Generating Titles for Web Tables
This addresses a key challenge in table-based web applications by providing more generalizable title generation, though it is incremental as it builds on existing neural methods for a specific domain.
The paper tackles the problem of generating descriptive titles for web tables, where prior selection-based methods fail because relevant information is often scattered and not verbatim on the page. The proposed sequence-to-sequence model with copy and generation mechanisms outperforms baselines, approaching crowdsourced title quality while training on fewer than ten thousand examples.
Descriptive titles provide crucial context for interpreting tables that are extracted from web pages and are a key component of table-based web applications. Prior approaches have attempted to produce titles by selecting existing text snippets associated with the table. These approaches, however, are limited by their dependence on suitable titles existing a priori. In our user study, we observe that the relevant information for the title tends to be scattered across the page, and often--more than 80% of the time--does not appear verbatim anywhere in the page. We propose instead the application of a sequence-to-sequence neural network model as a more generalizable means of generating high-quality titles. This is accomplished by extracting many text snippets that have potentially relevant information to the table, encoding them into an input sequence, and using both copy and generation mechanisms in the decoder to balance relevance and readability of the generated title. We validate this approach with human evaluation on sample web tables and report that while sequence models with only a copy mechanism or only a generation mechanism are easily outperformed by simple selection-based baselines, the model with both capabilities outperforms them all, approaching the quality of crowdsourced titles while training on fewer than ten thousand examples. To the best of our knowledge, the proposed technique is the first to consider text generation methods for table titles and establishes a new state of the art.