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\maketitle
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					\maketitle
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\section{Introduction}
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					\section{Introduction}
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ACM's consolidated article template, introduced in 2017, provides a
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					For most supervised learning tasks are lots of training samples essential.
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consistent \LaTeX\ style for use across ACM publications, and
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					with too less training data the model will gerneralize not well and not fit a real world task.
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incorporates accessibility and metadata-extraction functionality
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					Labeling datasets is in commonly seen as an expensive task and wants to be avoided as much as possible.
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necessary for future Digital Library endeavors. Numerous ACM and
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					Thats why there is a machine-learning field called Semi-Supervised learning.
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SIG-specific \LaTeX\ templates have been examined, and their unique
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					The general approach is to train a model that predicts Pseudo-Labels which then can be used to train the main model.
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features incorporated into this single new template.
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If you are new to publishing with ACM, this document is a valuable
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					\section{Semi-Supervised learning}
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guide to the process of preparing your work for publication. If you
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					todo write stuff
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have published with ACM before, this document provides insight and
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instruction into more recent changes to the article template.
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The ``\verb|acmart|'' document class can be used to prepare articles
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					\section{FixMatch}\label{sec:fixmatch}
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for any ACM publication --- conference or journal, and for any stage
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					There exists an already existing approach called FixMatch.
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of publication, from review to final ``camera-ready'' copy, to the
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					This was introduced in a Google Research paper from 2020~\cite{fixmatch}.
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author's own version, with {\itshape very} few changes to the source.
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					\section{Cross-Model Pseudo-Labeling}
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					todo write stuff \cite{Xu_2022_CVPR}
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\section{Math}\label{sec:math}
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					\section{Math}\label{sec:math}
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\begin{equation}
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					\begin{equation}
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  \label{eq:equation}
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					  \label{eq:equation}
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  \mathcal{L}_u = \frac{1}{B_u} \sum_{i=1}^{B_u} \mathbbm{1}(\max(p_i) \geq \tau) \mathcal{H}(\hat{y}_i,F(\mathcal{T}_{\text{strong}}(u_i)))
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					  \mathcal{L}_u = \frac{1}{B_u} \sum_{i=1}^{B_u} \mathbbm{1}(\max(p_i) \geq \tau) \mathcal{H}(\hat{y}_i,F(\mathcal{T}_{\text{strong}}(u_i)))
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\end{equation}
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					\end{equation}
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As noted in the introduction, the ``\verb|acmart|'' document class can
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be used to prepare many different kinds of documentation --- a
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double-blind initial submission of a full-length technical paper, a
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two-page SIGGRAPH Emerging Technologies abstract, a ``camera-ready''
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journal article, a SIGCHI Extended Abstract, and more --- all by
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selecting the appropriate {\itshape template style} and {\itshape
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  template parameters}.
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This document will explain the major features of the document
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class. For further information, the {\itshape \LaTeX\ User's Guide} is
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available from
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\url{https://www.acm.org/publications/proceedings-template}.
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\section{Figures}
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					\section{Figures}
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\cite{Xu_2022_CVPR}
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\cite{knuthwebsite}
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\begin{figure}[h]
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					\begin{figure}[h]
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  \centering
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					  \centering
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  \includegraphics[width=\linewidth]{../presentation/rsc/results}
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					  \includegraphics[width=\linewidth]{../presentation/rsc/results}
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  \caption{1907 Franklin Model D roadster. Photograph by Harris \&
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					  \caption{Performance comparisons between CMPL, FixMatch and supervised learning only}
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    Ewing, Inc. [Public domain], via Wikimedia
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					  \Description{A woman and a girl in white dresses sit in an open car.}
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    Commons. (\url{https://goo.gl/VLCRBB}).}
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					  \label{fig:results}
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  \Description{A woman and a girl in white dresses sit in an open car.}\label{fig:figure}
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\end{figure}
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					\end{figure}
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%%
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					%%
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@@ -7,7 +7,7 @@
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    pages     = {2959-2968}
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					    pages     = {2959-2968}
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}
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					}
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@online{knuthwebsite,
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					@online{fixmatch,
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    author = "Kihyuk Sohn, David Berthelot, Chun-Liang Li",
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					    author = "Kihyuk Sohn, David Berthelot, Chun-Liang Li",
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    title = "FixMatch: Simplifying Semi-Supervised Learning with Consistency and Confidence",
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					    title = "FixMatch: Simplifying Semi-Supervised Learning with Consistency and Confidence",
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    url  = "https://arxiv.org/abs/2001.07685",
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					    url  = "https://arxiv.org/abs/2001.07685",
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