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Welcome to Mastering Data Visualization! In this course, you’re going to learn about the Theory and Foundations of Data Visualization so that you can create amazing charts that are informative, true to the data, and communicatively effective.
Have you noticed there are more and more charts generated every day? If you turn on the TV, there’s a bar chart telling you the evolution of COVID, if you go on Twitter, boom! a lot of line charts displaying the evolution of the price of gas. In newspapers, lots and lots of infographics telling you about the most recent discovery… The reason for that is that now we have lots of data, and the most natural way to communicate data is in visual form: that is, through Data Visualization. But, have you noticed all of the mistakes in those visualizations? I have to tell you, many of the charts that I see regularly have one problem or another. Maybe their color choices are confusing, they chose the wrong type of chart, or they are displaying data in a distorted way.
Actually, that happens because more and more professional roles now require to present data visually, but there’s few training on how to do it correctly. This course aims to solve this gap. If there’s one thing I can promise you is that, after completing this course, you’ll be looking at charts at a completely different way. You will be able to distinguish good and bad visualizations, and, more importantly, you will be able to tell when a graph is lying and how to correct it.
If you need to analyze, present or communicate data professionally at some point, this course is a must. Actually, even if you don’t need to actually draw plots for a living, this course is hugely useful. After all, we are all consumers of data visualizations, and we need to identify when charts are lying to us. (As an example, my mother attended one of my classes and now she’s spotting mistakes in a lot of the media she sees everyday!)
I really encourage you to deepen your knowledge on Data Visualization. It’s not a difficult topic, and we will start from the basics. You don’t need any previous knowledge. I’ll teach you everything you need to know along the way and we’ll go straight to the point. No rambling. I really hope to see you in class!
Graphical Perception
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1Introduction
Everybody talks about Data Visualization currently. But do actually you know what is it?
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2About this course: the 5 Ws
In this video I'll break down the course structure for you and you'll be ready to start!
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3Examples of Data Visualization
In this lesson we'll review different examples of real-world Data Visualization and we'll discuss whether they are good or bad.
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4The Problem with Data Visualization
From the previous lesson we've learnt there's a problem in Data Visualization. In this lesson we explore why does this happen and how can we do to prevent it from happening.
The Golden Rules of Data Visualization
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5A very quick interruption...
The quickest interruption you'll ever see. Much less annoying than an unwanted phone call. I promise.
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6Introduction to this Chapter
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7The science of human graphical perception
In this lesson I'll introduce the keystone work on human graphical perception. We'll learn that the ability of humans to decode graphs can be quantified.
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8The Elementary Perceptual Tasks (Part 1)
In this lesson we will review the tasks of decoding position in a common scale, position in non-aligned scales, length, direction and angle. We will provide some real examples to get an idea of how difficult it is to perform each of these tasks.
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9The Elementary Perceptual Tasks (Part 2)
In this lesson we will continue with some other (maybe more difficult?) tasks.
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10How good is your Graphical Perception?
This is a quiz to test your graphical perception. This is not meant to evaluate your knowledge on the topic, it's just a fun way to realize some tasks are very difficult to do!
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11The Ranking of the Elementary Perceptual Tasks
In this lesson we'll finally know which tasks are easy and accurate to do, and which tasks are the most difficult ones, meaning we must stay away from them.
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12Identify the Elementary Perceptual Tasks
Test your knowledge about human graphical perception!
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13Redesigning charts
Now that we know which tasks are best to use, we can question our current graph choices and modify them accordingly.
Statistical Traps: How not to fall in them
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14Introduction to this Chapter
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15Graphical Excellence
In this lesson you'll learn the must-follow rules of Data Visualization.
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16Graphical Distortion
Sometimes a data visualization tries is built so that it exaggerates the effects present in the data. If this happens, we say there's graphical distortion. In this lesson we'll see some examples of that.
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17Graphical Integrity: The Lie Factor
In this lesson we'll start the important chapter on Graphical Integrity. In other words, we will learn how graphs lie. In this particular lesson we'll learn that we can quantify how much a graph is lying and we'll learn to calculate that.
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18Exercise: Calculate the Lie Factor (updated!)
In this lesson it's your turn to calculate the lie factor from a plot. Let's see if you get it right!
