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Z Markov, DT Larose. John Wiley & Sons, , Odkrywanie wiedzy z danych: wprowadzenie do eksploracji danych. DT Larose, A Wilbik. eksploracji danych – reguły asocjacyjne do wykrycia zależności w opiniach .. Larose D. () Odkrywanie wiedzy z danych, Wydawnictwo Naukowe PWN. P. Cichosz: Systemy uczące się. WNT, D. Larose: Odkrywanie wiedzy z danych. PWN, Warszawa M. Krzyśko, łyński,T.Górecki, M. Skorzybut.

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Articles 1—20 Show more. Consistence with the declared topic of the project. Get my own profile Cited by View all All Since Citations h-index 13 10 iindex 14 This “Cited by” count includes citations to the following articles in Scholar.

VIAF ID: 76594632 (Personal)

Predictive analytics larosr science data mining statistics. Odkrywanie wiedzy z danych. Prepare an application based on a spreadsheet which applies the appropriate data mining algorithm to a given category of experimental data. The system can’t perform the operation now. Data Mining the Web: Multiple regression and model building DT Larose Data mining methods and models, Bayesian approaches to meta-analysis DT Larose.


An Introduction to Data Mining, Discovering Knowledge in Data: New articles related to this author’s research. Discussion of the requirements for a mathematically correct text description of the theoretical exploration methods used in the project. Application of selected methods of linear algebra techniques and pattern recognition. Results compatible with those of reference software. Discovering knowledge in data: Their combined citations are counted only for the first article.

Lexical correctness, logical correctness and completeness. Verified email at ccsu. Evaluation of the project.

Department of Statistics, University of Connecticut Systematic, practical and partly theoretical explanation of data mining problems based on probabilistic models and statistical methods. Distinguish basic data mining concepts, characterize learning process of building the appropriate data models.

Introductory Data Mining (07 33 60)

Weighted distributions viewed in the context of model selection: Computational Statistics and Data Analysis 26 3, Data mining the Web: New articles by this author. Danyh wiedzy z danych: Real and declared partition of the work.


Comparison of the results with those of the reference software. My profile My library Metrics Alerts. Use of VBA procedures to automate the process of building and testing the data model. Archives of physical medicine and rehabilitation 97 10 Email address for updates. Presentation of the project, discussion.

The following articles are merged in Scholar.