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Index
The Data Journalism Handbook Preface
For the Great Unnamed Contributors What This Book Is (And What It Isn’t) Conventions Used in This Book Safari® Books Online How to Contact Us
1. Introduction
What Is Data Journalism? Why Journalists Should Use Data Why Is Data Journalism Important?
Filtering the Flow of Data New Approaches to Storytelling Like Photo Journalism with a Laptop Data Journalism Is the Future Number-Crunching Meets Word-Smithing Updating Your Skills Set A Remedy for Information Asymmetry An Answer to Data-Driven PR Providing Independent Interpretations of Official Information Dealing with the Data Deluge Our Lives Are Data A Way to Save Time An Essential Part of the Journalists’ Toolkit Adapting to Changes in Our Information Environment A Way to See Things You Might Not Otherwise See A Way To Tell Richer Stories
Some Favorite Examples
Do No Harm in the Las Vegas Sun Government Employee Salary Database Full-Text Visualization of the Iraqi War Logs, Associated Press Murder Mysteries Message Machine Chartball
Data Journalism in Perspective
Computer-Assisted Reporting and Precision Journalism Data Journalism and Computer-Assisted Reporting Data Journalism Is About Mass Data Literacy
2. In The Newsroom
The ABC’s Data Journalism Play
Our Team Where Did We Get the Data From? What Did We Learn? The Big Picture: Some Ideas
Data Journalism at the BBC
Make It Personal Simple Tools Mining The Data Understanding An Issue Team Overview
How the News Apps Team at the Chicago Tribune Works Behind the Scenes at the Guardian Datablog Data Journalism at the Zeit Online How to Hire a Hacker Harnessing External Expertise Through Hackathons Following the Money: Data Journalism and Cross-Border Collaboration Our Stories Come As Code Kaas & Mulvad: Semi-Finished Content for Stakeholder Groups
Processes: Innovative IT Plus Analysis Value Created: Personal and Firm Brands and Revenue Key Insights of This Example
Business Models for Data Journalism
3. Case Studies
The Opportunity Gap A Nine Month Investigation into European Structural Funds
1. Identify who keeps the data and how it is kept 2. Download and prepare the data 3. Create a database 4. Double-checking and analysis
The Eurozone Meltdown Covering the Public Purse with OpenSpending.org Finnish Parliamentary Elections and Campaign Funding
1. Find data and developers 2. Brainstorm for ideas 3. Implement the idea on paper and on the Web 4. Publish the data
Electoral Hack in Realtime (Hacks/Hackers Buenos Aires)
What Data Did We Use? How Was It Developed? Pros Cons Implications
Data in the News: WikiLeaks Mapa76 Hackathon The Guardian Datablog’s Coverage of the UK Riots
Phase One: The Riots As They Happened Phase Two: Reading the Riots
Illinois School Report Cards Hospital Billing Care Home Crisis The Tell-All Telephone Which Car Model? MOT Failure Rates Bus Subsidies in Argentina
Who Worked on the Project? What Tools Did We Use?
Citizen Data Reporters The Big Board for Election Results Crowdsourcing the Price of Water
4. Getting Data
A Five Minute Field Guide
Streamlining Your Search Browse Data Sites and Services Ask a Forum Ask a Mailing List Join Hacks/Hackers Ask an Expert Learn About Government IT Search Again Write an FOI Request
Your Right to Data Wobbing Works. Use It!
Case Study 1: Farm Subsidy Case Study 2: Side Effects Case Study 3: Smuggling Death
Getting Data from the Web
What Is Machine-Readable Data? Scraping Websites: What For? What You Can and Cannot Scrape Tools That Help You Scrape How Does a Web Scraper Work? The Anatomy of a Web Page An Example: Scraping Nuclear Incidents with Python
The Web as a Data Source
Web Tools Web Pages, Images, and Videos Emails Trends
Crowdsourcing Data at the Guardian Datablog How the Datablog Used Crowdsourcing to Cover Olympic Ticketing Using and Sharing Data: the Black Letter, the Fine Print, and Reality
5. Understanding Data
Become Data Literate in Three Simple Steps
1. How was the data collected?
Amazing GDP growth Crime is always on the rise What you can do
2. What’s in there to learn?
Risk of Multiple Sclerosis doubles when working at night On average, 1 in every 15 Europeans totally illiterate What you can do
3. How reliable is the information?
The sample size problem Drinking tea lowers the risk of stroke What you can do
Tips for Working with Numbers in the News Basic Steps in Working with Data
Know the Questions You Want to Answer Cleaning Messy Data Data May Have Undocumented Features
The £32 Loaf of Bread Start With the Data, Finish With a Story Data Stories Data Journalists Discuss Their Tools of Choice Using Data Visualization to Find Insights in Data
Using Visualization to Discover Insights
Learn how to visualize data Analyze and interpret what you see Document your insights and steps Transform data
Which Tools to Use An Example: Making Sense of US Election Contribution Data What To Learn From This Get the Source Code
6. Delivering Data
Presenting Data to the Public
To Visualize or Not to Visualize? Using Motion Graphics Telling the World Publishing the Data Opening Up Your Data Starting an Open Data Platform Making Data Human Open Data, Open Source, Open News Add A Download Link Know Your Scope
How to Build a News App
Who Is My Audience and What Are Their Needs? How Much Time Should I Spend on This? How Can I Take Things to the Next Level? Wrapping Up
News Apps at ProPublica Visualization as the Workhorse of Data Journalism
Tip 1: Use small multiples to quickly orient yourself in a large dataset Tip 2: Look at your data upside down and sideways Tip 3: Don’t assume Tip 4: Avoid obsessing over precision Tip 5: Create chronologies of cases and events Tip 6: Meet with your graphics department early and often Tips For Publication
Using Visualizations to Tell Stories
Seeing the Familiar in a New Way Showing Change Over Time Comparing Values Showing Connections and Flows Designing With Data Showing Hierarchy Browsing Large Databases Envisioning Alternate Outcomes When Not To Use Data Visualization
Different Charts Tell Different Tales Data Visualization DIY: Our Top Tools
Google Fusion Tables Tableau Public Google Spreadsheet Charts Datamarket Many Eyes Color Brewer And Some More
How We Serve Data at Verdens Gang
Numbers Networks Maps Text Mining Concluding Notes
Public Data Goes Social Engaging People Around Your Data
About the Authors Colophon Copyright
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