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File: Data Preprocessing In Data Mining Pdf 181062 | Data Mining 1
code no 3232 faculty of engineering b e iv iv year cse ii semester main examination may june 2011 data mining time 3 hours max marks 75 answer all questions ...

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                                                                                                     Code No.: 3232
                                            FACULTY OF ENGINEERING
             B.E. IV/IV Year (CSE) II Semester                (Main) Examination,          May/June,       2011
                                                      DATA MINING
       Time:    3 Hours]                                                                           [Max. Marks:      75
                                          Answer all questions from Part A.
                                      Answer any five questions from Part B.
                                                  Part A - (Marks: 25)
       1.   Explain    the need for preprocessing          the data.                                                   2
       2.   Differentiate    between     ROLAP and OLAP.                                                               3
       3.   What is meant by DMQL?                                                                                     2
       4.   Define attribute      generalization.                                                                      3
       5.   What is meant       by correlation      analysis?                                                          2
       6.   Define (a) Itemset,      (b) Frequent      Itemset     (c) Candidate      Set.                             3
       7.   Differentiate    between     classification    and prediction.                                             2
       8.   How is classifier      accuracy    measured?                                                               3
       9.   Define clustering      with an example.                                                                    3
        10. What is meant       by Multimedia       mining?                                                            2
                                                  Part B - (Marks: 50)
       11. (a) Discuss       about   3-tier  architecture     of data warehouse.                                       5
            (b) Explain     about    Data Mining Functionalities.                                                      5
       12. Explain     the need to perform        Attribute    Relevance     Analysis.    Discuss    briefly the      10
            various    methods     of Attribute    Relevance     Analysis.
       13. Explain     Apriori   algorithm     with a suitable     example.                                           10
       14. Explain     the classification     process    by Decision      Tree with an example.                       10
       15. (a) Given two objects          (22,1,42,10)     and (20,0,36,8).     Computer       Euclidean      distance
                 and Minkowski        distance     (with p=3) between       2 objects.                                10
            (b) Explain     the K - Means clustering          algorithm     with an example.                          10
                                                                                                                 [p.T.G.
                                                     2                                         3232
       16. Write short  notes  on :                                                               10
           (a) Data Reduction    technique.
           (b) Multilevel  association  Rules Mining.
       17. Write short  notes  on any two:                                                        10
           (a) Mining text databases
           (b) Data Cleaning
           (c) DMQL Syntax for DM primitive "Kind of Knowledge to be mined".
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...Code no faculty of engineering b e iv year cse ii semester main examination may june data mining time hours max marks answer all questions from part a any five explain the need for preprocessing differentiate between rolap and olap what is meant by dmql define attribute generalization correlation analysis itemset frequent c candidate set classification prediction how classifier accuracy measured clustering with an example multimedia discuss about tier architecture warehouse functionalities to perform relevance briefly various methods apriori algorithm suitable process decision tree given two objects computer euclidean distance minkowski p k means t g write short notes on reduction technique multilevel association rules text databases cleaning syntax dm primitive kind knowledge be mined...

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