Data Science by ODS.ai 🦜
51K subscribers
363 photos
34 videos
7 files
1.52K links
First Telegram Data Science channel. Covering all technical and popular staff about anything related to Data Science: AI, Big Data, Machine Learning, Statistics, general Math and the applications of former. To reach editors contact: @haarrp
Download Telegram
​​Rethinking Generalization of Neural Models: A Named Entity Recognition Case Study

Authors use the NER task to analyze the generalization behavior of existing models from different perspectives. Experiments with in-depth analyses diagnose the bottleneck of existing neural NER models in terms of breakdown performance analysis, annotation errors, dataset bias, and category relationships, which suggest directions for improvement.

The authors also release two datasets for future research: ReCoNLL and PLONER.

The main findings of the paper:
– the performance of existing models (including the state-of-the-art model) heavily influenced by the degree to which test entities have been seen in the training set with the same label
– the proposed measure enables to detect human annotation errors.

Once these errors are fixed, previous models can achieve new state-of-the-art results
– authors introduce two measures to characterize the data bias and the cross-dataset generalization experiment shows that the performance of NER systems is influenced not only by whether the test entity has been seen in the training set but also by whether the context of the test entity has been observed
– providing more training samples is not a guarantee of better results. A targeted increase in training samples will make it more profitable
– the relationship between entity categories influences the difficulty of model learning, which leads to some hard test samples that are difficult to solve using common learning methods


Paper: https://arxiv.org/abs/2001.03844
Github: https://github.com/pfliu-nlp/Named-Entity-Recognition-NER-Papers
Website: http://pfliu.com/InterpretNER/

#nlp #generalization #NER #annotations #dataset