Title: Visualization in science
1Visualization in science
2What is visualization?
- dictionary Visualisation is a relatively new
term which describes the process of representing
information or ideas by diagrams or graphs. - expansion maps, plots, animations, video,
movies, ...
3- You must never tell a thing. You must illustrate
it. We learn through the eye and not the noggin.
Will Rogers (1879 - 1935)
4- One picture is worth ten thousand words.
- Frederick R. Barnard Printer's Ink
- 10.03.1927.
5JMP
- The greatest value of a picture is when it forces
us to notice what we never expected to see. - John Tukey
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7History
- till 16th century data visualization maps
8the oldest known map (town map)6200 BCMuseum at
Konya, Turkey
9the first world map- Anaximander from Miletus
in Asia Minor (610-546 BC), Turkey (his map has
been lost, Herodotus describes it in books The
Histories II IV)
10History
- in 15th century - Nikolaus Krebs (Nicholas of
Cusa, Nicolaus Cusanus) developed graphs of
distance vs. speed, presumably of the theoretical
relation - during 16th century - development of geometric
diagrams and various maps for data exploration
official start of data visualization - during 17th century - analytic geometry (René
Descartes, Pierre de Fermat, ...) , theories of
errors of measurement and estimation, the birth
of probability theory, and the beginnings of
demographic statistics and '' political
arithmetic''
11What do we see?
12Human visual system
- human sight reacts more intensively on contrast
than on intensity - colors which we see are not completely
identical to the colors in the nature - purpose of human sight is constant object
recognition regardless of angles, distance or
lighting
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14Seeing is a Complex Process
- Our brain constructs image from
- information from our eyes
- information stored in our brain
15perception
- process of collecting information about world
through our senses and their interpreting - perception depends on cultural heritage
- perception changes with experience
16Do you ever get something like this via e-mail?
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22Optical illusions
- Illusions trick us into perceiving something
differently than it actually exists, so what we
see does not correspond to physical reality. The
word illusion comes from the Latin verb illudere
meaning, "to mock."
23Why are optical illusions important for data
visualization?
- inappropriate visual stimulation can confuse our
brain - manipulative visual stimulation can cause wrong
interpretation
24Optical illusions
- Problems with visual perception
- area
- angles
- perspective
25How much is the area of circle B?
A B
26angle problem
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28perspective problem
29co-effects
30Müller-Lyer
31co-effects
32co-effects
33co-effects (pattern completion)
34Johann Poggendorffs illusion
35co-effects
36co-effects
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38co-effects
39co-effects
40Eye Test
41experiment
- volunteer
- Look at words from left to right. Say aloud the
color of the text. Dont read text. - DUBROVNIK
42ŽUTA PLAVA NARANCASTA CRNA CRVENA
ZELENA LJUBICASTA ŽUTA CRVENA NARANCASTA ZELENA
CRNA PLAVA CRVENA LJUBICASTA ZELENA PLAVA
NARANCASTA
43YELLOW BLUE ORANGE BLACK RED GREEN PURPLE YELLOW
RED ORANGE GREEN BLACK BLUE RED PURPLE GREEN
BLUE ORANGE
44This is left-side/right-side-brain conflict.
Right-side-brain tries to say color but
left-side-brain insists on reading the word.
45Color Meaning
- Colors are non-verbal communication. They have
symbolism and color meanings that go beyond ink. - red action, confidence, courage, vitality
- blue unity, harmony, calmness, coolness,
conservatism - yellow joy, optimism, summer, cowardice, greed
- green spring, fertility, youth, environment, good
luck - orange energy, heat, enthusiasm, playfulness
- purple royalty, nobility, ceremony, magic,
mystery - pink femininity, love, beauty
46male
female
47Color Blindness Ishihara Test for Color Blindness
About 12 - 20 percent of white males and a tiny
fraction of females are color blind.
Normal Color Vision
Red-Green Color Blind Left Middle Right
Left Middle Right Top 25
29 45 25 Spots
Spots Bottom 56 6 8
56 Spots Spots
1
48small squares same color or not?
49theory ....
- Edward E. Tufte (professor emeritus of
statistics, graphic design, and political
economy) - "The Leonardo da Vinci of data."New York Times
- he coined the term "chartjunk.
50chartjunk
- This chart shows only five hard-to-read numbers,
1, 2, 4, 8 and 16, but the digital file of the
image is 11216 bytes (numbers) in size.
51theory....
- Tufte uses the term data-ink ratio and argues
strongly against the inclusion of any
non-informative decoration in visual
presentations of quantitative information and
claims that ink should only be used to convey
significant data and aid in its interpretation.
