Update README.md
Browse files
    	
        README.md
    CHANGED
    
    | @@ -30,7 +30,7 @@ Overall, the v2 series of models have better search relevance, efficiency and in | |
| 30 | 
             
            - **Paper**: [Towards Competitive Search Relevance For Inference-Free Learned Sparse Retrievers](https://arxiv.org/abs/2411.04403)
         | 
| 31 | 
             
            - **Fine-tuning sample**: [opensearch-sparse-model-tuning-sample](https://github.com/zhichao-aws/opensearch-sparse-model-tuning-sample)
         | 
| 32 |  | 
| 33 | 
            -
            This is a learned sparse retrieval model. It encodes the documents to 30522 dimensional **sparse vectors**. For queries, it just use a tokenizer and a weight look-up table to generate sparse vectors. The non-zero dimension index means the corresponding token in the vocabulary, and the weight means the importance of the token. And the similarity score is the inner product of query/document sparse vectors. | 
| 34 |  | 
| 35 | 
             
            This model is trained on MS MARCO dataset.
         | 
| 36 |  | 
|  | |
| 30 | 
             
            - **Paper**: [Towards Competitive Search Relevance For Inference-Free Learned Sparse Retrievers](https://arxiv.org/abs/2411.04403)
         | 
| 31 | 
             
            - **Fine-tuning sample**: [opensearch-sparse-model-tuning-sample](https://github.com/zhichao-aws/opensearch-sparse-model-tuning-sample)
         | 
| 32 |  | 
| 33 | 
            +
            This is a learned sparse retrieval model. It encodes the documents to 30522 dimensional **sparse vectors**. For queries, it just use a tokenizer and a weight look-up table to generate sparse vectors. The non-zero dimension index means the corresponding token in the vocabulary, and the weight means the importance of the token. And the similarity score is the inner product of query/document sparse vectors.
         | 
| 34 |  | 
| 35 | 
             
            This model is trained on MS MARCO dataset.
         | 
| 36 |  | 

