Missing data | Statistical data types

Missing data

In statistics, missing data, or missing values, occur when no data value is stored for the variable in an observation. Missing data are a common occurrence and can have a significant effect on the conclusions that can be drawn from the data. Missing data can occur because of nonresponse: no information is provided for one or more items or for a whole unit ("subject"). Some items are more likely to generate a nonresponse than others: for example items about private subjects such as income. Attrition is a type of missingness that can occur in longitudinal studies—for instance studying development where a measurement is repeated after a certain period of time. Missingness occurs when participants drop out before the test ends and one or more measurements are missing. Data often are missing in research in economics, sociology, and political science because governments or private entities choose not to, or fail to, report critical statistics, or because the information is not available. Sometimes missing values are caused by the researcher—for example, when data collection is done improperly or mistakes are made in data entry. These forms of missingness take different types, with different impacts on the validity of conclusions from research: Missing completely at random, missing at random, and missing not at random. Missing data can be handled similarly as censored data. (Wikipedia).

Missing data
Video thumbnail

MissingData.4.Part4

This video is brought to you by the Quantitative Analysis Institute at Wellesley College. The material is best viewed as part of the online resources that organize the content and include questions for checking understanding: https://www.wellesley.edu/qai/onlineresources

From playlist Applied Data Analysis and Statistical Inference

Video thumbnail

R - Missing Values, Packages, and Working Directories Lecture

Recorded: Fall 2015 Lecturer: Dr. Erin M. Buchanan This video covers some basics about missing data in R, how to work with and install packages, and the point of using working directories. Lecture materials and assignment available at statisticsofdoom.com. https://statisticsofdoom.com/p

From playlist Learn R + Statistics

Video thumbnail

DataCleaningAndManagement.6.Missing Data

This video is brought to you by the Quantitative Analysis Institute at Wellesley College. The material is best viewed as part of the online resources that organize the content and include questions for checking understanding: https://www.wellesley.edu/qai/onlineresources

From playlist Data Cleaning and Management

Video thumbnail

MissingData.10.Dropping Missing Values

This video is brought to you by the Quantitative Analysis Institute at Wellesley College. The material is best viewed as part of the online resources that organize the content and include questions for checking understanding: https://www.wellesley.edu/qai/onlineresources

From playlist Missing Data

Video thumbnail

MissingData.9.Example

This video is brought to you by the Quantitative Analysis Institute at Wellesley College. The material is best viewed as part of the online resources that organize the content and include questions for checking understanding: https://www.wellesley.edu/qai/onlineresources

From playlist Missing Data

Video thumbnail

Missing Values SPSS

How to code, replace, and identify missing values in SPSS. 00:00 Intro 00:15 Coding missing values 01:51 Replacing missing values with the mean 05:14 Finding missing values in large data sets

From playlist SPSS

Video thumbnail

MissingData.5.Part5

This video is brought to you by the Quantitative Analysis Institute at Wellesley College. The material is best viewed as part of the online resources that organize the content and include questions for checking understanding: https://www.wellesley.edu/qai/onlineresources

From playlist Applied Data Analysis and Statistical Inference

Video thumbnail

MissingData.13.Strategies

This video is brought to you by the Quantitative Analysis Institute at Wellesley College. The material is best viewed as part of the online resources that organize the content and include questions for checking understanding: https://www.wellesley.edu/qai/onlineresources

From playlist Missing Data

Video thumbnail

SPSS - Data Screening (Step 2): Missing Data Example

Lecturer: Jessica Willis Missouri State University Fall 2015 This video covers how to run data screening in SPSS across a series of videos. Lecture materials and assignments available at statisticsofdoom.com. https://statisticsofdoom.com/page/advanced-statistics/

From playlist Advanced Statistics Videos

Video thumbnail

R - Data Screening 2 Missing Data

Recorded: Fall 2015 Lecturer: Dr. Erin M. Buchanan This video covers how to check your data for missing data, how much missing data you should consider replacing, what types of data to replace, and how to replace data with the mice package through multiple imputation. Lecture materials

From playlist Learn R + Statistics

Video thumbnail

R - Data Screening Missing (6.2 Flip)

Lecturer: Dr. Erin M. Buchanan Spring 2021 https://www.patreon.com/statisticsofdoom This video covers data screening following a set procedure to help you screen through your data. You will learn about data screening working through accuracy, missing data, outliers, and assumptions. T

From playlist Graduate Statistics Flipped

Video thumbnail

Gaël Varoquaux - Supervised Learning with Missing Values

Some data come with missing values. For instance, a survey’s participant may ignore some questions. There is an abundant statistical literature on this topic, establishing for instance how to fit model without biases due to the missingness, and imputation strategies to provide practical so

From playlist Journée statistique & informatique pour la science des données à Paris-Saclay 2021

Video thumbnail

Live CEOing Ep 120: Machine Learning in Wolfram Language

Watch Stephen Wolfram and teams of developers in a live, working, language design meeting. This episode is about Machine Learning in the Wolfram Language.

From playlist Behind the Scenes in Real-Life Software Design

Video thumbnail

Statistical modeling and missing data - Rod Little

Virtual Workshop on Missing Data Challenges in Computation, Statistics and Applications Topic: Statistical modeling and missing data Speaker: Rod Little Date: September 8, 2020 For more video please visit http://video.ias.edu

From playlist Mathematics

Video thumbnail

Data Analysis 3: Cleaning Data - Computerphile

A clean sweep. How to get rid of the unnecessary clutter in your data 'house' - Dr Mike Pound on Data Cleaning. This is part 3 of the Data Analysis Learning Playlist: https://www.youtube.com/playlist?list=PLzH6n4zXuckpfMu_4Ff8E7Z1behQks5ba This Learning Playlist was designed by Dr Merced

From playlist Data Analysis with Dr Mike Pound

Video thumbnail

Python Pandas Tutorial (Part 9): Cleaning Data - Casting Datatypes and Handling Missing Values

In this video, we will be learning how to clean our data and cast datatypes. This video is sponsored by Brilliant. Go to https://brilliant.org/cms to sign up for free. Be one of the first 200 people to sign up with this link and get 20% off your premium subscription. In this Python Progr

From playlist Pandas Tutorials

Video thumbnail

MissingData.6.Part6

This video is brought to you by the Quantitative Analysis Institute at Wellesley College. The material is best viewed as part of the online resources that organize the content and include questions for checking understanding: https://www.wellesley.edu/qai/onlineresources

From playlist Applied Data Analysis and Statistical Inference

Video thumbnail

Live CEOing Ep 144: Machine Learning in Wolfram Language

Watch Stephen Wolfram and teams of developers in a live, working, language design meeting. This episode is about Machine Learning in the Wolfram Language.

From playlist Behind the Scenes in Real-Life Software Design

Related pages

Interpolation | Unit of observation | Imputation (statistics) | Censoring (statistics) | Expectation–maximization algorithm | Value (mathematics) | Robust statistics | Listwise deletion | Joint probability distribution | Statistics | Markov chain | Matrix completion | Inverse probability weighting | Variable (mathematics)