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This project contains the data to reproduce the results of two papers: Paper 1 - Spatial generalization in sketch maps: A systematic classification. (published) Paper 2 - An algorithmic approach to detect generalization in sketch maps from sketch map alignment. (submitted) The training map is also used in the data analysis, because raters could immediately understand the process and didn't need a training making the data includable. Paper 1 Results: The sketch maps used can be found in the github repository[ \[Github link\]][1]. The data analysis was done using R For running the script: 1. you can either directly click on [![Binder](https://mybinder.org/badge_logo.svg)](https://mybinder.org/v2/gh/CharuManivannan/Generalization---an-issue-in-Sketch-map-alignment/HEAD?urlpath=rstudio) On the right side, in the files tab, please select "Agreementanalysis.Rmd" and Click Run --> Run all. 2. If the binder does not work for you, you can also download the github repository. Unzip the folder.This method requires you to download R studio Version 1.4.1106. Open R studio --> Open install.R --> run. This will install all the required packages. Open "Agreementanalysis.Rmd" and either knit or run --> run all. On successful running of the script, you should be able to get two results given in Table 8 of the associated paper 1. Paper 2 Results: Navigate to the folder "resultsfromonlinetool" in the [github][2] repository and follow the readme file. [1]: https://github.com/CharuManivannan/Generalization-in-Sketch-map [2]: https://github.com/CharuManivannan/Generalization-in-Sketch-map
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