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2021 IJCNLP A Survey of Data Augmentation Approaches for NLP #25
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This research paper serves as a survey on data augmentation. I specifically selected and initiated my literature review with this paper to gain insights into the hierarchy of data augmentation first and figure out what category of back translation belongs to. This paper begins by providing fundamental definitions of data augmentation and continues with the reasons behind its necessity in various NLP tasks and projects. Furthermore, it presented a range of proposed methods and solutions for different tasks and applications. Data augmentation, as defined in the paper, refers to different methods employed to increase the sample data without the need for direct data collection. An ideal data augmentation method should balance ease of implementation and improve model performance. There exists a trade-off between these two aspects. Below is an overview of the demonstrated hierarchy of data augmentation:
Applications
Tasks
Challenges & Future Directions
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This is the issue dedicated to the summary of papers that I found related to adding back translation expander.
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