From Zero to Hero: Generating Training Data for Question-To-Cypher Models

Dominik Opitz, N. Hochgeschwender
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引用次数: 21

Abstract

Graph databases employ graph structures such as nodes, attributes and edges to model and store relationships among data. To access this data, graph query languages (GQL) such as Cypher are typically used, which might be difficult to master for end-users. In the context of relational databases, sequence to SQL models, which translate natural language questions to SQL queries, have been proposed. While these Neural Machine Translation (NMT) models increase the accessibility of relational databases, NMT models for graph databases are not yet available mainly due to the lack of suitable parallel training data. In this short paper we sketch an architecture which enables the generation of synthetic training data for the graph query language Cypher.
从零到英雄:生成问题到密码模型的训练数据
图数据库使用节点、属性和边等图结构来建模和存储数据之间的关系。要访问这些数据,通常使用图形查询语言(GQL),如Cypher,这对于最终用户来说可能很难掌握。在关系数据库环境中,序列到SQL模型被提出,它将自然语言问题转换为SQL查询。虽然这些神经机器翻译(NMT)模型增加了关系数据库的可访问性,但由于缺乏合适的并行训练数据,图数据库的NMT模型尚未可用。在这篇简短的文章中,我们概述了一个能够生成图查询语言Cypher的综合训练数据的体系结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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