Learning To Rank Query Graphs For Complex Question Answering Over Knowledge Graphs | Awesome LLM Papers Add your paper to Awesome LLM Papers

Learning To Rank Query Graphs For Complex Question Answering Over Knowledge Graphs

Gaurav Maheshwari, Priyansh Trivedi, Denis Lukovnikov, Nilesh Chakraborty, Asja Fischer, Jens Lehmann . Lecture Notes in Computer Science 2019 – 87 citations

[Paper]   Search on Google Scholar   Search on Semantic Scholar
Compositional Generalization Datasets Question Answering Training Techniques

In this paper, we conduct an empirical investigation of neural query graph ranking approaches for the task of complex question answering over knowledge graphs. We experiment with six different ranking models and propose a novel self-attention based slot matching model which exploits the inherent structure of query graphs, our logical form of choice. Our proposed model generally outperforms the other models on two QA datasets over the DBpedia knowledge graph, evaluated in different settings. In addition, we show that transfer learning from the larger of those QA datasets to the smaller dataset yields substantial improvements, effectively offsetting the general lack of training data.

Similar Work