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Selected Papers on Interestingness Measures, Knowledge Discovery and Outlier Mining

S. Abe  and  T.  Inoue.   Fuzzy  support   vector  machines  for multiclass  problems.In ESANN     2002  Proceedings,    pages  113-118,  2002. R.  Agrawal,  T.  Imielinski,   and  A.  Swami.   Mining  association   rules  between sets  of items  in  large  databases.     In  Proceedings    of  the   1993 ACM   SIGMOD Conference, 1993. A.  Alink,  C.  M.  Schwiedrzik,   A.  Kohler,  W.  Singer,  and  L.…

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On Bayesian Sensitivity Analysis in Digital Forensics

The idea of using of Bayesian Belief Networks in digital forensics to quantify the evidence has been around for a while now. To provide qualitative approaches to Bayesian evidential reasoning in the digital Meta-Forensics is however relatively new in the decision support systems research. For law enforcement, decision support and application of data mining techniques to “soft” forensic evidence is…

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pgm.HelloWorld() with Wainwright & Jordan

I have recently came across Wainwright & Jordan's paper on exponential families, graphical models, and variational inference and found it to be quite comprehensive and unifying introduction of the topic. Probabilistic graphical models use a graph-based representation as the basis for compactly encoding a complex distribution over a high-dimensional space. If you are familiar with Koller and Friedman's work on…

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Selected Papers in Machine Learning

The Discipline of Machine Learning by Tom Mitchell Introduction to Support Vector Machines - Dustin Boswell Fast Training of Support Vector Machines using Sequential Minimal Optimization Introduction to linear regression The elements of statistical learning (book) Survey of Clustering Algorithms Supervised Machine Learning: A Review of Classification Techniques Ensemble Methods in Machine Learning The Boosting Approach to…

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Customizing Conditional Probability using Code Generation with SamIam

Even though every machine learning practitioner and researcher would like to modify and tweak both the algorithm and parameters, there are limited options for automated code generation in the machine learning world. SamIam by Automated Reasoning Group, UCLA is the tool designed for “Sensitivity Analysis, Modeling, Inference and more”. Currently the sensitivity, MAP, MPE and EM Learning…

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