of improvements designed to tackle the task of spatial relation extraction. We also propose an automated workflow for generating training datasets by integrating new sentences with those in a knowledge base, based on string similarity and semantic similarity, and then transforming the sentences into training data. We exploit a spatially oriented channel that uses prior human knowledge to automatically match words and understand the linguistic clues to spatial relations, finally leading to an extraction decision. We present both the qualitative and quantitative performance of the proposed methodology using a large dataset collected from Wikipedia. The experimental results demonstrate that the SP-CNN, with its supervised machine learning, can significantly outperform current state-of-the-art methods on constructed datasets.
Year
DOI
Venue
2022
10.1111/tgis.12887
TRANSACTIONS IN GIS
DocType
Volume
Issue
Journal
26
2
ISSN
Citations 
PageRank 
1361-1682
0
0.34
References 
Authors
0
5
Name
Order
Citations
PageRank
Qinjun Qiu100.34
Zhong Xie23412.55
Kai Ma300.68
Zhanlong Chen400.34
Liufeng Tao500.34