More creative ways to present statistical results / data

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More creative ways to present statistical results / data. y-axis. or “the worst graphs ever” !?. The next examples are taken from a web-page that shares educational material for teachers (the graphs were actually published in newspapers and magazines) - PowerPoint PPT Presentation

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More creative ways to present statistical results / data

y-axis

x-axis

or “the worst graphs ever” !?

The next examples are taken from a web-pagethat shares educational material for teachers(the graphs were actually published in newspapers and magazines)

http://dpcdsb-gains.wikispaces.com/file/view/Worst+Graphs+Ever.pdf/126543183/Worst%20Graphs%20Ever.pdf (retrieved March 2014)

More creative ways to present statistical results / data

y-axis

x-axis

Note: When talkingabout regression

We say“y is regressed on x”

y-axis

x-axis

1955 1965

Δx=10yr

Δ

Δx=2yr

1973 1975

y-axis

x-axis

1955 1965

Δx=10yr

Δ

Δx=2yr

1973 1975

$58,000

$50,000

$16,000

$29,000

Δy=$8,000

Δy=$13,000

Δy/Δx=$8,000/2yr

Δy/Δx=$13,000/10yr

1940 1960 1980

$20,000

$40,000

$60,000

Distance (y-axis)

Time (x-axis)

Δy=0.5mile

Δy=4miles

Distortion factor ( ‘Lie-factor’)

And the objective presentation of the data

Some more creative ways to hide or distort the statistical results…

El Niño region SST departures (anomalies) (oC)

measured in different regions of the tropical

Pacific

Climate Variability:El Niño - Southern Oscillation

(SST: Sea Surface Temperature)

El Niño Region SST Departures (oC) Recent Evolution

Climate Variability:El Niño - Southern Oscillation

Image source: http://www.ncdc.noaa.gov/paleo/pubs/cobb2003/cobb2003.html

Fossil corals

Climate Variability:El Niño - Southern

Oscillation

Cobb, K.M., C.D. Charles, H. Cheng & R.L. Edwards, 2003,El Niño-Southern Oscillation and tropical Pacific climate during the last millennium. Nature, Vol. 424, No. 6946, pp. 271 - 276 (17 July 2003).

Red: Observed SST anomaliesBlack : Coral reconstructions(oxygen isotopes)

Climate Variability:El Niño - Southern Oscillation

http://www.ncdc.noaa.gov/paleo/pubs/cobb2003/cobb2003.html

Cobb, K.M., C.D. Charles, H. Cheng & R.L. Edwards, 2003,El Niño-Southern Oscillation and tropical Pacific climate during the last millennium. Nature, Vol. 424, No. 6946, pp. 271 - 276 (17 July 2003).

Reconstructed Climate Variability:A.D. 1320-1480

http://www.ncdc.noaa.gov/paleo/pubs/cobb2003/cobb2003.html

Effect of ENSO on Global Rainfall

http://precip.gsfc.nasa.gov/rain_pages/el_nino_vsn2.html

From Prof. Aiguo Dai’s paper in Geophysical Research Letters (2000)

Global Teleconnection Pattern

Effect of ENSO on Global Rainfall

http://precip.gsfc.nasa.gov/rain_pages/el_nino_vsn2.html

U.S. Temperature and Precipitation Departures During the Last 30 and 90 Days

30-day (ending 22 Mar 2014) temperature departures (degree C)

90-day (ending 22 Mar 2014) % of average precipitation

90-day (ending 22 Mar 2014) temperature departures (degree C)

Last 30 Days

Last 90 Days

30-day (ending 22 Mar 2014) % of average precipitation

R-scripts and data update• We will work in the next weeks with ENSO and local climate data.We will explore if we find correlations between rainfall and temperatures in

the state of New York and ENSO.Please update the following files in your local scripts-directory (If you have not done so already in class (April 27th, 2014)):

myfunctions.Rclimatology.Rplot_climatology.Rclass12.Rclass15.R

http://www.atmos.albany.edu/facstaff/timm/ATM315spring14/R/

R-scripts and data updatePlease update the following file in your local data-directory (If you have not done so already in class (April 27th, 2014)):

create a local subdirectory named ‘NY’ (for New York State)then download some of the USW station data files

NOTE: ghcnd-stations-NY.csv you open in R-studio (or text edito)To see a list of stations with geographic locations and the name of th station.

http://www.atmos.albany.edu/facstaff/timm/ATM315spring14/R/data/NY/

Processing new station data

1) Calculate the 1981-2010 climatology with climatology.R ( input is e.g. USW00094789_tavg_mon_mean.asc)

This creates two output files (a) the monthly mean climatology)( e.g. USW00094789_tavg_mon_mean_climc_1981-2010.csv)

(b) the monthly mean anomalies( e.g. USW00094789_tavg_mon_mean_ano.asc)

Processing new station data

Processing new station data2) Use plot_climatology.Rto see the climatological cycle

Processing new station data3) Use class15.RTo work the newly createdanomaly data files to comparethe time evolution and studythe correlation between twostations.

Processing new station data3) Use class15.RTo work the newly createdanomaly data files to comparethe time evolution and studythe correlation between twostations.

Note: If there are gapsin the data, the programdoes not do the calculation(this will be fixed …)