--- library_name: tf-keras tags: - sentence-similarity --- ## Model description This repo contains the model and the notebook for fine-tuning BERT model on SNLI Corpus for Semantic Similarity. [Semantic Similarity with BERT](https://keras.io/examples/nlp/semantic_similarity_with_bert/). Full credits go to [Mohamad Merchant](https://twitter.com/mohmadmerchant1) Reproduced by [Vu Minh Chien](https://www.linkedin.com/in/vumichien/) Motivation: Semantic Similarity determines how similar two sentences are, in terms of their meaning. In this tutorial, we can fine-tune BERT model and use it to predict the similarity score for two sentences. ## Training and evaluation data This example demonstrates the use of the Stanford Natural Language Inference (SNLI) Corpus to predict semantic sentence similarity with Transformers. - Total train samples: 100000 - Total validation samples: 10000 - Total test samples: 10000 Here are the "similarity" label values in SNLI dataset: - Contradiction: The sentences share no similarity. - Entailment: The sentences have a similar meaning. - Neutral: The sentences are neutral. ## Training procedure ### Training hyperparameters The following hyperparameters were used during training: | Hyperparameters | Value | | :-- | :-- | | name | Adam | | learning_rate | 9.999999747378752e-06 | | decay | 0.0 | | beta_1 | 0.8999999761581421 | | beta_2 | 0.9990000128746033 | | epsilon | 1e-07 | | amsgrad | False | | training_precision | float32 | ## Model Plot
View Model Plot ![Model Image](./model.png)