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Data Analysis Machine Learning and Applications Episode 3 Part 1 pdf

Data Analysis Machine Learning and Applications Episode 3 Part 9 docx

Data Analysis Machine Learning and Applications Episode 3 Part 9 docx

... R., 31 9 Bessler, Wolfgang, 499 Biemann, Chris, 577Borgelt, Christian, 2 29 Bradley, Patrick E., 95 Brunner, Gerd, 237 Brusch, Michael, 431 Burgard, Wolfram, 2 69, 2 93 Burkhardt, Hans, 11, 37 , 237 Calò, ... Wendelin, 2 69 Fernández-Aguirre, K., 1 83 Fessant, F., 34 3Fiedler, Mathias, 2 29 Flodman, Pamela, 1 19 Franke, Markus, 35 5Fried, Roland, 277Gabriel, Thomas R., 31 9 Gallo, Michele, 1 93 Gangi, Francesco, ... 127Herrmann, Lutz, 1 39 Hipp, Jochen, 2 53 Holm, Hans J., 6 29 Hornik, Kurt, 147, 38 9, 5 69 Hoser, Bettina, 35 5Hrycej, Tomas, 405Hudec, Marcus, 5 93 Iglesias-Rozas, José R, 55Irpino, Antonio, 7 03 Joaquin...
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Data Analysis Machine Learning and Applications Episode 2 Part 1 pot

Data Analysis Machine Learning and Applications Episode 2 Part 1 pot

... watermark database.Table 1. Averaged precision and recall at N /2 for the watermark database.Classes 1 2 3 4 5 6 7 8 9 10 11 12 13 14 N 322 11 5 13 9 71 91 44 19 7 12 6 99 33 14 31 17 416 P(N /2) .4 92 .24 3 ... 416 P(N /2) .4 92 .24 3 . 21 4 .14 4 .10 9 .24 4 .17 3 .097 .4 42 .068 .19 0 .8 02 .556 .28 3R(N /2) . 528 .13 9 .3 02 .19 7 .088 .1 82 .1 52 .19 1 .26 3 .0 61 .14 3 . 710 .3 52 .3 61 29 6 Triebel et al. data point p whose ... Situations 27 5 -16 00 -14 00- 12 0 0 -10 00-800-600-400 -20 0 0 5 10 15 20 25 30log likelihoodtime (s)passingaborted passingfollow -20 0 -10 0 0 10 0 20 0 300 400 500 600 4 6 8 10 12 14 16 18 20 ...
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Data Analysis Machine Learning and Applications Episode 2 Part 2 ppsx

Data Analysis Machine Learning and Applications Episode 2 Part 2 ppsx

... 20 01), FSG (Kuramochi and Karypis 20 01),MoSS/MoFa (Borgelt and Berthold 20 02) , gSpan (Yan and Han 20 02) , Closegraph(Yan and Han 20 03), FFSM (Huan et al. 20 03), and Gaston (Nijssen and Kok 20 04).A ... (1988b):LMAO=[ˆuW 2 ˆu/ˆV 2 ] 2 T 22 −(T 21 A) 2 ˆvar(ˆU), (6)LMAU=[ˆuBBW1y] 2 Hrho−HTUˆvar(ˆT)HTU, (7)where T 21 A= tr[W 2 W1A−1+W 2 W1A−1], A = I −ˆUW1, ... sequences.Intelligent Data Analysis, 6(3) :23 7 25 5.KAM, P S. and FU, A. W C. (20 00): Discovering Temporal Patterns for Interval-BasedEvents. In: Data Warehousing and Knowledge Discovery, 2nd Int. Conf., DaWaK 20 00.Springer,...
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Data Analysis Machine Learning and Applications Episode 2 Part 3 pps

