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FormLM: Recommending Creation Ideas for Online Forms by Modelling Semantic and Structural Information

Authors :
Shao, Yijia
Zhou, Mengyu
Zhong, Yifan
Wu, Tao
Han, Hongwei
Han, Shi
Huang, Gideon
Zhang, Dongmei
Publication Year :
2022

Abstract

Online forms are widely used to collect data from human and have a multi-billion market. Many software products provide online services for creating semi-structured forms where questions and descriptions are organized by pre-defined structures. However, the design and creation process of forms is still tedious and requires expert knowledge. To assist form designers, in this work we present FormLM to model online forms (by enhancing pre-trained language model with form structural information) and recommend form creation ideas (including question / options recommendations and block type suggestion). For model training and evaluation, we collect the first public online form dataset with 62K online forms. Experiment results show that FormLM significantly outperforms general-purpose language models on all tasks, with an improvement by 4.71 on Question Recommendation and 10.6 on Block Type Suggestion in terms of ROUGE-1 and Macro-F1, respectively.<br />Comment: 17 pages, EMNLP 2022 Main Conference

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2211.05284
Document Type :
Working Paper