Towards Natural Language Question Answering over Earth Observation Linked Data using Attention-based Neural Machine Translation
Abhishek V. Potnis, Rajat C. Shinde, Surya S. Durbha

TL;DR
This paper explores using attention-based neural machine translation to convert natural language questions into GeoSPARQL queries for Earth Observation Linked Data, enabling more intuitive data exploration.
Contribution
It demonstrates the feasibility of neural machine translation with attention for mapping natural language spatial questions to GeoSPARQL queries, a novel approach in this domain.
Findings
Neural machine translation with attention effectively maps natural language to GeoSPARQL.
A new dataset of question-query pairs over Earth Observation data was created.
The approach shows promising results for spatial predicate identification.
Abstract
With an increase in Geospatial Linked Open Data being adopted and published over the web, there is a need to develop intuitive interfaces and systems for seamless and efficient exploratory analysis of such rich heterogeneous multi-modal datasets. This work is geared towards improving the exploration process of Earth Observation (EO) Linked Data by developing a natural language interface to facilitate querying. Questions asked over Earth Observation Linked Data have an inherent spatio-temporal dimension and can be represented using GeoSPARQL. This paper seeks to study and analyze the use of RNN-based neural machine translation with attention for transforming natural language questions into GeoSPARQL queries. Specifically, it aims to assess the feasibility of a neural approach for identifying and mapping spatial predicates in natural language to GeoSPARQL's topology vocabulary extension…
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