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	<id>https://mw.hh.se/caisr/index.php?action=history&amp;feed=atom&amp;title=Resolving_Class_Imbalance_using_Generative_Adversarial_Networks</id>
	<title>Resolving Class Imbalance using Generative Adversarial Networks - Revision history</title>
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	<updated>2026-04-04T15:27:03Z</updated>
	<subtitle>Revision history for this page on the wiki</subtitle>
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	<entry>
		<id>https://mw.hh.se/caisr/index.php?title=Resolving_Class_Imbalance_using_Generative_Adversarial_Networks&amp;diff=4013&amp;oldid=prev</id>
		<title>Peter at 09:06, 11 October 2018</title>
		<link rel="alternate" type="text/html" href="https://mw.hh.se/caisr/index.php?title=Resolving_Class_Imbalance_using_Generative_Adversarial_Networks&amp;diff=4013&amp;oldid=prev"/>
		<updated>2018-10-11T09:06:44Z</updated>

		<summary type="html">&lt;p&gt;&lt;/p&gt;
&lt;table class=&quot;diff diff-contentalign-left diff-editfont-monospace&quot; data-mw=&quot;interface&quot;&gt;
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				&lt;td colspan=&quot;2&quot; style=&quot;background-color: #fff; color: #202122; text-align: center;&quot;&gt;← Older revision&lt;/td&gt;
				&lt;td colspan=&quot;2&quot; style=&quot;background-color: #fff; color: #202122; text-align: center;&quot;&gt;Revision as of 09:06, 11 October 2018&lt;/td&gt;
				&lt;/tr&gt;&lt;tr&gt;&lt;td colspan=&quot;2&quot; class=&quot;diff-lineno&quot; id=&quot;mw-diff-left-l14&quot; &gt;Line 14:&lt;/td&gt;
&lt;td colspan=&quot;2&quot; class=&quot;diff-lineno&quot;&gt;Line 14:&lt;/td&gt;&lt;/tr&gt;
&lt;tr&gt;&lt;td class=&#039;diff-marker&#039;&gt; &lt;/td&gt;&lt;td style=&quot;background-color: #f8f9fa; color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #eaecf0; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;InfoGAN: Interpretable Representation Learning by Information Maximizing Generative Adversarial Nets&lt;/div&gt;&lt;/td&gt;&lt;td class=&#039;diff-marker&#039;&gt; &lt;/td&gt;&lt;td style=&quot;background-color: #f8f9fa; color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #eaecf0; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;InfoGAN: Interpretable Representation Learning by Information Maximizing Generative Adversarial Nets&lt;/div&gt;&lt;/td&gt;&lt;/tr&gt;
&lt;tr&gt;&lt;td class=&#039;diff-marker&#039;&gt; &lt;/td&gt;&lt;td style=&quot;background-color: #f8f9fa; color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #eaecf0; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;https://arxiv.org/pdf/1606.03657.pdf&lt;/div&gt;&lt;/td&gt;&lt;td class=&#039;diff-marker&#039;&gt; &lt;/td&gt;&lt;td style=&quot;background-color: #f8f9fa; color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #eaecf0; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;https://arxiv.org/pdf/1606.03657.pdf&lt;/div&gt;&lt;/td&gt;&lt;/tr&gt;
&lt;tr&gt;&lt;td class=&#039;diff-marker&#039;&gt;−&lt;/td&gt;&lt;td style=&quot;color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #ffe49c; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;&lt;del style=&quot;font-weight: bold; text-decoration: none;&quot;&gt;&lt;/del&gt;&lt;/div&gt;&lt;/td&gt;&lt;td colspan=&quot;2&quot;&gt; &lt;/td&gt;&lt;/tr&gt;
&lt;tr&gt;&lt;td class=&#039;diff-marker&#039;&gt; &lt;/td&gt;&lt;td style=&quot;background-color: #f8f9fa; color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #eaecf0; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;|Prerequisites=Artificial Intelligence and Learning Systems courses; good knowledge of machine learning and neural networks; python programming skills for implementing machine learning algorithms.&lt;/div&gt;&lt;/td&gt;&lt;td class=&#039;diff-marker&#039;&gt; &lt;/td&gt;&lt;td style=&quot;background-color: #f8f9fa; color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #eaecf0; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;|Prerequisites=Artificial Intelligence and Learning Systems courses; good knowledge of machine learning and neural networks; python programming skills for implementing machine learning algorithms.&lt;/div&gt;&lt;/td&gt;&lt;/tr&gt;