Data Analysis Machine Learning and Applications Episode 2 Part 3 pps

... preparation (data= d1, variable='lname',method='asoundex') lname asoundex.lname11 525 6 WESTERHEIDE W 236 20 0001 BESTEWEIDE B 233 20 00 02 WESTERWELLE W 236 3. 3 Candidate selectioncandidates (data1 , ... retains only 83 candidates.> candidates (data1 =d1.prep, data2 =d2.prep,method='blocking',selvars1='asoundex.lname')> candidates (data1 =d1.prep, data2 =d2.prep,method='sorted', ... U=0.5W 2 W 2 , O=0.5W 2 W 2 , U=0.50 0.05 0.1 0.15 0 .2 00.10 .2 0 .3 0.40.50.60.70.80.91U,Opowerb) SARAR(1,1): GMM opt.inst. WaldW1W1, O=0.5W1W1, U=0.5W 2 W 2 , O=0.5W 2 W 2 ,...
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Data Analysis Machine Learning and Applications Episode 2 Part 4 doc

Data Analysis Machine Learning and Applications Episode 2 Part 4 doc

... winners).MisclassificationJ4.8 J4.8(cv) RPart0 RPart1 QUEST CTreeJ4.8 029 911839J4.8(cv) 40 8911 941 RPart0560710735RPart1 641 08 625 QUEST 42 2 50 720 CTree76789037 26 20 27 38 49 37Complexity J4.8 J4.8(cv) RPart0 ... RPart0 RPart1 QUEST CTreeJ4.8 010 020 3J4.8(cv)17 0 0 0 5 3 25 RPart018 18 0 0 13 15 64 RPart118 18 16 0 14 15 81QUEST15 13 5 4 0 10 47 CTree18 14 3 2 8 0 45 86 64 24 6 42 43 Table ... Ŧ RPart1QUEST Ŧ RPart1CTree Ŧ RPart0QUEST Ŧ RPart0RPart1 Ŧ RPart0CTree Ŧ J4.8(cv)QUEST Ŧ J4.8(cv)RPart1 Ŧ J4.8(cv)RPart0 Ŧ J4.8(cv)CTree Ŧ J4.8QUEST Ŧ J4.8RPart1 Ŧ J4.8RPart0 Ŧ J4.8J4.8(cv)...
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Data Analysis Machine Learning and Applications Episode 2 Part 5 pps

Data Analysis Machine Learning and Applications Episode 2 Part 5 pps

... (4 .5% )Global meantypical application day cluster numberunknownupunknowndownp2pupp2pdownwebupwebdown0 5 10 15 20 25 01 2 34 5 6x 1060 5 101 5 2 0 2 5 00 .5 11 .5 2 2 .5 x ... 20 30 40 50 60 70 8000 .2 0.40.60.81Typical day 12 0 5 10 15 20 25 01 2 34 5 x 1070 5 101 5 2 0 2 5 0 2 46810x 106cluster 6, application: p2p down ( 12% ) volume (in byte)global ... technical comments and Jörg Fenner for helping collectthe raw and context information and evaluate the text mining approach. 350 Francoise Fessant et al.0 5 10 15 20 25 01 2 34 5 6x 106hoursvolume...
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Data Analysis Machine Learning and Applications Episode 2 Part 9 pdf

Data Analysis Machine Learning and Applications Episode 2 Part 9 pdf

... pseudo R 2 1 -131. 49 28 0 .97 28 9. 97 .00 .23 2 -117.04 27 6. 09 29 7. 09 . 09 .813 -100 .96 26 7. 92 300. 92 .08 . 92 4 - 89. 76 26 9. 52 314. 52 .11 . 92 5 - 82. 62 2 79 .24 336 .24 .11 .95 Classifying Contemporary ... biasedT04s8 .93 2. 10 2. 59 biasedT05s10. 59 -8.75 -4.70 biasedTM score 3.67 4.05 .88 10 . 29 DM score 2. 71 1.03 -7.87 8 .94 EM score -2. 44 64 1.37 6. 62 IM score 1.15 .23 6. 52 5.17NM score 44 . 29 2. 99 3.03Intercept ... 0.0 32 0.044 0. 020 Level 2 18 .2 % 0.117 14.4 % 0.080 21 .8 % 0.154Level 3 0.140 0. 095 0.184Attribute 2 Level 1 0.106 0.177 0.036Level 2 0.157 0.183 0.1 32 Level 3 27 .5 %0 .23 8 28 .5 %0 .23 6 26 .5...
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Data Analysis Machine Learning and Applications Episode 3 Part 1 pdf

