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Multi Task Learning For Zero Shot Performance Prediction of Multilingual Models

About

Massively Multilingual Transformer based Language Models have been observed to be surprisingly effective on zero-shot transfer across languages, though the performance varies from language to language depending on the pivot language(s) used for fine-tuning. In this work, we build upon some of the existing techniques for predicting the zero-shot performance on a task, by modeling it as a multi-task learning problem. We jointly train predictive models for different tasks which helps us build more accurate predictors for tasks where we have test data in very few languages to measure the actual performance of the model. Our approach also lends us the ability to perform a much more robust feature selection and identify a common set of features that influence zero-shot performance across a variety of tasks.

Kabir Ahuja, Shanu Kumar, Sandipan Dandapat, Monojit Choudhury• 2022

Related benchmarks

TaskDatasetResultRank
Zero-shot performance predictionWikiAnn
MAE8.62
18
Zero-shot performance predictionUDPOS
MAE5.88
18
Zero-shot performance predictionXNLI
MAE2.17
18
Performance PredictionMLQA
MAE2.21
9
Performance PredictionXCOPA
MAE1.96
9
Performance PredictionXQuAD
MAE3.15
9
Performance PredictionMewsliX
MAE9.33
9
Zero-shot performance predictionMLQA
MAE2.42
9
Zero-shot performance predictionPAWS
MAE1.92
9
Zero-shot performance predictionXCOPA
MAE2.59
9
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