A deep Natural Language Inference predictor without language-specific
training data
- URL: http://arxiv.org/abs/2309.02887v1
- Date: Wed, 6 Sep 2023 10:20:59 GMT
- Title: A deep Natural Language Inference predictor without language-specific
training data
- Authors: Lorenzo Corradi and Alessandro Manenti and Francesca Del Bonifro and
Francesco Setti and Dario Del Sorbo
- Abstract summary: We present a technique of NLP to tackle the problem of inference relation (NLI) between pairs of sentences in a target language of choice without a language-specific training dataset.
We exploit a generic translation dataset, manually translated, along with two instances of the same pre-trained model.
The model has been evaluated over machine translated Stanford NLI test dataset, machine translated Multi-Genre NLI test dataset, and manually translated RTE3-ITA test dataset.
- Score: 44.26507854087991
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: In this paper we present a technique of NLP to tackle the problem of
inference relation (NLI) between pairs of sentences in a target language of
choice without a language-specific training dataset. We exploit a generic
translation dataset, manually translated, along with two instances of the same
pre-trained model - the first to generate sentence embeddings for the source
language, and the second fine-tuned over the target language to mimic the
first. This technique is known as Knowledge Distillation. The model has been
evaluated over machine translated Stanford NLI test dataset, machine translated
Multi-Genre NLI test dataset, and manually translated RTE3-ITA test dataset. We
also test the proposed architecture over different tasks to empirically
demonstrate the generality of the NLI task. The model has been evaluated over
the native Italian ABSITA dataset, on the tasks of Sentiment Analysis,
Aspect-Based Sentiment Analysis, and Topic Recognition. We emphasise the
generality and exploitability of the Knowledge Distillation technique that
outperforms other methodologies based on machine translation, even though the
former was not directly trained on the data it was tested over.
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