LEADER 05604nam 22007094a 450 001 9910146077903321 005 20170815114025.0 010 $a1-280-36625-7 010 $a9786610366255 010 $a0-470-30781-1 010 $a0-471-45864-3 010 $a0-471-44835-4 035 $a(CKB)1000000000018977 035 $a(EBL)159847 035 $a(OCoLC)123112222 035 $a(SSID)ssj0000295984 035 $a(PQKBManifestationID)11250991 035 $a(PQKBTitleCode)TC0000295984 035 $a(PQKBWorkID)10322357 035 $a(PQKB)10628633 035 $a(MiAaPQ)EBC159847 035 $a(EXLCZ)991000000000018977 100 $a20021105d2003 uy 0 101 0 $aeng 135 $aur|n|---||||| 181 $ctxt 182 $cc 183 $acr 200 10$aExploratory data mining and data cleaning$b[electronic resource] /$fTamraparni Dasu, Theorodre Johnson 210 $aNew York $cWiley-Interscience$d2003 215 $a1 online resource (226 p.) 225 1 $aWiley series in probability and statistics 300 $aDescription based upon print version of record. 311 $a0-471-26851-8 320 $aIncludes bibliographical references (p. 189-195) and index. 327 $aExploratory Data Mining and Data Cleaning; Contents; Preface; 1. Exploratory Data Mining and Data Cleaning: An Overview; 1.1 Introduction; 1.2 Cautionary Tales; 1.3 Taming the Data; 1.4 Challenges; 1.5 Methods; 1.6 EDM; 1.6.1 EDM Summaries-Parametric; 1.6.2 EDM Summaries-Nonparametric; 1.7 End-to-End Data Quality (DQ); 1.7.1 DQ in Data Preparation; 1.7.2 EDM and Data Glitches; 1.7.3 Tools for DQ; 1.7.4 End-to-End DQ: The Data Quality Continuum; 1.7.5 Measuring Data Quality; 1.8 Conclusion; 2. Exploratory Data Mining; 2.1 Introduction; 2.2 Uncertainty; 2.2.1 Annotated Bibliography 327 $a2.3 EDM: Exploratory Data Mining2.4 EDM Summaries; 2.4.1 Typical Values; 2.4.2 Attribute Variation; 2.4.3 Example; 2.4.4 Attribute Relationships; 2.4.5 Annotated Bibliography; 2.5 What Makes a Summary Useful?; 2.5.1 Statistical Properties; 2.5.2 Computational Criteria; 2.5.3 Annotated Bibliography; 2.6 Data-Driven Approach-Nonparametric Analysis; 2.6.1 The Joy of Counting; 2.6.2 Empirical Cumulative Distribution Function (ECDF); 2.6.3 Univariate Histograms; 2.6.4 Annotated Bibliography; 2.7 EDM in Higher Dimensions; 2.8 Rectilinear Histograms; 2.9 Depth and Multivariate Binning 327 $a2.9.1 Data Depth2.9.2 Aside: Depth-Related Topics; 2.9.3 Annotated Bibliography; 2.10 Conclusion; 3. Partitions and Piecewise Models; 3.1 Divide and Conquer; 3.1.1 Why Do We Need Partitions?; 3.1.2 Dividing Data; 3.1.3 Applications of Partition-Based EDM Summaries; 3.2 Axis-Aligned Partitions and Data Cubes; 3.2.1 Annotated Bibliography; 3.3 Nonlinear Partitions; 3.3.1 Annotated Bibliography; 3.4 DataSpheres (DS); 3.4.1 Layers; 3.4.2 Data Pyramids; 3.4.3 EDM Summaries; 3.4.4 Annotated Bibliography; 3.5 Set Comparison Using EDM Summaries; 3.5.1 Motivation; 3.5.2 Comparison Strategy 327 $a3.5.3 Statistical Tests for Change3.5.4 Application-Two Case Studies; 3.5.5 Annotated Bibliography; 3.6 Discovering Complex Structure in Data with EDM Summaries; 3.6.1 Exploratory Model Fitting in Interactive Response Time; 3.6.2 Annotated Bibliography; 3.7 Piecewise Linear Regression; 3.7.1 An Application; 3.7.2 Regression Coefficients; 3.7.3 Improvement in Fit; 3.7.4 Annotated Bibliography; 3.8 One-Pass Classification; 3.8.1 Quantile-Based Prediction with Piecewise Models; 3.8.2 Simulation Study; 3.8.3 Annotated Bibliography; 3.9 Conclusion; 4. Data Quality; 4.1 Introduction 327 $a4.2 The Meaning of Data Quality4.2.1 An Example; 4.2.2 Data Glitches; 4.2.3 Conventional Definition of DQ; 4.2.4 Times Have Changed; 4.2.5 Annotated Bibliography; 4.3 Updating DQ Metrics: Data Quality Continuum; 4.3.1 Data Gathering; 4.3.2 Data Delivery; 4.3.3 Data Monitoring; 4.3.4 Data Storage; 4.3.5 Data Integration; 4.3.6 Data Retrieval; 4.3.7 Data Mining/Analysis; 4.3.8 Annotated Bibliography; 4.4 The Meaning of Data Quality Revisited; 4.4.1 Data Interpretation; 4.4.2 Data Suitability; 4.4.3 Dataset Type; 4.4.4 Attribute Type; 4.4.5 Application Type 327 $a4.4.6 Data Quality-A Many Splendored Thing 330 $aWritten for practitioners of data mining, data cleaning and database management. Presents a technical treatment of data quality including process, metrics, tools and algorithms.Focuses on developing an evolving modeling strategy through an iterative data exploration loop and incorporation of domain knowledge.Addresses methods of detecting, quantifying and correcting data quality issues that can have a significant impact on findings and decisions, using commercially available tools as well as new algorithmic approaches.Uses case studies to illustrate applications in real 410 0$aWiley series in probability and statistics. 