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19Labeling and Annotation
Labeling and annotation can greatly improve your graph. In this lesson we'll discuss the main uses of annotation.
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20Data Variation vs. Design Variation
This is a crucial lecture. Do not miss this, because this mistake happens very often in graphs out there.
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21The problem with dimensions
Another principle of Graphical Integrity talks about dimensions. In this lesson we'll learn how many dimensions our chart should have and how to count them.
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22Some advice regarding dimensions
Fancy a 3D graph? Well, I'm not sure you'll think the same after this lesson.
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23The Data-Ink Ratio
Let's talk about graphical sophistication. These tricks will help us achieve a better-looking, more efficient plot. In this lesson you'll learn to optimize the data-ink ratio to produce cleaner plots.
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24Data Density
Do you know our eyes can perceive a lot of detailed graphical information? In this lesson you'll learn the concept of data density, and how to apply it to your plots.
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25Proportion and Scale
Lastly, let's discuss proportion and scale. Should your plot be in horizontal mode? Or vertical maybe? What aspect ratio should you use?
Plots: Find the correct plot for your data
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26Correlation doesn't sell newspapers
Have you ever heard the saying "correlation doesn't imply causality"? In this lesson we will discuss the difference between association, correlation and causality, and we'll explore the different explanations of why two variables might display a correlation.
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27Selection Bias and Data Attrition
In this lecture we'll discuss one problem that affects the data underlying many plots: selection bias and its "cousin" attrition bias.
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28The Importance of Context
When we plot some data, it's important to take into account all of the data that's important for our analysis. In this lesson we'll learn that quoting data out of its context can be tragic.
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29The Incorrect Normalization of the Data
Sometimes we cannot extract conclusions from a plot because the data is not properly normalized. You have seen examples of this for sure, buy maybe you didn't realize it. Let's review this problem in this lesson.
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30The Simpson's Paradox
Now let's review a famous effect: some data looks very different if we plot the aggregated data versus if we plot the different subgroups. In this lesson you'll learn why this happens.
Plot Crimes
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31Wait, do you really need a plot?
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32Types of Plots
In this lesson we'll review the classification of the different types of plots according to their purpose.
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33Plotting Distributions
If you have multiple observations of the same variable and want to see how they look like, it looks like you need to plot a distribution. In this lesson we will discuss the many alternatives, how they work and how to use them.
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34Plotting Relationships between variables
If you want to compare several variables to see how they depend on one another, you'll need to use the plots we'll learn in this lesson.
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35Plotting Rankings
The typical bar plot, the modern lollipop plot, and some other non-recommendable alternatives for displaying rankings are discussed in this lesson.
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36Comparing Part to Whole
To compare part to the whole most of the people go for a Pie Chart. But honestly, in 2022, don't we have better alternatives to the Pie Chart? Luckily, we do. In this lesson we'll learn how to depict comparisons of part to whole properly.
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37Plotting spatial data: Maps
Maps are a very specialized topic. In this lesson we'll review what we can draw by using maps and we'll learn some tricks from the best data visualization agencies.
What Next?
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38Introduction to the chapter
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39When is it okay to cut the Y-axis?
This is a very, very common mistake. Still, people who draws graphs every day don't know when is it okay to cut the Y-axis and when is it mandatory to start at zero. After this lesson you know what to do in each situation.
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40Shading the Area of a Line Plot
The internet is full of line plots with a shaded area underneath. Actually, they look fantastic. But there is a big conceptual problem with shading an area plot.
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41The Spaghetti Chart
Spaghetti charts happen very often when we draw line plots that are too cluttered. In this lesson you'll learn a few tricks to avoid them.
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42Error bars and the Dynamite Plot
Have you ever seen a Dynamite Plot? I bet you have, but you didn't realize it. In this lesson we will review the purpose of error bars and we'll learn some alternatives to the dreadful Dynamite Plot.
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43How to choose the right colors
Color is very, very important in Data Visualization. But, do you know what is the purpose of color? Do you know how to choose the right color palette?
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44Common mistakes with color
Let's review the most common color mistakes so that we avoid committing a color crime!
How long do I have access to the course materials?
You can view and review the lecture materials indefinitely, like an on-demand channel.
Can I take my courses with me wherever I go?
Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don't have an internet connection, some instructors also let their students download course lectures. That's up to the instructor though, so make sure you get on their good side!
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