https://github.com/claudiozandonella/eliciting-effect-size
Science Score: 23.0%
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- Host: GitHub
- Owner: ClaudioZandonella
- License: gpl-3.0
- Language: R
- Default Branch: master
- Size: 7.13 MB
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Created over 7 years ago
· Last pushed about 7 years ago
https://github.com/ClaudioZandonella/Eliciting-Effect-Size/blob/master/
# Eliciting Effect Size - Shiny App #### C. Zandonella Callegher, E. Toffalini & G. Alto [](https://doi.org/10.5281/zenodo.2564852)
Try the app at: http://147.162.129.70:8788/WS2019/ ## Inroduction The present Shiny-App is an example of user-friendly method to directly elicit and formalize experts' knowledge about effect sizes when we are interested in the difference between the mean scores of two groups on a continuous variable. We used as an example average boys' and girls' height.
On average who is taller between boys and girls?
It looks like an easy question, but would you be able to evaluate how the average heights of boys and girls change according to age?
The present App will drive the user through an elicitation process, using an adaptation of the 'trial roulette' approach, to answer to the above question. The user will assign chisp on possible values according to his or her knowledge and uncertanty.
However, users will not refer to heights in meters or centimeters, but only to the probability of being taller in a comparison. This allows to consider effects sizes in terms of the probability of superiority or Cohen's U3; index. These different formulations have the advantages to not refer to any unit of measure but only to probabilities and can be more easily understood.
## App Guide In order to run the app you have to download all the material you find in the "Shiny App" folder (remember the "www" folder). In the first part of the App code you find the "Customizable Settings" section where you can change some aspects of the App as the number of chips used, the ages to consider, wich index to consider ("CL" or "U3;") and other settings.
For any other further information you can send me an e-mail: claudiozandonella@gmail.com
Owner
- Name: Claudio Zandonella Callegher
- Login: ClaudioZandonella
- Kind: user
- Location: Bolzano, Italy
- Company: Eurac Research Institute for Renewable Energy
- Website: https://claudiozandonella.netlify.app/
- Twitter: ClaudioZandone1
- Repositories: 25
- Profile: https://github.com/ClaudioZandonella
I fell in love with data science! Collecting data, formulating hypotheses, and building models - this is a very creative and exciting process!
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