Handouts\\ ***General\\ {{:activereading.pdf|active reading}}\\ {{:paperwriting.pdf|paper writing}}\\ {{:representational_typology1.pdf|representational typology}}\\ {{:machinelearning.pdf|introduction to machine learning concepts}}\\ {{:heuristics.pdf|heuristics}}\\ {{:logic.pdf|logic}}\\ {{:data_mining_tasks.pdf|data mining tasks}}\\ {{:rough-set-intro.pdf|rough sets introduction}}\\ \\ *****Early data mining - the DBLEARN family**\\ {{:b14435287.pdf|Yandong Cai's thesis - DBLEARN}}\\ {{:j.1467-8640.1991.tb00387.x.pdf|Learning in relational databases: an attribute-oriented approach}}\\ {{:vldb92.pdf|Knowledge Discovery in Databases: An Attribute-Oriented Approach}}\\ {{:9404.pdf|The Software Architecture of DBLEARN}}\\ {{:9405.pdf|Performance Improvement in the Implementation of DBLEARN}}\\ {{:b14264018.pdf|Tony Hu's MSc thesis - Conceptual Clustering}}\\ {{:huphd.pdf|Tony Hu's PhD thesis - DBROUGH}}\\ {{:j.1467-8640.1995.tb00035.x.pdf|Learning in Relational Databases: a Rough Set Approach}}\\ {{:9902.pdf|A Tutorial Guide to DBDISCOVER}}\\ {{:00632290.pdf|Data Visualization in the DB-Discover System}}\\ {{:9606.pdf|RIAC: A Rule Induction Algorithm Based on Approximate Classification}}\\ {{:9506.pdf|Performance Evaluation of Attribute-Oriented Algorithms for Knowledge Discovery from Databases: Extended Report}}\\ {{:dbrough.pdf|DBROUGH: A Rough Set Based Knowledge Discovery System}}\\ {{:00492093.pdf|Mining Knowledge Rules flom Databases: A Rough Set Approach}}\\ {{:rough_sets_similarity_based_learning_from_databases.pdf|Rough Sets Similarity-Based Learning from Databases}}\\ \\ *****Some stuff on rough sets**\\ {{:rough-set-intro.pdf|Very Gentle Introduction to Rough Sets}}\\ {{:dealing_with_noisy_data_in_the_rough_set_method.pdf|Noisy Data in Rough Sets}}\\ {{:komorowski98_rough_sets_tutorial.pdf|Rough Sets: A Tutorial - Komorowski et al.}}\\ {{:pawlak_skowron_bull_irss.pdf|Rough Set Rudiments - Pawlak et a.}}\\ {{:rough_sets_theory.pdf|Tutorial Rough sets theory - Walczak et al.}}\\ {{:zpawlak.pdf|Rough Sets -Pawlak}}\\ {{:zsuraj_tutorial_on_rough_stes.pdf|An Introduction to Rough Set Theory and Its Applications: A tutorial - Suraj}}\\ \\ *****Some stuff on ELEM2**\\ {{:papercai-98-fn.pdf|ELEM2: A Learning System for More Accurate Classifications}}\\ {{:0046352955212ded29000000.pdf|Discretization of Continuous Attributes for Learning Classi cation Rules}}\\ {{:ci01.pdf|Rule Quality Measures Improve the Accuracy of Rule Induction}}\\ {{:elem2_user_manual_v3.pdf|ELEM2 Rule Induction System Manual}}\\ {{:tkde99.pdf|Rule-Induction and Case-Based Reasoning}}\\ {{:01046978.pdf|From Computational Intelligence to Web Intelligence}}\\ \\ *****What every computer scientist should know**\\ {{:basic_neural_networks.pdf|A Basic Introduction to Neural Networks}}\\ {{:basic_ngenetic_algorithm.pdf|Tutorial- Basic Genetic Algorithm in plain English}}\\ {{:bp_neural_networks.pdf|When to use (not use) neural networks}}\\ {{:greedy_algorithm.pdf|Greedy algorithm}}\\ {{:simulated_annealing.pdf|Simulated annealing}}\\ {{:hill_climbinbg.pdf|Hill climbing}}\\ {{:tabu_search.pdf|Tabu search}}\\ {{:beam_search.pdf|Beam search}}\\ {{:np.pdf|np}}\\ {{:decision_trees.pdf|decision trees}}\\ {{:gradient_descent_-_wikipedia_the_free_encyclopedia.pdf|gradient decent}}\\ \\ \\ *******EM Algorithm****\\ {{:em.pdf|Tutorial on the EM Algorithm and its Application}}\\ {{:what_is_the_em.pdf|What is the EM Algorithm}}\\ {{:em-talk.pdf|EM Talk}}\\ {{:emalgorithm.pdf|EM Algorithm slides}}\\ {{:gregory_nuel_lecture2.pdf|Expectation-Maximization and Hidden Markov Models}}\\ {{:1-s2.0-s089812210800103x-main.pdf|Applying the extended mass-constraint EM algorithm to image retrieval}}\\ \\ \\ *******Recommender Systems****\\ {{:intro-rec-sys-handbook.pdf|Introduction to Recommender Systems}}\\ {{:facebook_pandora_lead_rise_of_recommendation_engines_--_printout_--_time.pdf|How Computers Know What We Want — Before We Do}}\\ {{:recommender-systems-eml2010.pdf|Recommender Systems}}\\ {{:01423975.pdf|Next Generation Recommender Systems}}\\ {{:p5-l_herlocker.pdf|Evaluating Collaborative Filtering Recommender Systems}}\\ {{:research_paper_recommender_system_evaluation--a_quantitative_literature_survey.pdf|Evaluation of Recommender Systems}}\\ {{:hybridwebrecommendersystems.pdf|Hybrid Recommender Systems}}\\ \\ \\ *******Spatial Data Mining Systems****\\ {{:ecse408.pdf|Introduction to Spatial Databases}}\\ {{:chapter_10.pdf|Mining Object, Spatial, Multimedia, Text, and Web Data}}\\ {{:soutlier.pdf|A Unified Approach to Spatial Outliers Detection}}\\ {{:coloc.pdf|Discovering Spatial Co-location Patterns}}\\ {{:slide.dvi_-_giscience.pdf|Spatial Data Mining - Accomplishments}}\\ \\ \\ *******Miscellaneous****\\ {{:glossary.pdf|data mining glossary}}\\ {{:decision_trees.pdf|decision trees}}\\ {{:a_detailed_introduction_to_k-nearest_neighbor_knn_algorithm_god_your_book_is_great_.pdf|K NN algorithm}}\\ {{:bag-of-words.pdf|Bag-of-words representation}}\\ {{:aaac.pdf|Common n-gram classification}}\\ {{:10algorithms-08.pdf|Top 10 algorithms in data mining}}\\