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 | Data
  mining labs.
  Spring 2009. | 
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| Presentations, sample data sources and python implementations of various data mining algorithms which were prepared and used for data mining tutorials in data mining course. Lab 1. Decision trees. Presentation: Lab1_decisiontree.pdf Sample data sets: data.zip Code starters: code.zip Solutions: solutions.zip Lab 2. Using map-reduce framework to compute Attribute-Value-Class sets for decision trees on massive data. Presentation: Lab2AVCSetsClusterPython.pdf Sample data sets: data.zip Code starters: code.zip Solutions: solutions.zip Lab 3. Classifiers tutorial: decision trees, association rules and naïve Bayes. Classifiers with WEKA. Presentations: Lab3_assrulesexample.pdf, Lab3_decisiontreeexample.pdf, Lab3_naivebayesxample.pdf, Lab3_classifiersWithWEKA.pdf Sample data sets: data.zip Lab 4. Bayesian
  networks.Presentation: Lab4_Bayesiannetworks.pdf Sample data set: weather.nominal.arff Lab5. ROC curves
  with WEKA.Presentation: Lab5_ROC_weka.pdf Sample data set (zipped): adult_income.zip, conversionsofeducation.txt Lab 6.
  Optimizations with genetic algorithm.Presentation: Lab6_genetic_algorithm.pdf Sample data (to download): schedule.txt Code starters: code.zip Solutions: solutions.zip Lab 7. Frequent
  itemsets tutorial: apriori and FP-trees.Presentations: Lab7_apriori.pdf, Lab7_fpree.pdf Sample data sets: data.zip Code starters (includes fimi06b): code.zip Solutions: solutions.zip Lab 8. Clustering tutorial. Presentation: Lab8_distances_clustering.pdf Sample data sets: data.zip Code for demonstration: code.zip Lab 9. WEB
  ranking tutorial: link analysis and LSAPresentation: Lab9_rankingWEB.pdf Code for
  demonstration: PageRankCode | |
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