We show that existing model interpretation methods such as linear probes and prompts have some key limitations in answering these questions. We revisit KI from an information-theoretic view and propose a new theoretically sound probe called Graph Convolution Simulator (GCS) for KI interpretation. GCS uses graph attention on the corresponding knowledge graph for interpretation. In our experiments we verify that GCS can provide reasonable interpretation results for two well-known knowledge-enhanced LMs: ERNIE and K-Adapter. We also find that only a marginal amount of knowledge is successfully integrated in these models, and simply increasing the size of the KI corpus may not lead to better knowledge-enhanced LMs.
翻译:我们从信息理论角度对KI进行重新审视,并提出一个新的理论声音探测器,称为“图形革命模拟器(GCS)”,用于KI解释。 GCS在相应的知识图上使用图解关注。在我们的实验中,我们核实GCS能够为两个众所周知的知识强化LMs提供合理的解释结果:ERNIE和K-Adapter。 我们还发现,只有少量的知识成功地融入了这些模型,而仅仅增加KIPS的规模也许不会导致知识增强LMs。