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Ding, Zifeng; Li, Zongyue; Qi, Ruoxia; Wu, Jingpei; He, Bailan; Ma, Yunpu ORCID logoORCID: https://orcid.org/0000-0001-6112-8794; Meng, Zhao; Chen, Shuo; Liao, Ruotong; Han, Zhen und Tresp, Volker ORCID logoORCID: https://orcid.org/0000-0001-9428-3686 (2023): ForecastTKGQuestions: A Benchmark for Temporal Question Answering and Forecasting over Temporal Knowledge Graph. 22nd International Semantic Web Conference (ISWC), Athens, Greece, 06. - 10. November 2023. Payne, Terry R.; Presutti, Valentina; Qi, Guili; Poveda-Villalón, María; Stoilos, Giorgos; Hollink, Laura; Kaoudi, Zoi; Cheng, Gong und Li, Juanzi (Hrsg.): In: The Semantic Web – ISWC 2023, Lecture Notes in Computer Science Bd. 14265 Cham: Springer. S. 541-560

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Abstract

Question answering over temporal knowledge graphs (TKGQA) has recently found increasing interest. Previous related works aim to develop QA systems that answer temporal questions based on the facts from a fixed time period, where a temporal knowledge graph (TKG) spanning this period can be fully used for inference. In real-world scenarios, however, it is common that given knowledge until the current instance, we wish the TKGQA systems to answer the questions asking about future. As humans constantly plan the future, building forecasting TKGQA systems is important. In this paper, we propose a novel task: forecasting TKGQA, and propose a coupled large-scale TKGQA benchmark dataset, i.e., ForecastTKGQuestions. It includes three types of forecasting questions, i.e., entity prediction, yes-unknown, and fact reasoning questions. For every question, a timestamp is annotated and QA models only have access to TKG information prior to it for answer inference. We find that previous TKGQA methods perform poorly on forecasting questions, and they are unable to answer yes-unknown and fact reasoning questions. To this end, we propose ForecastTKGQA, a TKGQA model that employs a TKG forecasting module for future inference. Experiments show that it performs well in forecasting TKGQA.

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