Answering Conversational Questions on Structured Data without Logical Forms
This addresses the challenge of conversational querying over structured data for users needing efficient access without complex intermediate representations.
The paper tackles the problem of answering sequential conversational questions on structured data like tables without using logical forms, achieving competitive results on the Sequential Question Answering (SQA) task.
We present a novel approach to answering sequential questions based on structured objects such as knowledge bases or tables without using a logical form as an intermediate representation. We encode tables as graphs using a graph neural network model based on the Transformer architecture. The answers are then selected from the encoded graph using a pointer network. This model is appropriate for processing conversations around structured data, where the attention mechanism that selects the answers to a question can also be used to resolve conversational references. We demonstrate the validity of this approach with competitive results on the Sequential Question Answering (SQA) task (Iyyer et al., 2017).