add roc infos
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		@@ -1,6 +1,7 @@
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\section{Experimental Results}
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\subsection{Does Active-Learning benefit the learning process?}
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\subsection{test}
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With the test setup described in~\ref{sec:implementation} a test series was performed.
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\begin{figure}
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    \centering
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@@ -14,8 +15,6 @@
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    \caption{Architecture convolutional neural network}
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\end{figure}
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\subsection{test2}
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\begin{figure}
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    \centering
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    \includegraphics[width=\linewidth]{../rsc/AUC_normal_lowcer_2_10}
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@@ -28,4 +27,7 @@
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    \caption{Architecture convolutional neural network3}
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\end{figure}
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Test
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\subsection{Is Dagster and Label-Studio a proper tooling to build an AL
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Loop?}
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\subsection{Does balancing the learning samples improve performance?}
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@@ -27,6 +27,22 @@ Some of the labels are known, but for most of the data we have only the raw data
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The basic idea is that the unlabeled data can significantly improve the model performance when used in combination with the labeled data.
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\subsubsection{ROC and AUC}
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A receiver operating characteristic curve can be used to measure the performance of a classifier of a binary classification task.
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When using the accuracy as the performance metric it doesn't reveal much about the balance of the predictions.
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There might be many true-positives and rarely any true-negatives and the accuracy is still good.
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The ROC curve helps with this problem and visualizes the true-positives and false-positives on a line plot.
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The more the curve ascents the upper-left or bottom-right corner the better the classifier gets.
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\begin{figure}
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    \centering
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    \includegraphics[width=\linewidth]{../rsc/Roc_curve.svg}
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    \caption{Architecture convolutional neural network. Image by \href{https://cointelegraph.com/explained/what-are-convolutional-neural-networks}{SKY ENGINE AI}}
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    \label{fig:roc-example}
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\end{figure}
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Furthermore, the area under this curve is called AUR curve and a useful metric to measure the performance of a binary classifier.
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\subsubsection{RESNet}
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\subsubsection{CNN}
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Convolutional neural networks are especially good model architectures for processing images, speech and audio signals.
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