Data Analysis Machine Learning and Applications Episode 3 Part 1 pdf

... 1 035 11 4 15 9 13 17 158 0 . 31 4Polynomial(3rd degree) 12 42 633 516 14 767 17 158 0.6 43 RBF860 6 51 498 15 149 17 158 0.640Coulomb0 11 24 25 16 009 17 158 0 .14 8M1287 850 299 15 722 17 158 0.505M2* 19 1 ... MeNonV BT3Ratios VBT2NonV BT2VBT3NonV BT3Test1 Test2ROS 9.52 3. 93 5 .39 2 .16 1 03 11 6ROE 6.7 3. 83 3 .3 2. 01 111 11 0ROI 6.85 3. 83 -1. 51 1.5 1 13 10 5Leverage 79.75 72.52 226.96 88.28 12 0 58**governance ... 0.505M2* 19 1 33 1 256 12 425 13 2 03 0.655M3** 35 48 33 1 818 12 425 17 158 0.7 43 * 39 55 credit clients could not be classified.**Default classbadfor 39 55 credit clients. and by w = 11 49 32 3forbadcredit...
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Data Analysis Machine Learning and Applications Episode 3 Part 2 pdf

Data Analysis Machine Learning and Applications Episode 3 Part 2 pdf

... Artificial Intelligence, pp. 43 52, July 1998.BURKE, R. (20 02) : Hybrid Recommender Systems: Survey and Experiments. User Modeling and User-Adapted Interaction. vol. 12( 4), pp. 33 1 37 0.HERLOCKER, J.L., ... EachMovie, containing 2, 558,871votes from 61, 1 32 users on 1,6 23 movies, and the MovieLens100k dataset, contain-ing 100,000 ratings from 9 43 users on 1,6 82 movies. The datasets also contain ... and development in information retrieval. New York,NY, USA: ACM Press, 20 02, pp. 2 53 26 0.TSO, K. and SCHMIDT-THIEME L. (20 05): Attribute-aware Collaborative Filtering. In Pro-ceedings of 29 th...
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Data Analysis Machine Learning and Applications Episode 3 Part 3 pps

Data Analysis Machine Learning and Applications Episode 3 Part 3 pps

... WeibullK=2 K =3 K=4 K=5separate 233 39.27 232 02. 23 230 40.01 229 43. 11main.g 233 55.66 230 58.25 22971.86 228 63. 43 main.p 235 03. 73 233 68.77 231 65.60 230 68.47int.gp 235 72.21 234 22.51 233 05. 63 230 75.76main.gp ... 1285 4 4 4 120 120 126 3 2 15 10 13 105 108 107 32 322229497 93 436 30297479795414 233 676564±10 234 3 231 787075 35 9 535 445514248564672 435 195906768182614 30 2595447 433 945 38 4666522252149586651614115 ... jewelleryComponent1 1 .36 234 2 2.981528 1.116042 0.7 935 599 0.91454 63 Component2 1 .36 234 2 2.981528 1.116042 0.7 935 599 0.91454 63 Component3 1 .36 234 2 2.981528 1.116042 0.7 935 599 0.91454 63 Component4 1 .36 234 2 2.981528...
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Data Analysis Machine Learning and Applications Episode 3 Part 4 potx

Data Analysis Machine Learning and Applications Episode 3 Part 4 potx

... Equation 3 and Figure 4: Pnìm= UnìcÃScìcÃVcìm (3) 2.69 0.57 2.22 4. 250.78 3. 93 2.21 0. 04 3. 17 1 .38 2.92 4. 78Pnìi-0.61 0.28-0.29 -0.95-0. 74 0. 14 Unìc8.87 00 4. 01Scìc-0 .47 -0.28 ... efc(0.17)Portal 1 0.1126 0.20 54 0.2815 0 .35 18 0. 640 8 0.7685 0 .36 Portal 2 0. 142 5 0.2050 0.1 836 0.2079 0.1965 0. 233 8 0.18Portal 3 0.0058 0. 245 5 0.02 54 0. 245 9 0 .33 82 0 .41 75 0.15Fig. 2. Decision matrix ... f1does.f1f2f 3 f 4 U1 4 1 1 4 U21 4 2 0U 3 2 1 4 5(a)f1f2f 3 f 4 U 4 1 4 1 0(b)Fig. 2. User-Feature matrix P divided in (a) Training Set (nìm), (b) Test Set 3. 2 Applying SVD on training data Initially,...
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Data Analysis Machine Learning and Applications Episode 3 Part 5 pdf

