updated README
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            tags:
         
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            - semi-supervised
         
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            - image classification
         
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            ---
         
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            ## Model description
         
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            ## Intended uses & limitations
         
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            ## Training and evaluation data
         
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            ### Training  
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            The following hyperparameters were used during training:
         
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            tags:
         
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            - semi-supervised
         
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            - image classification
         
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            - domain adaption
         
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            datasets:
         
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            - MNIST
         
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            - SVHN
         
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            ---
         
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            ## Model description
         
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            This is an image classification model based on a [WideResNet-2-28](https://arxiv.org/abs/1605.07146v4), trained using the [AdaMatch](https://arxiv.org/abs/2106.04732) method by Berthelot et al. 
         
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             The training was based on the example [Semi-supervision and domain adaptation with AdaMatch]('https://keras.io/examples/vision/adamatch/') on keras.io by [Sayak Paul](https://twitter.com/RisingSayak). 
         
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            The main difference to the training in the keras.io example is that here I increased the number of Epochs to 30, for a better target dataset performance.
         
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            ## Intended uses & limitations
         
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            AdaMatch attempts to combine *semi-supervised learning*, i.e. learning with a partially labelled dataset and *unsupersived domain adaption*, i.e. adapting a model to a different domain dataset without any labels.
         
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            So it actually performs **semi-supervised domain adaptation (SSDA)**.
         
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            The model is inteded to show that AdaMatch is able to carry out SSDA, with a accuracy on the target domain (SVHN) that is exceeding or competitive with other methods.
         
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            ### Limitations
         
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            The model was trained on MNIST as source and SVHN as target dataset. Thus, the classification performance on MNIST is very good (98.46%), while the accuracy on SVHN is "only" at 26.51%. Compared to the training of the same architecture without AdaMatch, this still is about 17% better
         
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            ## Training and evaluation data
         
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            ### Training Data
         
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            The model was trained using the [MNIST](https://huggingface.co/datasets/mnist) (as source domain) and [SVHN cropped](http://ufldl.stanford.edu/housenumbers/) (as target domain) datasets. For training the images were used at a resolution of (32,32,3).
         
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            Augmented versions of the source and target data were created in two versions - weakly and strongly augmented, as written in the original paper.
         
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            ### Training Procedure
         
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            This image from the original paper shows the workflow of AdaMatch:
         
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            For more information, refer to the [paper](https://arxiv.org/abs/2106.04732) or the original example at [keras.io]('https://keras.io/examples/vision/adamatch/').
         
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            ### Hyperparameters
         
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            The following hyperparameters were used during training:
         
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            - Epochs: 30
         
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            - Source Batch Size: 64
         
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            - Target Batch Size: 3 * 64
         
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            - Learning Rate: 0.03
         
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            - Weight Decay: 0.0005
         
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            - Network Depth: 28
         
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            - Network Width Multiplier = 2
         
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            ## Evaluation
         
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            Accuracy on **source** test set: **98.46%**
         
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            Accuracy on **target** test set: **26.51%**
         
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