&lt;tr&gt;&lt;td class=&#039;diff-marker&#039;&gt; &lt;/td&gt;&lt;td style=&quot;background-color: #f8f9fa; color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #eaecf0; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;|Supervisor=Sepideh Pashami, Peter Berck&lt;/div&gt;&lt;/td&gt;&lt;td class=&#039;diff-marker&#039;&gt; &lt;/td&gt;&lt;td style=&quot;background-color: #f8f9fa; color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #eaecf0; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;|Supervisor=Sepideh Pashami, Peter Berck&lt;/div&gt;&lt;/td&gt;&lt;/tr&gt;
&lt;tr&gt;&lt;td colspan=&quot;2&quot;&gt; &lt;/td&gt;&lt;td class=&#039;diff-marker&#039;&gt;+&lt;/td&gt;&lt;td style=&quot;color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #a3d3ff; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;&lt;ins style=&quot;font-weight: bold; text-decoration: none;&quot;&gt;|Level=Master&lt;/ins&gt;&lt;/div&gt;&lt;/td&gt;&lt;/tr&gt;
&lt;tr&gt;&lt;td colspan=&quot;2&quot;&gt; &lt;/td&gt;&lt;td class=&#039;diff-marker&#039;&gt;+&lt;/td&gt;&lt;td style=&quot;color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #a3d3ff; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;&lt;ins style=&quot;font-weight: bold; text-decoration: none;&quot;&gt;|Status=Open&lt;/ins&gt;&lt;/div&gt;&lt;/td&gt;&lt;/tr&gt;
&lt;tr&gt;&lt;td class=&#039;diff-marker&#039;&gt; &lt;/td&gt;&lt;td style=&quot;background-color: #f8f9fa; color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #eaecf0; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;}}&lt;/div&gt;&lt;/td&gt;&lt;td class=&#039;diff-marker&#039;&gt; &lt;/td&gt;&lt;td style=&quot;background-color: #f8f9fa; color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #eaecf0; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;}}&lt;/div&gt;&lt;/td&gt;&lt;/tr&gt;
&lt;tr&gt;&lt;td class=&#039;diff-marker&#039;&gt; &lt;/td&gt;&lt;td style=&quot;background-color: #f8f9fa; color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #eaecf0; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;Huge class imbalance can be a challenge for learning tasks. In such cases, different undersampling and oversampling techniques have been usually used to balance the dataset and compensate for the number of samples in minority class. In this thesis we would like to leverage Generative Adversarial Networks (GANs) for addressing the imbalances in data for classification tasks.   &lt;/div&gt;&lt;/td&gt;&lt;td class=&#039;diff-marker&#039;&gt; &lt;/td&gt;&lt;td style=&quot;background-color: #f8f9fa; color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #eaecf0; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;Huge class imbalance can be a challenge for learning tasks. In such cases, different undersampling and oversampling techniques have been usually used to balance the dataset and compensate for the number of samples in minority class. In this thesis we would like to leverage Generative Adversarial Networks (GANs) for addressing the imbalances in data for classification tasks.   &lt;/div&gt;&lt;/td&gt;&lt;/tr&gt;
&lt;tr&gt;&lt;td class=&#039;diff-marker&#039;&gt; &lt;/td&gt;&lt;td style=&quot;background-color: #f8f9fa; color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #eaecf0; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;/td&gt;&lt;td class=&#039;diff-marker&#039;&gt; &lt;/td&gt;&lt;td style=&quot;background-color: #f8f9fa; color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #eaecf0; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;/td&gt;&lt;/tr&gt;
