计算机科学
常识
瓶颈
常识推理
选择(遗传算法)
人工智能
编码
启发式
过程(计算)
基于模型的推理
机器学习
知识表示与推理
自然语言处理
生物化学
化学
基因
嵌入式系统
操作系统
作者
Zhao Yang,Yuanzhe Zhang,Pengfei Cao,Liu Cao,Chen Jian-song,Jun Zhao,Kang Liu
标识
DOI:10.1016/j.ins.2024.120134
摘要
KG-augmented models usually endow existing models with external knowledge graphs, which achieve promising performance in various knowledge-intensive tasks, such as commonsense reasoning. Existing methods mainly first exploited heuristic ways for retrieving the relevant knowledge subgraphs according to the input, and then utilized some effective encoders, such as GNNs, to encode the symbolic knowledge into the neural reasoning networks. However, whether the whole retrieved knowledge subgraphs are really relevant or useful for the reasoning process was seldom considered. Actually, according to our observations and analysis, most retrieved knowledge is noisy and useless to the reasoning models, which would hurt the final performance. To remedy this, this paper proposes information bottleneck based knowledge selection (IBKS), which is able to select useful knowledge from the retrieved knowledge subgraph. Expectedly, the selected knowledge could better improve the commonsense reasoning ability of the model. Moreover, IBKS is model-agnostic and could be plugged into any existing KG-augmented model. Extensive experimental results show that IBKS could effectively improve commonsense reasoning performance.
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