606 $aData mining 606 $aElectronic data processing$xData preparation 606 $aElectronic data processing$xQuality control 608 $aElectronic books. 615 0$aData mining. 615 0$aElectronic data processing$xData preparation. 615 0$aElectronic data processing$xQuality control. 676 $a005.741 676 $a006.3 676 $a006.312 700 $aDasu$b Tamraparni$0281835 701 $aJohnson$b Theodore$0281836 801 0$bMiAaPQ 801 1$bMiAaPQ 801 2$bMiAaPQ 906 $aBOOK 912 $a9910146077903321 996 $aExploratory data mining and data cleaning$9673537 997 $aUNINA LEADER 03474nam 2200577 450 001 9910796278903321 005 20230807214703.0 010 $a2-39009-042-7 035 $a(CKB)3790000000019303 035 $a(EBL)2118684 035 $a(MiAaPQ)EBC2118684 035 $a(Au-PeEL)EBL2118684 035 $a(OCoLC)915311720 035 $a(EXLCZ)993790000000019303 100 $a20200126d2015 uy 0 101 0 $afre 135 $aur|n|---||||| 181 $ctxt$2rdacontent 182 $cc$2rdamedia 183 $acr$2rdacarrier 200 10$aVictime d'un accro au sexe $emanipule?e par amour /$fMarie Chastelneau 210 1$aBrussels, Belgium ;$aParis, France :$cLa Boi?te a? Pandore,$d[2015] 215 $a1 online resource (178 p.) 300 $aDescription based upon print version of record. 311 $a2-87557-007-2 327 $a« Nous sommes lents a? croire ce qui fait mal a? croire. »« On se demande parfois si la vie a un sens et, puis, on rencontre des e?tres qui donnent un sens a? la vie. »; « Ce qui me bouleverse, ce n'est pas que tu m'aies menti, c'est que, de?sormais, je ne pourrai plus te croire. »; « Le temps viendra ou? vous croirez que tout est fini. C'est alors que tout commencera. »; « Ceux qui tombent entrai?nent souvent dans leur chute ceux qui se portent a? leur secours. »; « Tu seras aime? le jour ou? tu pourras montrer tes faiblesses sans que l'autre s'en serve pour augmenter sa force » 327 $a« Il n'y a pas de hasards, il n'y a que des rendez-vous »La de?livrance; « Il faut sortir du souvenir avant de pouvoir aimer et donner a? nouveau. »; « Le sexe n'est pas le ciment le plus fort entre deux e?tres, c'est l'amour. »; « Il faut avoir un chaos en soi pour accoucher d'une e?toile qui danse. »; « A quoi servent les livres s'ils ne rame?nent pas vers la vie, s'ils ne parviennent pas a? nous y faire boire, avec plus d'avidite? ? »; Copyright 330 $a Te?moignage d'une victime d'un pervers sexuelL'addiction sexuelle se caracte?rise par la perte de contro?le de la sexualite?. Elle engendre un comportement pathologique lie? a? l'acte sexuel, malgre? la connaissance de ses conse?quences ne?gatives. Lorsqu'elle se double de manipulation sur l'un des partenaires, elle conduit a? la perte des limites de tous les crite?res moraux et culturels dont la socie?te? franc?aise disposait auparavant comme l'explique la psychiatre et psychanalyste victimologue, Marie-France Hirigoyen. Marie Castelneau, dans son te?moignage cruel et pre?cis, dresse, a? travers son expe?rien 606 $aSex addiction 606 $aSex addicts$vBiography 606 $aSex (Psychology) 606 $aPsychosexual disorders 606 $aBIOGRAPHY & AUTOBIOGRAPHY$xPersonal Memoirs$2bisacsh 606 $aBIOGRAPHY & AUTOBIOGRAPHY$xWomen$2bisacsh 606 $aPSYCHOLOGY$xHuman Sexuality$2bisacsh 615 0$aSex addiction. 615 0$aSex addicts 615 0$aSex (Psychology) 615 0$aPsychosexual disorders. 615 7$aBIOGRAPHY & AUTOBIOGRAPHY$xPersonal Memoirs. 615 7$aBIOGRAPHY & AUTOBIOGRAPHY$xWomen. 615 7$aPSYCHOLOGY$xHuman Sexuality. 676 $a616.85833 700 $aChastelneau$b Marie$01551160 801 0$bMiAaPQ 801 1$bMiAaPQ 801 2$bMiAaPQ 906 $aBOOK 912 $a9910796278903321 996 $aVictime d'un accro au sexe$93810470 997 $aUNINA