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      <div class="TdmEntry">Overall Objectives<ul><li><a href="./uid3.html">Context</a></li><li class="tdmActPage"><a href="./uid4.html">Goals</a></li></ul></div>
      <div class="TdmEntry">Research Program<ul><li><a href="uid6.html&#10;&#9;&#9;  ">Research axis 1: Unsupervised learning</a></li><li><a href="uid7.html&#10;&#9;&#9;  ">Research axis 2: Performance assessment</a></li><li><a href="uid8.html&#10;&#9;&#9;  ">Research axis 3: Functional data</a></li><li><a href="uid9.html&#10;&#9;&#9;  ">Research axis 4: Applications motivating research</a></li></ul></div>
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      <div class="TdmEntry">New Results<ul><li><a href="uid62.html&#10;&#9;&#9;  ">Axis 1: Data Units Selection in Statistics</a></li><li><a href="uid63.html&#10;&#9;&#9;  ">Axis 1: Model-Based Co-clustering for Ordinal Data</a></li><li><a href="uid64.html&#10;&#9;&#9;  ">Axis 1: Model-Based Co-clustering for Ordinal Data of different dimensions</a></li><li><a href="uid65.html&#10;&#9;&#9;  ">Axis 1: Model-based co-clustering for mixed type data</a></li><li><a href="uid66.html&#10;&#9;&#9;  ">Axis 1: Model-Based Co-clustering with Co-variables</a></li><li><a href="uid67.html&#10;&#9;&#9;  ">Axis 1: Relaxing the Identically Distributed Assumption in Gaussian Co-Clustering for High Dimensional Data</a></li><li><a href="uid68.html&#10;&#9;&#9;  ">Axis 1: Gaussian-based visualization of Gaussian and non-Gaussian model-based clustering</a></li><li><a href="uid69.html&#10;&#9;&#9;  ">Axis 1: A targeted multi-partitions clustering</a></li><li><a href="uid70.html&#10;&#9;&#9;  ">Axis 1: Co-clustering: A versatile way to perform clustering in high dimension</a></li><li><a href="uid71.html&#10;&#9;&#9;  ">Axis 1: Dealing with missing data in model-based clustering through a MNAR model</a></li><li><a href="uid72.html&#10;&#9;&#9;  ">Axis 1: Self Organizing Coclustering for textual data synthesis</a></li><li><a href="uid73.html&#10;&#9;&#9;  ">Axis 1: Linking canonical and spectral clustering</a></li><li><a href="uid74.html&#10;&#9;&#9;  ">Axis 1: Multiple partition clustering</a></li><li><a href="uid75.html&#10;&#9;&#9;  ">Axis 2: Change-point detection by means of reproducing kernels</a></li><li><a href="uid76.html&#10;&#9;&#9;  ">Axis 2: New efficient algorithms for multiple change-point detection with kernels</a></li><li><a href="uid77.html&#10;&#9;&#9;  ">Axis 2: Multi-Layer Group-Lasso</a></li><li><a href="uid78.html&#10;&#9;&#9;  ">Axis 2: Pseudo-Bayesian Learning with Kernel Fourier Transform as Prior</a></li><li><a href="uid79.html&#10;&#9;&#9;  ">Axis 2: Decentralized learning with budgeted network load using Gaussian copulas and classifier ensembles</a></li><li><a href="uid80.html&#10;&#9;&#9;  ">Axis 2: Sequential Learning of Principal Curves: Summarizing Data Streams on the Fly</a></li><li><a href="uid81.html&#10;&#9;&#9;  ">Axis 2: A Quasi-Bayesian Perspective to Online Clustering</a></li><li><a href="uid82.html&#10;&#9;&#9;  ">Axis 2: Pycobra: A Python Toolbox for Ensemble Learning and Visualisation</a></li><li><a href="uid83.html&#10;&#9;&#9;  ">Axis 2: Simpler PAC-Bayesian bounds for hostile data</a></li><li><a href="uid84.html&#10;&#9;&#9;  ">Axis 2: PAC-Bayesian high dimensional bipartite ranking</a></li><li><a href="uid85.html&#10;&#9;&#9;  ">Axis 2: Multiview Boosting by Controlling the Diversity and the Accuracy of View-specific Voters </a></li><li><a href="uid86.html&#10;&#9;&#9;  ">Axis 3: Clustering spatial functional data</a></li><li><a href="uid87.html&#10;&#9;&#9;  ">Axis 3: Categorical functional data analysis</a></li><li><a href="uid88.html&#10;&#9;&#9;  ">Axis 4: Real-time Audio Sources Classification</a></li><li><a href="uid89.html&#10;&#9;&#9;  ">Axis 4: Matching of descriptors evolving over time</a></li><li><a href="uid90.html&#10;&#9;&#9;  ">Axis 4: Supervised multivariate discretization and levels merging for logistic regression</a></li><li><a href="uid91.html&#10;&#9;&#9;  ">Axis 4: MASSICCC Platform for SaaS Software Availability</a></li><li><a href="uid92.html&#10;&#9;&#9;  ">Axis 4: ClinMine: Optimizing the Management of Patients in Hospital</a></li><li><a href="uid93.html&#10;&#9;&#9;  ">Projection Under Pairwise Control</a></li></ul></div>
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	    Raweb 
	    2018</a> | <a href="http://www.inria.fr/en/teams/modal">Presentation of the Project-Team MODAL</a></small>
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        <h2>Section: 
      Overall Objectives</h2>
        <h3 class="titre3">Goals</h3>
        <p>Modal is a project-team working on today's complex data sets (mixed data, missing data, high-dimensional data), for classical statistical targets (unsupervised learning, supervised learning, regression, ...) with approaches relying on the probabilistic framework. This latter can be tackled through both model-based methods (as mixture models for a generic tool) and model-free methods (as probabilistic bounds on empirical quantities). Furthermore, Modal is connected to the real world by applications, typically with biological ones (some members have this skill) but many other ones are also considered since the application coverage of the Modal methodology is very large. It is also important to note that, in return, applications are often real opportunities for initiating academic questioning for the statistician (case of the Bilille platform and some bilateral contracts of the team).</p>
        <p>From the academic communities point of view, Modal can be seen as belonging simultaneously to both the statistical learning and machine learning ones, as attested by its publications. Somewhere it is the opportunity to make a bridge between these two stochastic communities around a common but large probabilistic framework.</p>
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