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#
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## Overview
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The **
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## Dataset Structure
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## Use Cases
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The **
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1. **Sentence Embedding Training:** The dataset is well-suited for training models that generate sentence embeddings, enabling effective comparison of sentence-level semantics in both Arabic and English.
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2. **Multilingual and Cross-Lingual STS:** This dataset can be used for evaluating the performance of multilingual and cross-lingual sentence transformers, as it includes both monolingual and multilingual sentence pairs.
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# SILMA STS Arabic/English Dataset - v1.0
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## Overview
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The **SILMA STS Arabic/English Dataset - v1.0** is a dataset designed for training and evaluating sentence embeddings for Arabic and English tasks. It consists of five different splits that cover monolingual and multilingual sentence pairs, with human-annotated similarity scores. The dataset includes both Arabic-to-Arabic and English-to-English pairs, as well as cross-lingual Arabic-English pairs, making it a valuable resource for multilingual and cross-lingual semantic similarity tasks.
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## Dataset Structure
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## Use Cases
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The **SILMA STS Arabic/English Dataset - v1.0** can be used in various NLP tasks, including but not limited to:
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1. **Sentence Embedding Training:** The dataset is well-suited for training models that generate sentence embeddings, enabling effective comparison of sentence-level semantics in both Arabic and English.
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2. **Multilingual and Cross-Lingual STS:** This dataset can be used for evaluating the performance of multilingual and cross-lingual sentence transformers, as it includes both monolingual and multilingual sentence pairs.
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