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<title>Public marks with tag &quot;bayesian networks&quot;</title>
<description>Public marks with tag &quot;bayesian networks&quot;</description>
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<item rdf:about="http://blogmarks.net/api/user/ogrisel/mark/1057386296">
<title>ICML 2007 - PRELIMINARY VIDEOS FROM THE SPOT</title>
<link>http://videolectures.net/icml07_corvallis/</link>
<description>The 24th Annual International Conference on Machine Learning is being held in conjunction with the 2007 International Conference on Inductive Logic Programming at Oregon State University in Corvallis, Oregon. As a broad subfield of artificial intelligence, machine learning is concerned with the design and development of algorithms and techniques that allow computers to &quot;learn&quot;. At a general level, there are two types of learning: inductive, and deductive.</description>
<dc:date>2007-08-06T08:42:23Z</dc:date>
<dc:author>ogrisel</dc:author>
<dc:subject>programming, conference, video, ai, machine learning, bayesian networks</dc:subject>
<content:encoded><![CDATA[<div class="mark">
<a href="http://videolectures.net/icml07_corvallis/"><img border="0" src="http://blogmarks.net/screenshots/2007/08/06/df3ce53f32c2a1bf95c1399317050d68.png" alt="" /></a>
<div class="xfolkentry">
<h4><a class="taggedlink" href="http://videolectures.net/icml07_corvallis/">ICML 2007 - PRELIMINARY VIDEOS FROM THE SPOT</a></h4>
 
by <a href="http://blogmarks.net/user/ogrisel">ogrisel</a> 
<p class="description">The 24th Annual International Conference on Machine Learning is being held in conjunction with the 2007 International Conference on Inductive Logic Programming at Oregon State University in Corvallis, Oregon. As a broad subfield of artificial intelligence, machine learning is concerned with the design and development of algorithms and techniques that allow computers to "learn". At a general level, there are two types of learning: inductive, and deductive.</p>
<p class="tags">
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/programming">programming</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/conference">conference</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/video">video</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/ai">ai</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/machine%2Blearning">machine learning</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/bayesian%2Bnetworks">bayesian networks</a>
</p>
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</item> <item rdf:about="http://blogmarks.net/api/user/ogrisel/mark/1057346293">
<title>Elefant - What is Elefant</title>
<link>https://elefant.developer.nicta.com.au/about</link>
<description>Elefant (Efficient Learning, Large-scale Inference, and Optimisation Toolkit) is an open source library for machine learning

Elefant include modules for many common optimisation problems arising in machine learning and inference. It is designed to be modular and easy to use. Framework provides easy to use python interface, which can be use for quick prototyping and testing inference algorithms.</description>
<dc:date>2007-07-16T16:57:09Z</dc:date>
<dc:author>ogrisel</dc:author>
<dc:subject>python, inference, ai, machine learning, svm, bayesian networks, open source, SciPy, numpy</dc:subject>
<content:encoded><![CDATA[<div class="mark">
<a href="https://elefant.developer.nicta.com.au/about"><img border="0" src="http://blogmarks.net/screenshots/404.php" alt="" /></a>
<div class="xfolkentry">
<h4><a class="taggedlink" href="https://elefant.developer.nicta.com.au/about">Elefant - What is Elefant</a></h4>
 
by <a href="http://blogmarks.net/user/ogrisel">ogrisel</a> 
<p class="description">Elefant (Efficient Learning, Large-scale Inference, and Optimisation Toolkit) is an open source library for machine learning

Elefant include modules for many common optimisation problems arising in machine learning and inference. It is designed to be modular and easy to use. Framework provides easy to use python interface, which can be use for quick prototyping and testing inference algorithms.</p>
<p class="tags">
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/python">python</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/inference">inference</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/ai">ai</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/machine%2Blearning">machine learning</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/svm">svm</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/bayesian%2Bnetworks">bayesian networks</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/open%2Bsource">open source</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/SciPy">SciPy</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/numpy">numpy</a>
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</item> <item rdf:about="http://blogmarks.net/api/user/ogrisel/mark/2285819">
<title>IBM Research | IBM Haifa Labs| Machine learning for healthcare (EuResist)</title>
<link>http://www.haifa.il.ibm.com/projects/verification/ml_euresist/technique.html</link>
<description>Generative-discriminative Hybrid Technique

We plan to use a technique that combines two kinds of learning algorithms: discriminative and generative. We plan to employ Bayesian networks in the generative phase, and SVM in the discriminative phase.

