Knodle: Modular Weakly Supervised Learning with PyTorch
Strategies for improving the training and prediction quality of weakly supervised machine learning models vary in how much they are tailored to a specific task or integrated with a specific model architecture. In this work, we introduce Knodle, a software framework that treats weak data annotations, deep learning models, and methods for improving weakly supervised training as separate, modular components. This modularization gives the training process access to fine-grained information such as data set characteristics, matches of heuristic rules, or elements of the deep learning model ultimately used for prediction. Hence, our framework can encompass a wide range of training methods for improving weak supervision, ranging from methods that only look at correlations of rules and output classes (independently of the machine learning model trained with the resulting labels), to those that harness the interplay of neural networks and weakly labeled data. We illustrate the benchmarking potential of the framework with a performance comparison of several reference implementations on a selection of datasets that are already available in Knodle.
Top- Sedova, Anastasiia
- Stephan, Andreas
- Speranskaya, Marina
- Roth, Benjamin
Category |
Paper in Conference Proceedings or in Workshop Proceedings (Poster) |
Event Title |
The Joint Conference of the 59th Annual Meeting of the Association for Computational Linguistics and the 11th International Joint Conference on Natural Language Processing (ACL-IJCNLP 2021) |
Divisions |
Data Mining and Machine Learning |
Subjects |
Sprachverarbeitung |
Event Location |
online |
Event Type |
Workshop |
Event Dates |
2-5 Aug 2021 |
Series Name |
Proceedings of the 6th Workshop on Representation Learning for NLP |
Page Range |
pp. 100-111 |
Date |
August 2021 |
Official URL |
http://dx.doi.org/10.18653/v1/2021.repl4nlp-1.12 |
Export |