Description

Book Synopsis
This reference book develops a systematic process of data exploration, data cleaning and evolving a suitable modelling strategy to help analysts determine and implement a final technique.

Trade Review
"Statisticians not conversant with today's statistical take on DQ should read this book…and be stimulated to do important research in DQ." (Journal of the American Statistical Association, March 2006)

"…uniquely integrates several approaches for data cleaning and exploration…" (Journal of Statistical Computation & Simulation, April 2004)

"...provides a uniquely integrated approach...for serious data analysts everywhere..." (Zentralblatt Math, Vol. 1027, 2004)



Table of Contents
0.1 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 End­to­End 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 End­to­End 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.

2.3 EDM: Exploratory Data Mining.

2.4 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 Data­Driven 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.

2.9.1 Data Depth.

2.9.2 Aside: Depth­Related 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 Partition­based EDM Summaries.

3.2 Axis­Aligned Partitions and Data Cubes.

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.

3.5.3 Statistical Tests for Change.

3.5.4 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 One­Pass Classification.

3.8.1 Quantile­Based Prediction with Piecewise Models.

3.8.2 Simulation Study.

3.8.3 Annotated Bibliography.

3.9 Conclusion.

4 Data Quality.

4.1 Introduction.

4.2 The Meaning of Data Quality.

4.2.1 An Example.

4.2.2 Data Glitches.

4.2.3 Gaps in Time Series Records.

4.2.4 Conventional Definition.

4.2.5 Times Have Changed.

4.2.6 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.

4.4.6 Data Quality - A Many Splendored Thing.

4.4.7 Annotated Bibliography.

4.5 Measuring Data Quality.

4.5.1 DQ Components and Their Measurement.

4.5.2 Combining DQ Metrics.

4.6 The DQ Process.

4.7 Conclusion.

4.7.1 Four Complementary Approaches.

4.7.2 Annotated Bibliography.

5 Data Quality: Techniques and Algorithms.

5.1 Introduction.

5.2 DQ Tools Based on Statistical Techniques.

5.2.1 Missing Values.

5.2.2 Incomplete Data.

5.2.3 Outliers.

5.2.4 Time Series Outliers: A Case Study.

5.2.5 Goodness­of­Fit.

5.2.6 Annotated Bibliography.

5.3 Database Techniques for DQ.

5.3.1 What is a Relational Database?

5.3.2 Why Are Data Dirty?

5.3.3 Extraction, Transformation, and Loading (ETL).

5.3.4 Approximate Matching.

5.3.5 Database Profiling.

5.3.6 Annotated Bibliography.

5.4 Metadata and Domain Expertise.

5.4.1 Lineage Tracing.

5.4.2 Annotated Bibliography.

5.5 Measuring Data Quality?

5.5.1 Inventory Building - A Case Study.

5.5.2 Learning and Recommendations.

5.6 Data Quality and Its Challenges.

Data Mining 442 Wiley Series in Probability and Statistics

    Product form

    £116.96

    Includes FREE delivery

    RRP £129.95 – you save £12.99 (9%)

    Order before 4pm tomorrow for delivery by Mon 22 Jun 2026.

    A Hardback by Tamraparni Dasu, Theodore Johnson


      View other formats and editions of Data Mining 442 Wiley Series in Probability and Statistics by Tamraparni Dasu

      Publisher: Wiley
      Publication Date: 10/06/2003
      ISBN13: 9780471268512, 978-0471268512
      ISBN10:

      Description

      Book Synopsis
      This reference book develops a systematic process of data exploration, data cleaning and evolving a suitable modelling strategy to help analysts determine and implement a final technique.

      Trade Review
      "Statisticians not conversant with today's statistical take on DQ should read this book…and be stimulated to do important research in DQ." (Journal of the American Statistical Association, March 2006)

      "…uniquely integrates several approaches for data cleaning and exploration…" (Journal of Statistical Computation & Simulation, April 2004)

      "...provides a uniquely integrated approach...for serious data analysts everywhere..." (Zentralblatt Math, Vol. 1027, 2004)



      Table of Contents
      0.1 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 End­to­End 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 End­to­End 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.

      2.3 EDM: Exploratory Data Mining.

      2.4 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 Data­Driven 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.

      2.9.1 Data Depth.

      2.9.2 Aside: Depth­Related 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 Partition­based EDM Summaries.

      3.2 Axis­Aligned Partitions and Data Cubes.

      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.

      3.5.3 Statistical Tests for Change.

      3.5.4 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 One­Pass Classification.

      3.8.1 Quantile­Based Prediction with Piecewise Models.

      3.8.2 Simulation Study.

      3.8.3 Annotated Bibliography.

      3.9 Conclusion.

      4 Data Quality.

      4.1 Introduction.

      4.2 The Meaning of Data Quality.

      4.2.1 An Example.

      4.2.2 Data Glitches.

      4.2.3 Gaps in Time Series Records.

      4.2.4 Conventional Definition.

      4.2.5 Times Have Changed.

      4.2.6 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.

      4.4.6 Data Quality - A Many Splendored Thing.

      4.4.7 Annotated Bibliography.

      4.5 Measuring Data Quality.

      4.5.1 DQ Components and Their Measurement.

      4.5.2 Combining DQ Metrics.

      4.6 The DQ Process.

      4.7 Conclusion.

      4.7.1 Four Complementary Approaches.

      4.7.2 Annotated Bibliography.

      5 Data Quality: Techniques and Algorithms.

      5.1 Introduction.

      5.2 DQ Tools Based on Statistical Techniques.

      5.2.1 Missing Values.

      5.2.2 Incomplete Data.

      5.2.3 Outliers.

      5.2.4 Time Series Outliers: A Case Study.

      5.2.5 Goodness­of­Fit.

      5.2.6 Annotated Bibliography.

      5.3 Database Techniques for DQ.

      5.3.1 What is a Relational Database?

      5.3.2 Why Are Data Dirty?

      5.3.3 Extraction, Transformation, and Loading (ETL).

      5.3.4 Approximate Matching.

      5.3.5 Database Profiling.

      5.3.6 Annotated Bibliography.

      5.4 Metadata and Domain Expertise.

      5.4.1 Lineage Tracing.

      5.4.2 Annotated Bibliography.

      5.5 Measuring Data Quality?

      5.5.1 Inventory Building - A Case Study.

      5.5.2 Learning and Recommendations.

      5.6 Data Quality and Its Challenges.

      Recently viewed products

      © 2026 Book Curl

        • American Express
        • Apple Pay
        • Diners Club
        • Discover
        • Google Pay
        • Maestro
        • Mastercard
        • PayPal
        • Shop Pay
        • Union Pay
        • Visa

        Login

        Forgot your password?

        Don't have an account yet?
        Create account