Many models that leverage knowledge graphs (KGs) have recently demonstrated remarkable success in question answering (QA) tasks. In the real world, many facts contained in KGs are time-constrained thus temporal KGQA has received increasing attention. Despite the fruitful efforts of previous models in temporal KGQA, they still have several limitations. (I) They neither emphasize the graph structural information between entities in KGs nor explicitly utilize a multi-hop relation path through graph neural networks to enhance answer prediction. (II) They adopt pre-trained language models (LMs) to obtain question representations, focusing merely on the global information related to the question while not highlighting the local information of the entities in KGs. To address these limitations, we introduce a novel model that simultaneously explores both Local information and Global information for the task of temporal KGQA (LGQA). Specifically, we first introduce an auxiliary task in the temp...
Local and Global: Temporal Question Answering via Information Fusion / Liu, Yonghao; Liang, Di; Li, Mengyu; Giunchiglia, Fausto; Li, Ximing; Wang, Sirui; Wu, Wei; Huang, Lan; Feng, Xiaoyue; Guan, Renchu. - In: IJCAI. - ISSN 1045-0823. - 2023-:Main Track(2023), pp. 5141-5149. ( 32nd International Joint Conference on Artificial Intelligence, IJCAI 2023 Macao 2023) [10.24963/ijcai.2023/571].
Local and Global: Temporal Question Answering via Information Fusion
Fausto Giunchiglia;
2023-01-01
Abstract
Many models that leverage knowledge graphs (KGs) have recently demonstrated remarkable success in question answering (QA) tasks. In the real world, many facts contained in KGs are time-constrained thus temporal KGQA has received increasing attention. Despite the fruitful efforts of previous models in temporal KGQA, they still have several limitations. (I) They neither emphasize the graph structural information between entities in KGs nor explicitly utilize a multi-hop relation path through graph neural networks to enhance answer prediction. (II) They adopt pre-trained language models (LMs) to obtain question representations, focusing merely on the global information related to the question while not highlighting the local information of the entities in KGs. To address these limitations, we introduce a novel model that simultaneously explores both Local information and Global information for the task of temporal KGQA (LGQA). Specifically, we first introduce an auxiliary task in the temp...| File | Dimensione | Formato | |
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