Sequential Sentence Classification in Research Papers using Cross-Domain Multi-Task Learning

02/11/2021
by   Arthur Brack, et al.
0

The task of sequential sentence classification enables the semantic structuring of research papers. This can enhance academic search engines to support researchers in finding and exploring research literature more effectively. However, previous work has not investigated the potential of transfer learning with datasets from different scientific domains for this task yet. We propose a uniform deep learning architecture and multi-task learning to improve sequential sentence classification in scientific texts across domains by exploiting training data from multiple domains. Our contributions can be summarised as follows: (1) We tailor two common transfer learning methods, sequential transfer learning and multi-task learning, and evaluate their performance for sequential sentence classification; (2) The presented multi-task model is able to recognise semantically related classes from different datasets and thus supports manual comparison and assessment of different annotation schemes; (3) The unified approach is capable of handling datasets that contain either only abstracts or full papers without further feature engineering. We demonstrate that models, which are trained on datasets from different scientific domains, benefit from one another when using the proposed multi-task learning architecture. Our approach outperforms the state of the art on three benchmark datasets.

READ FULL TEXT
research
09/27/2022

Design Perspectives of Multitask Deep Learning Models and Applications

In recent years, multi-task learning has turned out to be of great succe...
research
09/18/2018

Transfer and Multi-Task Learning for Noun-Noun Compound Interpretation

In this paper, we empirically evaluate the utility of transfer and multi...
research
09/28/2018

Using Multi-task and Transfer Learning to Solve Working Memory Tasks

We propose a new architecture called Memory-Augmented Encoder-Solver (MA...
research
10/28/2020

Polymer Informatics with Multi-Task Learning

Modern data-driven tools are transforming application-specific polymer d...
research
08/05/2020

MultiCheXNet: A Multi-Task Learning Deep Network For Pneumonia-like Diseases Diagnosis From X-ray Scans

We present MultiCheXNet, an end-to-end Multi-task learning model, that i...
research
06/05/2019

A Feature Transfer Enabled Multi-Task Deep Learning Model on Medical Imaging

Object detection, segmentation and classification are three common tasks...
research
06/03/2016

Exploiting Multi-typed Treebanks for Parsing with Deep Multi-task Learning

Various treebanks have been released for dependency parsing. Despite tha...

Please sign up or login with your details

Forgot password? Click here to reset