Equity & ethics in data journalism: Hands-on approaches to getting your data right

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Free Online Course: Equity & ethics in data journalism: Hands-on approaches to getting your data right provided by Independent is a comprehensive online course, which lasts for 4 weeks long. The course is taught in English and is free of charge. Upon completion of the course, you can receive an e-certificate from Independent.

Overview
  • During this four-week course, you will learn about tools and techniques that will help you tell data stories fairly and ethically. Specifically, this course will guide you hands-on through the process of learning to identify inequity and hidden bias at seven key stages of the data journalism lifecycle.

Syllabus
  • Introduction module:

    Getting started thinking about what equity and ethics in data journalism means

    Module 1: Essential concepts in equity and ethics for data journalism

    In this module, students will get familiar with the basic ideas, language, and applications of ethics and equity in data journalism. We will look at some examples, learn some definitions, and discuss key guidelines.

    This module will cover:

    • Key concepts in equity and ethics such as privacy, consent, power, error, and bias
    • The seven steps of the data equity lifecycle
    • Libraries of guidelines

    Module 2: Gathering and collecting data for your data story

    In this module, we’ll explore what you need to know and think about in acquiring data for your journalism. We’ll learn ways to vet data that you get from other people as well as ways to collect your own data with an equity and ethics focus.

    This module will cover:

    • Data biographies
    • Samples and populations
    • Weighting data
    • Public vs private vs open data
    • Checklist for ethical data collection and acquisition

    Module 3: Analyzing data for your data story

    Despite its name, “data science” is not an objective science. All methods of analysis embed a set of world views and value systems. We’ll look at how to avoid common errors in analysis and what questions to ask when assessing other people’s analysis for your data journalism pieces.

    This module will cover:

    • The four most common data fallacies
    • Denominators
    • Part of a statistical model
    • Algorithmic accountability

    Module 4: Visualizing and communicating data for your data story

    Data visualization “best practices” are not cross-culturally universal. It is extremely easy to send unintentional, accidentally dishonest or misleading messages when visualizing data. We’ll be looking at ways to avoid these pitfalls and checklists and tools to help embed a sense of equity in the way you communicate and visualize your data journalism story.

    This module will cover:

    • Learning to spot how data viz misleads
    • Understanding how to use a legend to embed equity in data viz
    • Do’s and don’t of ethical and equitable narrative and word choices