arXiv Analytics

Sign in

arXiv:2005.00870 [cs.CL]AbstractReferencesReviewsResources

Predicting Performance for Natural Language Processing Tasks

Mengzhou Xia, Antonios Anastasopoulos, Ruochen Xu, Yiming Yang, Graham Neubig

Published 2020-05-02Version 1

Given the complexity of combinations of tasks, languages, and domains in natural language processing (NLP) research, it is computationally prohibitive to exhaustively test newly proposed models on each possible experimental setting. In this work, we attempt to explore the possibility of gaining plausible judgments of how well an NLP model can perform under an experimental setting, without actually training or testing the model. To do so, we build regression models to predict the evaluation score of an NLP experiment given the experimental settings as input. Experimenting on 9 different NLP tasks, we find that our predictors can produce meaningful predictions over unseen languages and different modeling architectures, outperforming reasonable baselines as well as human experts. Going further, we outline how our predictor can be used to find a small subset of representative experiments that should be run in order to obtain plausible predictions for all other experimental settings.

Related articles: Most relevant | Search more
arXiv:2011.08272 [cs.CL] (Published 2020-11-16)
NLPGym -- A toolkit for evaluating RL agents on Natural Language Processing Tasks
arXiv:2204.09593 [cs.CL] (Published 2022-04-01)
COOL, a Context Outlooker, and its Application to Question Answering and other Natural Language Processing Tasks
arXiv:1906.12039 [cs.CL] (Published 2019-06-28)
Supervised Contextual Embeddings for Transfer Learning in Natural Language Processing Tasks