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vss:competition:1 [2024/07/09 20:41]
andy_eduard.catruna [Competition]
vss:competition:1 [2026/07/06 18:11] (current)
andy_eduard.catruna
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 ====== Competition ====== ====== Competition ======
  
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-The competition is hosted on Kaggle at this **[[https://​www.kaggle.com/​t/​ca9c55b30f5e0d7e5b21d84d857a4819 | link]]**. 
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-The teams will be composed of 2 people. 
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-We provide you with a **[[https://​www.kaggle.com/​code/​andreiniculae/​starting-code | Starter Code]]** which demonstrates how to read the data, train a network and make a submission. You are encouraged to start your work from this notebook. 
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-===== Description ===== 
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-Traditional image classification models heavily rely on accurately labeled data for training, but in real-world scenarios, acquiring large quantities of labeled images can be costly and time-consuming. 
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-Additionally,​ label noise or mislabeling can further complicate the training process, leading to decreased model performance. 
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-In this challenge, we provide you with a dataset that poses both obstacles: a significant portion of the training data remains unlabeled, and an unknown percentage of the labeled data contains mislabeled instances. 
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-Your task is to develop innovative deep learning algorithms and techniques to overcome these challenges and build a robust image classification model. 
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-To succeed in this competition,​ participants are encouraged to explore semi-supervised learning methods that leverage the unlabeled data to improve the model'​s performance. Developing strategies to mitigate the impact of mislabeled instances and enhance the model'​s ability to generalize effectively will be crucial. We encourage creative ideas. 
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-===== Data ===== 
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-  * 30 distinct classes. 
-  * 15,000 images for training. 
-  * 80% of the training set is unlabeled. 
-  * an unknown percentage of samples are mislabeled. 
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-===== Deadline ===== 
-You can make submissions until 3:55 PM Friday (12 July). 
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-===== Rules ===== 
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-<note important>​ 
-  * Using pretrained models is not allowed. 
-  * Using additional training data apart from the data provided is not allowed. 
-  * Searching on the internet for the clean dataset or labels for the test set is not allowed. 
-</​note>​ 
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-<note important>​ 
-Slides 
-  * Max 2 slides 
-  * Use Google Slides 
-  * Submit the link to your slides **[[https://​forms.gle/​gorF3d8GJLFkLhAs9|here]]** 
-</​note>​ 
  
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