This paper presents an artifact that uses deep transfer learning methods for the multi-label classification of research methods for an Information Systems corpus. The artifact can support researchers with frequently performed yet time-consuming classification and structure-seeking tasks that are often part of literature analyses. We use a corpus of 5,388 papers from AIS journals and conferences, of which 1,766 have been manually labelled with up to five research methods. The unlabelled papers are used for finetuning the language model, whereas the labelled data are used for training and testing. Our approach outperforms state of the art research method classification that deploy SVM. We show that deep transfer learning models can lead to a ...
We apply the knowledge discovery process to the mapping of current topics in a particular field of s...
Understanding the development of research fields is an important task for researchers. Previous stud...
The purpose of this work is to explore the applicability and effectiveness of deep learning methods ...
This paper presents an artifact that uses deep transfer learning methods for the multi-label classif...
The issue of the automatic classification of research articles into one or more fields of science is...
The amount of scientific literature continuously grows, which poses an increasing challenge for rese...
We created and analyzed a text classification dataset from freely-available web documents from the U...
With the increasing development of published literature, classification methods based on bibliometri...
This paper applies different deep learning architectures for sequence labelling to extract causes, e...
: Meta-learning is a field of learning that aims at addressing the challenges of conventional machin...
The goal of a research paper is to gather and interpret information into writing, and to share your ...
Information retrieval systems for scholarly literature rely heavily not only on text matching but on...
The continuous growth of scientific literature brings innovations and, at the same time, raises new ...
A benefit of the increasingly interconnected world is the amount of information available to pull fr...
Research in analysis of big scholarly data has increased in the recent past and it aims to understan...
We apply the knowledge discovery process to the mapping of current topics in a particular field of s...
Understanding the development of research fields is an important task for researchers. Previous stud...
The purpose of this work is to explore the applicability and effectiveness of deep learning methods ...
This paper presents an artifact that uses deep transfer learning methods for the multi-label classif...
The issue of the automatic classification of research articles into one or more fields of science is...
The amount of scientific literature continuously grows, which poses an increasing challenge for rese...
We created and analyzed a text classification dataset from freely-available web documents from the U...
With the increasing development of published literature, classification methods based on bibliometri...
This paper applies different deep learning architectures for sequence labelling to extract causes, e...
: Meta-learning is a field of learning that aims at addressing the challenges of conventional machin...
The goal of a research paper is to gather and interpret information into writing, and to share your ...
Information retrieval systems for scholarly literature rely heavily not only on text matching but on...
The continuous growth of scientific literature brings innovations and, at the same time, raises new ...
A benefit of the increasingly interconnected world is the amount of information available to pull fr...
Research in analysis of big scholarly data has increased in the recent past and it aims to understan...
We apply the knowledge discovery process to the mapping of current topics in a particular field of s...
Understanding the development of research fields is an important task for researchers. Previous stud...
The purpose of this work is to explore the applicability and effectiveness of deep learning methods ...