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@@ -7,11 +7,11 @@ Language model of the pre-print arXiv paper titled: "_**miCSE**: Mutual Informat
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  # Brief Model Description
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- The **miCSE** language model is trained for sentence similarity computation. Training the model imposes alignment between the attention pattern of different views (embeddings of augmentations) during contrastive learning. Learning sentence embeddings with **miCSE** entails enforcing the syntactic consistency across augmented views for every single sentence, making contrastive self-supervised learning more sample efficient. This is achieved by regularizing the attention distribution. Regularizing the attention space enables learning representation in self-supervised fashion even when the training corpus is comparatively small.
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  # Intended Use
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- The model intended to be used for encoding sentences or short paragraphs. Given an input text, the model produces a vector embedding, which captures the semantics. The embedding can be used for numerous tasks, e.g., **retrieval**, **clustering** or **sentence similarity** comparison (see example below) .Sentence representations correspond to the embedding of the _**[CLS]**_ token.
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  # Model Usage
 
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  # Brief Model Description
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+ The **miCSE** language model is trained for sentence similarity computation. Training the model imposes alignment between the attention pattern of different views (embeddings of augmentations) during contrastive learning. Learning sentence embeddings with **miCSE** entails enforcing the syntactic consistency across augmented views for every single sentence, making contrastive self-supervised learning more sample efficient. This is achieved by regularizing the attention distribution. Regularizing the attention space enables learning representation in self-supervised fashion even when the training corpus is comparatively small. This is particularly interesting for real-world NLP applications, where training data is significantly smaller thank Wikipedia.
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  # Intended Use
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+ The model intended to be used for encoding sentences or short paragraphs. Given an input text, the model produces a vector embedding, which captures the semantics. The embedding can be used for numerous tasks, e.g., **retrieval**, **clustering** or **sentence similarity** comparison (see example below). Sentence representations correspond to the embedding of the _**[CLS]**_ token.
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  # Model Usage