Data Analysis Machine Learning and Applications Episode 3 Part 5 pdf

... weight-ings.Rand cRandktf tf-idf tf tf-idf 3 0.48 0.49 0. 03 0. 03 40 .51 0 .52 0. 03 0. 03 5 0 .54 0. 53 0.02 0.0260 .55 0 .56 0.02 0. 03 Average 0 .52 0 .52 0.02 0. 03 ments are rather low, indicating that ... the percentage identified by humans.Senate size 03 59 Documents 0 255 739 0Percentage0.000 25. 654 74 .34 6 0.000Human Percentage2.116 27 .30 6 70 .55 1 0.027Jurisdictions of the Austrian supreme ... shifts:ã shift 0: Extrablatt 0 T1 15 O 53 1 T2 15 house Hauptstr 2 T64street Heidelberg 3 T 15 city 69117 4 T2 15 zipã shift 1: 1 -1:Extrablatt -1:T1 15 0: 53 0:T2 15 1:Hauptstr 1:T64house Projecting...
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Data Analysis Machine Learning and Applications Episode 3 Part 6 doc

Data Analysis Machine Learning and Applications Episode 3 Part 6 doc

... storyThe empirical tests on the data from the 66 texts support our hypothesis with good and very good 2 values. Figures 2 and 3 show typical graphs of the theoretical and empirical distributions ... information. Figure 6 shows the relationshipbetween the parameters b and c. Quantitative Text Analysis Using L-, F- and T-Segments 63 9 Table 1. Text numbers in the corpus with respect to genre and authorBrentano ... determinationcoefficient R2, which was above 0.99 in all 66 cases. The parameters b and c of the Distribution of Data in Word Lists 63 1 separation in the past. And again any mathematician has the solution:...
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Data Analysis Machine Learning and Applications Episode 3 Part 7 ppt

Data Analysis Machine Learning and Applications Episode 3 Part 7 ppt

... Measurements and the corresponding ranks of MnOValue 0.01 0.02 0. 03 0.04 0.05 0.06 0. 07 0.08 0.09 0.10 0.11 0. 13 Frequency 171 82 071 54 231 11Rank 9 26.5 45.5 59 63 66 70 .5 73 . 5 76 78 79 80Transformation ... <T1– 07& gt;-0 .70 7-Geographic treatment <T1– 070 7> 7- North America <na4r7span:T1– 070 1-T1– 070 9:T2 7& gt; 73 United States <na4r7span:T1– 070 1-T1– 070 9:T2– 73 & gt;The information given in angle ... our DDC analysis diagram for the 37 th molecular DDC notationof his sample:Liu (19 93) , pp. 99–100 72 0 .70 73 has been decomposed as follows: 72 0: Architecture 070 7: Geographical treatment 73 : United...
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Data Analysis Machine Learning and Applications Episode 3 Part 8 doc

Data Analysis Machine Learning and Applications Episode 3 Part 8 doc

... Linguistics, 637 , 655Question Answering, 5 53 R, 33 5, 38 9, 569Rank Data, 681 Recommender Systems, 525, 533 , 541,619Record Linkage, 33 5Reference Modelling, 37 3Regression, 36 3Relationships, 36 3, 629Return ... Segmentation, 479 Data Analysis, 31 9 Data Augmentation, 111 Data Depth, 455 Data Integration, 33 5 Data Mining, 421 Data Quality, 33 5 Data Transformation, 681 Decision Trees, 38 9Dendrograms, 95Design ... Machines, 3, 11, 55,77, 245, 515Supreme Administrative Court, 569Survival Analysis, 5 93 Swarm Intelligence, 139 Tagged Data, 6 73 Taxonomies, 37 3Temporal Data Mining, 2 53 Text Analysis, 637 Text...
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