The Total Data Quality Framework

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Course Features

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Duration

12 hours

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Delivery Method

Online

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Available on

Limited Access

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Accessibility

Mobile, Desktop, Laptop

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Language

English

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Subtitles

English

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Level

Beginner

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Teaching Type

Self Paced

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Video Content

12 hours

Course Description

Learners will be able:

1. Identify the most important differences between the gathered and designed data, and summarize the key dimensions in the Total Data Quality Framework (TDQ).

2. Define the three dimensions of the Total Data Quality Framework and discuss potential threats to data quality along these dimensions, for both gathered data and designed data.

3. Define the three dimensions of the Total Data Quality Framework and discuss potential threats to data quality along these dimensions, for both gathered data and designed data.

4. Define data analysis as an important dimension in the Total Data Quality framework and discuss potential threats to the overall quality and effectiveness of an analysis plan for designed or gathered data.

This specialization aims to provide more information on the Total Data Quality framework and help learners understand the details of data quality before they can be used for data analysis. It is the goal of this specialization to help learners incorporate data quality evaluations into their projects as an essential component. We are eager to share knowledge about data quality with all learners, including data scientists and quant analysts who have not received sufficient training in the first steps of the data science process, which focuses on data collection and evaluation. If the data collected/gathered is not of sufficient quality, then a thorough knowledge of statistical analysis techniques and data science techniques will not be of any benefit to a quantitative research project.

This specialization will concentrate on the first steps of any scientific investigation that uses data. It will include generating and gathering data, understanding the source of the data, evaluating its quality, and taking steps towards maximizing the quality of data before performing any statistical analysis or using data science techniques to answer research queries. This will mean that there will not be much material on data analysis, which is covered in many other Coursera specializations. This specialization will focus on understanding and maximising data quality before analysis.

Course Overview

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Case Based Learning

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Case Studies,Hands-On Training,Instructor-Moderated Discussions

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Case Studies, Captstone Projects

Skills You Will Gain

What You Will Learn

This course will teach you how to measure the dimensions of total data quality: validity, origin, and processing

Learn how to represent the dimensions of total data quality: data access, data source, and data missingness

Data analysis is an important aspect of tdq

Course Instructors

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Brady T. West

Institute for Social Research

Brady T. West is a Research Associate Professor in the Survey Methodology Program, located within the Survey Research Center at the Institute for Social Research on the University of Michigan-Ann Arb...
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James Wagner

Survey Research Center

James Wagner, Ph.D. is a Research Professor at the University of Michigan's Survey Research Center (UM-SRC). His research is in the area of nonresponse and methods for addressing it during data colle...
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Jinseok Kim

Survey Research Center

Jinseok Kim, Ph.D. is a Research Assistant Professor in the Survey Research Center at the Institute for Social Research, and also in the U-M School of Information (by Courtesy). Dr. Kim has studied h...
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Trent D Buskirk

Institute for Social Research

Trent D. Buskirk, PhD is the Novak Family Distinguished Professor of Data Science and the Chair of the Applied Statistics and Operations Research Department at Bowling Green State University. Prior t...
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