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NLU 2022 Group 10 final project. We try to improve Pattern-Exploiting Training through multi-tasks training and data augmentation

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Improving-PET

This is the final project of Group 10 for the course Natural Language Understanding and Computational Semantics Spring 2022.
In this project we aim to improve upon Patter-Exploiting Training (PET) by introducing data augmentation techniques as well as multi-tasks tranining

Structures

There are 3 main components: PET, AdaPET and Data Augmentation, each with their individual README file from the original authors of the paper, viewers can follow the instruction to get the example result

Pipeline

Alt text

We use EDA to generate new training examples from original dataset before feeding in to Aug-PET model

Result

Examples Method AG's Yahoo Answer
τ = 10 PET 86.7% 63.6%
τ = 10 Aug-PET 88.5% 64.4%
τ = 50 PET 86.6% 65.3%
τ = 50 Aug-PET 86.6% 65.9%
τ = 100 PET 88.1% 68.3%
τ = 100 Aug-PET 89.0% 69.1%

We present the results in ascending order of size of labelled data

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NLU 2022 Group 10 final project. We try to improve Pattern-Exploiting Training through multi-tasks training and data augmentation

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