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This was the code I use to process a Multinomial Logistic Regression on R, with the Apollo Choice Modeling Package for R. Used to calculate the utility function of particular customers of vehicles in Bogotá, Colombia
Binary logit based on the Mobility and Transport Microcensus 2015 explaining the "choice" of working - at least from time to time - from home in Switzerland.
Lab experiment implemented with PyQT to study the impact of time perception on route choice decisions. It presents choice scenarios using animations or numerical attributes.
This repository contains R code that analyzes data gathered from a lab experiment that studies the influence of time perception on route choices in public transport
Introducing the Apollo Choice Modelling for Penalty Shot Prediction GitHub repository. Utilizing Apollo choice modeling, our code predicts soccer penalty shots. Featuring a user-friendly R Shiny app, the model considers player data, shot locations, and goalkeeper behavior to estimate shot success.
The model that has been uploaded to this repository aspires to describe routing behavior of micro-mobility modes, e.g., e-bikes and e-scooters, in relationship with traditional modes, e.g., private car and walking.