How to spot a misleading graph - Lea Gaslowitz

3,014,091 views ・ 2017-07-06

TED-Ed


Please double-click on the English subtitles below to play the video.

00:07
A toothpaste brand claims their product will destroy more plaque
0
7808
3031
00:10
than any product ever made.
1
10839
2071
00:12
A politician tells you their plan will create the most jobs.
2
12910
3501
00:16
We're so used to hearing these kinds of exaggerations
3
16411
2540
00:18
in advertising and politics
4
18951
1899
00:20
that we might not even bat an eye.
5
20850
2281
00:23
But what about when the claim is accompanied by a graph?
6
23131
2980
00:26
Afterall, a graph isn't an opinion.
7
26111
2360
00:28
It represents cold, hard numbers, and who can argue with those?
8
28471
4140
00:32
Yet, as it turns out, there are plenty of ways graphs can mislead
9
32611
3792
00:36
and outright manipulate.
10
36403
1789
00:38
Here are some things to look out for.
11
38192
2553
00:40
In this 1992 ad, Chevy claimed to make the most reliable trucks in America
12
40745
5015
00:45
using this graph.
13
45760
1750
00:47
Not only does it show that 98% of all Chevy trucks sold in the last ten years
14
47510
4453
00:51
are still on the road,
15
51963
1629
00:53
but it looks like they're twice as dependable as Toyota trucks.
16
53592
3746
00:57
That is, until you take a closer look at the numbers on the left
17
57338
3296
01:00
and see that the figure for Toyota is about 96.5%.
18
60634
4838
01:05
The scale only goes between 95 and 100%.
19
65472
3841
01:09
If it went from 0 to 100, it would look like this.
20
69313
3650
01:12
This is one of the most common ways graphs misrepresent data,
21
72963
3280
01:16
by distorting the scale.
22
76243
2090
01:18
Zooming in on a small portion of the y-axis
23
78333
2471
01:20
exaggerates a barely detectable difference between the things being compared.
24
80804
4899
01:25
And it's especially misleading with bar graphs
25
85703
2271
01:27
since we assume the difference in the size of the bars
26
87974
3049
01:31
is proportional to the values.
27
91023
2210
01:33
But the scale can also be distorted along the x-axis,
28
93233
2892
01:36
usually in line graphs showing something changing over time.
29
96125
4289
01:40
This chart showing the rise in American unemployment from 2008 to 2010
30
100414
4333
01:44
manipulates the x-axis in two ways.
31
104747
3249
01:47
First of all, the scale is inconsistent,
32
107996
2399
01:50
compressing the 15-month span after March 2009
33
110395
3021
01:53
to look shorter than the preceding six months.
34
113416
3339
01:56
Using more consistent data points gives a different picture
35
116755
3351
02:00
with job losses tapering off by the end of 2009.
36
120106
3599
02:03
And if you wonder why they were increasing in the first place,
37
123705
2970
02:06
the timeline starts immediately after the U.S.'s biggest financial collapse
38
126675
3940
02:10
since the Great Depression.
39
130615
2011
02:12
These techniques are known as cherry picking.
40
132626
2593
02:15
A time range can be carefully chosen to exclude the impact of a major event
41
135219
3650
02:18
right outside it.
42
138869
1779
02:20
And picking specific data points can hide important changes in between.
43
140648
4114
02:24
Even when there's nothing wrong with the graph itself,
44
144762
2594
02:27
leaving out relevant data can give a misleading impression.
45
147356
3581
02:30
This chart of how many people watch the Super Bowl each year
46
150937
3060
02:33
makes it look like the event's popularity is exploding.
47
153997
3629
02:37
But it's not accounting for population growth.
48
157626
2572
02:40
The ratings have actually held steady
49
160198
1769
02:41
because while the number of football fans has increased,
50
161967
3142
02:45
their share of overall viewership has not.
51
165109
2850
02:47
Finally, a graph can't tell you much
52
167959
1929
02:49
if you don't know the full significance of what's being presented.
53
169888
3430
02:53
Both of the following graphs use the same ocean temperature data
54
173318
3139
02:56
from the National Centers for Environmental Information.
55
176457
3262
02:59
So why do they seem to give opposite impressions?
56
179719
2771
03:02
The first graph plots the average annual ocean temperature
57
182490
2789
03:05
from 1880 to 2016,
58
185279
2708
03:07
making the change look insignificant.
59
187987
2162
03:10
But in fact, a rise of even half a degree Celsius
60
190149
2729
03:12
can cause massive ecological disruption.
61
192878
2921
03:15
This is why the second graph,
62
195799
1420
03:17
which show the average temperature variation each year,
63
197219
2639
03:19
is far more significant.
64
199858
2532
03:22
When they're used well, graphs can help us intuitively grasp complex data.
65
202390
4989
03:27
But as visual software has enabled more usage of graphs throughout all media,
66
207379
3801
03:31
it's also made them easier to use in a careless or dishonest way.
67
211180
4720
03:35
So the next time you see a graph, don't be swayed by the lines and curves.
68
215900
3660
03:39
Look at the labels,
69
219560
1322
03:40
the numbers,
70
220882
1248
03:42
the scale,
71
222130
918
03:43
and the context,
72
223048
1312
03:44
and ask what story the picture is trying to tell.
73
224360
2420
About this website

This site will introduce you to YouTube videos that are useful for learning English. You will see English lessons taught by top-notch teachers from around the world. Double-click on the English subtitles displayed on each video page to play the video from there. The subtitles scroll in sync with the video playback. If you have any comments or requests, please contact us using this contact form.

https://forms.gle/WvT1wiN1qDtmnspy7