Existing neural methods for data-to-text generation are still struggling to produce long and diverse texts: they are insufficient to model input data dynamically during generation, to …
Controlled table-to-text generation seeks to generate natural language descriptions for highlighted subparts of a table. Previous SOTA systems still employ a sequence-to …
In task-oriented dialogue (ToD), a user holds a conversation with an artificial agent with the aim of completing a concrete task. Although this technology represents one of the central …
We introduce SciGen, a new challenge dataset consisting of tables from scientific articles and their corresponding descriptions, for the task of reasoning-aware data-to-text …
L Jing, X Song, X Lin, Z Zhao, W Zhou… - ACM Transactions on …, 2023 - dl.acm.org
Existing data-to-text generation efforts mainly focus on generating a coherent text from non- linguistic input data, such as tables and attribute–value pairs, but overlook that different …
S Wu, M Wang, D Zhang, Y Zhou, Y Li, Z Wu - IJCAI, 2021 - ijcai.org
Due to limited knowledge carried by queries, traditional dialogue systems often face the dilemma of generating boring responses, leading to poor user experience. To alleviate this …
L Li, C Ma, Y Yue, D Hu - Proceedings of the 59th Annual Meeting …, 2021 - aclanthology.org
Table-to-text generation aims at automatically generating natural text to help people conveniently obtain salient information in tables. Although neural models for table-to-text …
Recent neural models for data-to-text generation rely on massive parallel pairs of data and text to learn the writing knowledge. They often assume that writing knowledge can be …
Y Yang, J Cao, Y Wen, P Zhang - Scientific reports, 2021 - nature.com
Generating fluent, coherent, and informative text from structured data is called table-to-text generation. Copying words from the table is a common method to solve the “out-of …