基于拍卖的知识图谱问答学习

Inf. Comput. Pub Date : 2023-06-15 DOI:10.3390/info14060336
Garima Agrawal, D. Bertsekas, Huan Liu
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引用次数: 1

摘要

知识图是一种基于图的数据模型,它可以表示随着新信息的添加而不断增长的实时数据。知识图问答系统(KGQA)从知识图中检索自然语言问题的答案。大多数现有的KGQA系统使用静态知识库进行离线培训。在部署之后,它们无法从添加到图中的不可见的新实体中学习。需要一种动态算法来适应不断变化的图,并给出可解释的结果。在这项研究工作中,我们提出使用新的拍卖算法对知识图进行问答。这些算法可以实时适应不断变化的环境,适合于离线和在线培训。拍卖算法计算有向图中起始节点到一个或多个目标节点的路径,并使用节点价格来指导对路径的搜索。价格最初是任意分配的,并根据定义的规则动态更新。该算法将图从高价节点导航到低价节点。当知识图谱中动态添加或删除新的节点和边缘时,该算法可以通过重用现有节点的价格并为新节点分配任意价格来适应。对于随后的相关搜索,“习得的”价格提供了“转移知识”的手段,并充当了“向导”的角色:将知识引向价格较低的节点。在我们的实验中,我们的方法减少了60%的搜索计算量,从而使算法的计算效率提高。算法给出的结果路径可以映射到知识图中实体和关系的属性,为查询提供一个可解释的答案。我们讨论了我们的方法可用于的一些应用。
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Auction-Based Learning for Question Answering over Knowledge Graphs
Knowledge graphs are graph-based data models which can represent real-time data that is constantly growing with the addition of new information. The question-answering systems over knowledge graphs (KGQA) retrieve answers to a natural language question from the knowledge graph. Most existing KGQA systems use static knowledge bases for offline training. After deployment, they fail to learn from unseen new entities added to the graph. There is a need for dynamic algorithms which can adapt to the evolving graphs and give interpretable results. In this research work, we propose using new auction algorithms for question answering over knowledge graphs. These algorithms can adapt to changing environments in real-time, making them suitable for offline and online training. An auction algorithm computes paths connecting an origin node to one or more destination nodes in a directed graph and uses node prices to guide the search for the path. The prices are initially assigned arbitrarily and updated dynamically based on defined rules. The algorithm navigates the graph from the high-price to the low-price nodes. When new nodes and edges are dynamically added or removed in an evolving knowledge graph, the algorithm can adapt by reusing the prices of existing nodes and assigning arbitrary prices to the new nodes. For subsequent related searches, the “learned” prices provide the means to “transfer knowledge” and act as a “guide”: to steer it toward the lower-priced nodes. Our approach reduces the search computational effort by 60% in our experiments, thus making the algorithm computationally efficient. The resulting path given by the algorithm can be mapped to the attributes of entities and relations in knowledge graphs to provide an explainable answer to the query. We discuss some applications for which our method can be used.
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