Algorithms under the generative framework try to find a statistical model that best represents the data. The predictions are then based on the likelihood scores derived from the model. This category includes algorithms such as Hidden Markov Models (HMM) [1], Gaussian Mixture Models (GMM) [2] and more complicated graphical models such as Bayesian networks [3].
</description>
<dc:date>2007-03-16T08:53:41Z</dc:date>
<dc:author>ogrisel</dc:author>
<dc:subject>svm, bayesian networks, discrimitive, generative, machine learning</dc:subject>
<content:encoded><![CDATA[<div class="mark">
<a href="http://www.haifa.il.ibm.com/projects/verification/ml_euresist/technique.html"><img border="0" src="http://blogmarks.net/screenshots/2007/03/16/4639ff7f44539a069568094b42d0925d.png" alt="" /></a>
<div class="xfolkentry">
<h4><a class="taggedlink" href="http://www.haifa.il.ibm.com/projects/verification/ml_euresist/technique.html">IBM Research | IBM Haifa Labs| Machine learning for healthcare (EuResist)</a></h4>
 
by <a href="http://blogmarks.net/user/ogrisel">ogrisel</a> 
<p class="description">Generative-discriminative Hybrid Technique

We plan to use a technique that combines two kinds of learning algorithms: discriminative and generative. We plan to employ Bayesian networks in the generative phase, and SVM in the discriminative phase.

Algorithms under the generative framework try to find a statistical model that best represents the data. The predictions are then based on the likelihood scores derived from the model. This category includes algorithms such as Hidden Markov Models (HMM) [1], Gaussian Mixture Models (GMM) [2] and more complicated graphical models such as Bayesian networks [3].
</p>
<p class="tags">
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/svm">svm</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/bayesian%2Bnetworks">bayesian networks</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/discrimitive">discrimitive</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/generative">generative</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/machine%2Blearning">machine learning</a>
</p>
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</item> <item rdf:about="http://blogmarks.net/api/user/hyperfp/mark/96972">
<title>UMBC eBiquity Project: Bayes OWL</title>
<link>http://ebiquity.umbc.edu/project/html/id/59/</link>
<description></description>
<dc:date>2005-06-21T16:06:26Z</dc:date>
<dc:author>hyperfp</dc:author>
<dc:subject>owl, bayesian networks</dc:subject>
<content:encoded><![CDATA[<div class="mark">
<a href="http://ebiquity.umbc.edu/project/html/id/59/"><img border="0" src="http://www.blogmarks.net/screenshots/2005/06/21/7a31618f3f1fc0bd6045a3a6ba53013c.png" alt="" /></a>
<div class="xfolkentry">
<h4><a class="taggedlink" href="http://ebiquity.umbc.edu/project/html/id/59/">UMBC eBiquity Project: Bayes OWL</a></h4>
 
by <a href="http://blogmarks.net/user/hyperfp">hyperfp</a> 
<p class="tags">
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/owl">owl</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/bayesian%2Bnetworks">bayesian networks</a>
</p>
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</item> <item rdf:about="http://blogmarks.net/api/user/hyperfp/mark/84035">
<title>UMBC eBiquity Publication: A Bayesian Methodology towards Automatic Ontology Mapping</title>
<link>http://ebiquity.umbc.edu/v2.1/paper/html/id/235/</link>
<description></description>
<dc:date>2005-06-02T16:03:50Z</dc:date>
<dc:author>hyperfp</dc:author>
<dc:subject>owl, ontologies, bayesian networks</dc:subject>
<content:encoded><![CDATA[<div class="mark">
<a href="http://ebiquity.umbc.edu/v2.1/paper/html/id/235/"><img border="0" src="http://www.blogmarks.net/screenshots/2005/06/02/c0cb6127fb5543c598d96a6117be6864.png" alt="" /></a>
<div class="xfolkentry">
<h4><a class="taggedlink" href="http://ebiquity.umbc.edu/v2.1/paper/html/id/235/">UMBC eBiquity Publication: A Bayesian Methodology towards Automatic Ontology Mapping</a></h4>
 
by <a href="http://blogmarks.net/user/hyperfp">hyperfp</a> 
<p class="tags">
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/owl">owl</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/ontologies">ontologies</a>
<a rel="tag" class="tag public_tag" href="http://blogmarks.net/marks/tag/bayesian%2Bnetworks">bayesian networks</a>
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