52- Lurking behind chartjunk is contempt both for
information and for the audience. Chartjunk
promoters imagine that numbers and details are
boring, dull, and tedious, requiring ornament to
enliven. Cosmetic decoration, which frequently
distorts the data, will never salvage an
underlying lack of content. - If the numbers are boring, then you've got the
wrong numbers. - Credibility vanishes in clouds of chartjunk who
would trust a chart that looks like a video game? - Edward Tufte, "Envisioning Information", 1990
53- If a picture is not worth a 1000 words, to hell
with it! - Ad Reinhardt
54the best statistical graphic ever drawn
- Like good writing, good graphical displays of
data communicate ideas with clarity, precision,
and efficiency.
55- The French engineer, Charles Minard (1781-1870),
illustrated the disastrous result of Napoleon's
failed Russian campaign of 1812. The graph shows
the size of the army by the width of the band
across the map of the campaign on its outward and
return legs, with temperature on the retreat
shown on the line graph at the bottom. - Many consider Minard's original the best
statistical graphic ever drawn. - Why?
56the best statistical graphic ever drawn
- He took a two dimensional space and managed to
accurately depict five data variables size of
invading army, size of retreating army,
geographic location, temperature, and of course,
time. The multivariate data is presented in such
a way as to provide an intriguing narrative as to
the fate of Napoleons army.
57 58- cholera epidemic in London 1854.
- Dr. John Snow (1855) observed that cholera
occurred almost entirely among those who lived
near (and drank from) the Broad Street water
pump. He had the handle of the contaminated pump
removed, ending the neighborhood epidemic which
had taken more than 500 lives.
59- Florence Nightingale - mother of modern nursing
- After witnessing deplorable sanitary conditions
in the Crimea, she wrote Notes on Matters
Affecting the Health, Efficiency and Hospital
Administration of the British Army (1858), an
influential text including several graphs which
she called "Coxcombs". This figure (reproduced
with SAS/Graph) makes it abundantly clear that
far more deaths were attributable to non-battle
causes ("preventable causes") than to
battle-related causes.
60Escaping the 2D plane The Stereogram By the end
of the 19th century, as more statistical data
became available, the limitations of 2 dimensions
of the plane for the representation of data were
becoming more apparent. Several systems for
representing 3D data were developed between
1869-1880. - author Luigi Perozzo - Annali di
Statistica, 1880. - this figure shows the
population of Sweden from 1750-1875 by age groups
61Chemical examples
- 1. periodic table of chemical elements
- Dimitri Mendeleev (1834-1907, Russian chemist)
- He predicted the chemical and physical properties
of unknown elements (e.g. Ga, Ge), and left
spaces open in his periodic table for them. - order in periodic table by mass number
62Chemical examples
- 2. wavelengths of the X-ray emissions of the
elements - Henry Moseley (1887-1915, British chemist,
Rutherfords student)
In 1913 Moseley published the results of his
measurements of the wavelengths of the X-ray
spectral lines of a number of elements which
showed that the ordering of the wavelengths of
the X-ray emissions of the elements coincided
with the ordering of the elements by atomic
number. It became apparent that atomic weight was
not the significant player in the periodic law as
Mendeleev, Meyers and others had proposed, but
rather, the properties of the elements varied
periodically with atomic number.
63Chemical examples
- 2. wavelengths of the X-ray emissions of the
elements - Henry Moseley (1887-1915, British chemist,
Rutherfords student)
Moseley's graph represents an outstanding piece
of numerical and graphical detective work. He
noted that there were slight departures from
linearity which he could not explain nor could
he explain the multiple lines at the top and
bottom of the figure. The explanation came later
with the discovery of the spin of the electron.
64the Worst Statistical Graphics ....
- Like poor writing, bad graphical displays distort
or obscure the data, make it harder to understand
or compare, or otherwise thwart the communicative
effect which the graph should convey.
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75Profits!!!!
76- range 9
- 105,832 105,837 105,838 105,841
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82Bureau of Justice Statistics
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106David W. Roubik, 1978. Robert M. Hazen
107384 plots and 1 map
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112Literature
- SRCE
- http//www.srce.hr/stat-sas/tecajevi.html
- Gallery of Data Visualization - The Best and
Worst of Statistical Graphics - http//www.math.yorku.ca/SCS/Gallery/
- Milestones in the History of Thematic
Cartography, Statistical Graphics, and Data
Visualization - http//www.math.yorku.ca/SCS/Gallery/milestone/
- Predavanja Ross Ihaka (Statistics 120 -
Information Visualisation) - http//www.stat.auckland.ac.nz/ihaka/120/
- http//www.math.yorku.ca/SCS/sugi/saslogo.html
- http//chemweb.calpoly.edu/ (Jennifer Retsek's
Homepage) - http//www.ritsumei.ac.jp/akitaoka/index-e.html
- http//junkcharts.typepad.com/
- http//www-personal.engin.umich.edu/jpboyd/sciviz
_1_graphbadly.pdf - http//CAUSEweb_org
- https//www.edwardtufte.com/
- http//www.csc.villanova.edu/map/1040/Tufte1.ppt
1 - http//homepages.dcc.ufmg.br/jussara/metq/aula10.
ppt89 - http//www.gautschy.ch/alfred/SciIll/CraftingIll.
html