&lt;tr&gt;&lt;td class=&#039;diff-marker&#039;&gt; &lt;/td&gt;&lt;td style=&quot;background-color: #f8f9fa; color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #eaecf0; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;The student expect to perform literature review on GANs specifically different structures such as InfoGAN, Conditional GAN, Auxiliary classifier GANs. They should be able to implement and compare performances of different algorithms using different datasets. The student should be able to compare the results with other undersample and oversampling methods, e.g. SMOTE. Modification of standard approaches for classification task is encouraged. Finally, students should reflect on potential failures and limitations of the methods.&lt;/div&gt;&lt;/td&gt;&lt;td class=&#039;diff-marker&#039;&gt; &lt;/td&gt;&lt;td style=&quot;background-color: #f8f9fa; color: #202122; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #eaecf0; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;The student expect to perform literature review on GANs specifically different structures such as InfoGAN, Conditional GAN, Auxiliary classifier GANs. They should be able to implement and compare performances of different algorithms using different datasets. The student should be able to compare the results with other undersample and oversampling methods, e.g. SMOTE. Modification of standard approaches for classification task is encouraged. Finally, students should reflect on potential failures and limitations of the methods.&lt;/div&gt;&lt;/td&gt;&lt;/tr&gt;
&lt;/table&gt;</summary>
		<author><name>Peter</name></author>
	</entry>
	<entry>
		<id>https://mw.hh.se/caisr/index.php?title=Resolving_Class_Imbalance_using_Generative_Adversarial_Networks&amp;diff=4008&amp;oldid=prev</id>
		<title>Peter: Created page with &quot;{{StudentProjectTemplate |Summary=Resolving Class Imbalance using Generative Adversarial Networks |Keywords=GAN, neural networks, deep learning |TimeFrame=Winter 2018, Spring ...&quot;</title>
		<link rel="alternate" type="text/html" href="https://mw.hh.se/caisr/index.php?title=Resolving_Class_Imbalance_using_Generative_Adversarial_Networks&amp;diff=4008&amp;oldid=prev"/>
		<updated>2018-10-10T14:54:26Z</updated>

		<summary type="html">&lt;p&gt;Created page with &amp;quot;{{StudentProjectTemplate |Summary=Resolving Class Imbalance using Generative Adversarial Networks |Keywords=GAN, neural networks, deep learning |TimeFrame=Winter 2018, Spring ...&amp;quot;&lt;/p&gt;
&lt;p&gt;&lt;b&gt;New page&lt;/b&gt;&lt;/p&gt;&lt;div&gt;{{StudentProjectTemplate&lt;br /&gt;
|Summary=Resolving Class Imbalance using Generative Adversarial Networks&lt;br /&gt;
|Keywords=GAN, neural networks, deep learning&lt;br /&gt;
|TimeFrame=Winter 2018, Spring 2019&lt;br /&gt;
|References=NIPS 2016 Tutorial on GANs&lt;br /&gt;
https://arxiv.org/pdf/1701.00160.pdf&lt;br /&gt;
&lt;br /&gt;
Effective data generation for imbalanced learning using Conditional Generative Adversarial Networks&lt;br /&gt;
https://www.researchgate.net/publication/319672232_Effective_data_generation_for_imbalanced_learning_using_Conditional_Generative_Adversarial_Networks&lt;br /&gt;
&lt;br /&gt;
BAGAN: Data Augmentation with Balancing GAN&lt;br /&gt;
https://arxiv.org/abs/1803.09655&lt;br /&gt;
&lt;br /&gt;
InfoGAN: Interpretable Representation Learning by Information Maximizing Generative Adversarial Nets&lt;br /&gt;
https://arxiv.org/pdf/1606.03657.pdf&lt;br /&gt;
&lt;br /&gt;
|Prerequisites=Artificial Intelligence and Learning Systems courses; good knowledge of machine learning and neural networks; python programming skills for implementing machine learning algorithms.&lt;br /&gt;
|Supervisor=Sepideh Pashami, Peter Berck&lt;br /&gt;
}}&lt;br /&gt;
Huge class imbalance can be a challenge for learning tasks. In such cases, different undersampling and oversampling techniques have been usually used to balance the dataset and compensate for the number of samples in minority class. In this thesis we would like to leverage Generative Adversarial Networks (GANs) for addressing the imbalances in data for classification tasks.  &lt;br /&gt;
&lt;br /&gt;
The student expect to perform literature review on GANs specifically different structures such as InfoGAN, Conditional GAN, Auxiliary classifier GANs. They should be able to implement and compare performances of different algorithms using different datasets. The student should be able to compare the results with other undersample and oversampling methods, e.g. SMOTE. Modification of standard approaches for classification task is encouraged. Finally, students should reflect on potential failures and limitations of the methods.&lt;/div&gt;</summary>
		<author><name>Peter</name></author>
	</entry>
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