Student Teacher

Description

Overview:
Don’t take your data at face value. That is the key message of this tutorial which focuses on how scholars can diagnose and act upon the accuracy of data. In this lesson, you will learn the principles and practice of data cleaning, as well as how OpenRefine can be used to perform four essential tasks that will help you to clean your data:
1. Remove duplicate records
2. Separate multiple values contained in the same field
3. Analyse the distribution of values throughout a data set
4. Group together different representations of the same reality

These steps are illustrated with the help of a series of exercises based on a collection of metadata from the Powerhouse museum, demonstrating how (semi-)automated methods can help you correct the errors in your data.
Subject:
Computer Science
Level:
College / Upper Division, Graduate / Professional, Adult Education
Material Type:
Diagram/Illustration
Author:
,
Provider:
Center for History and New Media
Date Added:
06/16/2015
License:
Creative Commons Attribution Creative Commons Attribution
Language:
English
Media Format:
Text/HTML

Comments

Standards

No Alignments yet.

Evaluations

No evaluations yet.

Tags (3)