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	Tabular Regression
	
	
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Update README.md
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    | @@ -135,13 +135,15 @@ aging clocks: | |
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            `pip install computage`
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            Now, suppose you have trained your brand-new epigenetic aging clock model using the classic `scikit-learn` library. You saved your model as `pickle` file. 
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            -
            Then, the following block of code can be used to benchmark your model.  | 
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            ```python
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            from computage import run_benchmark
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            # first, define a method to impute NaNs for the in_library models
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            -
            # we recommend using imputation with gold standard values from  | 
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            imputation = 'sesame_450k'
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            # for example, take these three clock models for benchmarking
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| @@ -169,7 +171,7 @@ bench = run_benchmark(models_config, | |
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            ### Explore the dataset
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            -
            In case you want  | 
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            ```python
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            from huggingface_hub import snapshot_download
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| @@ -178,9 +180,7 @@ snapshot_download( | |
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                repo_type="dataset",
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                local_dir='.')
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            ```
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            -
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            Once downloaded, the dataset can be open with `pandas` (or any other `parquet` reader).
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            -
             | 
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            ```python
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            import pandas as pd
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|  | |
| 135 | 
             
            `pip install computage`
         | 
| 136 |  | 
| 137 | 
             
            Now, suppose you have trained your brand-new epigenetic aging clock model using the classic `scikit-learn` library. You saved your model as `pickle` file. 
         | 
| 138 | 
            +
            Then, the following block of code can be used to benchmark your model. 
         | 
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            +
            We also implemented imputation of missing values from the [SeSAMe package](https://github.com/zwdzwd/sesame) 
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            +
            and added several published aging clock models for comparison. 
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            ```python
         | 
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            from computage import run_benchmark
         | 
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| 145 | 
             
            # first, define a method to impute NaNs for the in_library models
         | 
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            +
            # we recommend using imputation with gold standard values from SeSAMe
         | 
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            imputation = 'sesame_450k'
         | 
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| 149 | 
             
            # for example, take these three clock models for benchmarking
         | 
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| 172 | 
             
            ### Explore the dataset
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            +
            In case you only want to explore our dataset locally, use the following commands to download it:
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            ```python
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            from huggingface_hub import snapshot_download
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                repo_type="dataset",
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                local_dir='.')
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            ```
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            Once downloaded, the dataset can be open with `pandas` (or any other `parquet` reader).
         | 
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            ```python
         | 
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            import pandas as pd
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