salientgoodself

This repository were used for analyzing data from my behavioral experiments

https://github.com/hcp4715/salientgoodself

Science Score: 39.0%

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  • codemeta.json file
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  • .zenodo.json file
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  • DOI references
    Found 4 DOI reference(s) in README
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  • Scientific vocabulary similarity
    Low similarity (7.6%) to scientific vocabulary
Last synced: 10 months ago · JSON representation

Repository

This repository were used for analyzing data from my behavioral experiments

Basic Info
  • Host: GitHub
  • Owner: hcp4715
  • Language: R
  • Default Branch: master
  • Size: 130 MB
Statistics
  • Stars: 4
  • Watchers: 1
  • Forks: 4
  • Open Issues: 1
  • Releases: 3
Created over 10 years ago · Last pushed about 2 years ago
Metadata Files
Readme Citation

README.md

Notebook for "Self-referencing prioritizes moral character on perceptual matching"

Authors: Hu Chuan-Peng, Kaiping Peng, Jie Sui

Corresponding email address: hcp4715@hotmail.com

Purpose

This repository is an on-going notebook that analyzes results from a series of experiments on prioritization of good person in perceptual matching task. In total, ten experiments were included (total N = 404).

The scripts were made public to increasing the transparency and reproducibility of this study, all de-identified raw data were uploaded.

Links:

Preprint: https://psyarxiv.com/39zgf/

OSF Project: https://osf.io/83dyj/

Zenodo: https://doi.org/10.5281/zenodo.8031073

Scripts & their functions:

This repo included scripts from raw data pre-processing to manuscript generating (using papaja).

Key scripts

Initial.r: The r script for initialization, using in Notebook_Pos_Self_Salience_APA.rmd.

Initial_suppl_simple: The r script for initialization, using in Suppl_Materials_individual_Exp.rmd.

Load_save_data.r: I used this script to read raw data (.csv files) of each experiment.

Notebook_Pos_Self_Salience_APA.rmd: the main Rmarkdown file that include the latest analysis and results.

Notebook_Pos_Self_Salience_APA.pdf: the output from the above-mentioned r markdown file that presenting the latest results.

general_method.rmd: the method section of the above rmd file.

Suppl_Materials_individual_Exp.rmd: the supplementary RMarkdown file for individual studies.

Suppl_Materials_individual_Exp.pdf: the output of the above supplementary RMarkdown file.

Folder structure

root_dir │ README.md │ Initial.r │ Initial_suppl_simple.r │ Load_save_data.r # load data from each exp, exclude invalid participants' data and save │ AllData.RData # all data │ Data4manu.RData # all data for the current manuscript │ Exp_info_all.csv # information about all exp included in the current manuscript │ general_method.rmd │ Notebook_Pos_Self_Salience_APA.rmd │ Notebook_Pos_Self_Salience_APA.pdf │ Suppl_Materials_individual_Exp_simple.rmd │ Suppl_Materials_individual_Exp_simple.pdf │ endnote.bib │ r-reference.bib │ └───exp1a │ │ rawdata_behav_exp1a_201404_export_2019.csv │ │ rawdata_behav_exp1a_201704_export_2019.csv │ └───exp1b │ │ rawdata_behav_exp1b_201410_export_2019.csv │ │ rawdata_behav_exp1b_201705_export_2019.csv │ └───exp1c │ │ rawdata_behav_exp1c_export_2019.csv │ └───exp2 │ │ rawdata_behav_exp2_201405_export_2019.csv │ └───exp3a │ │ rawdata_behav_exp3a_2014_export_2019.csv │ └───exp3b │ │ rawdata_behav_exp3b_201704_export_2019.csv │ └───exp4a │ │ rawdata_behav_exp4a_2015_export_2019.csv │ │ rawdata_behav_exp4a_2017_export_2019.csv │ └───exp4b │ │ rawdata_behav_exp4b_2015_export_2019.csv │ │ rawdata_behav_exp4b_2017_export_2019.csv │ └───exp5_specificity │ │ rawdata_behav_exp5_2016_export_2019.csv │ └───exp6a_erp1 │ │ rawdata_ERP_exp6a_201412_export_2019.csv │ └───exp6b_erp2 │ │ rawdata_erp_exp6b_d1_2016_export_2019.csv │ └───exp7 │ │ rawdata_behav_exp7a_2016.csv # data from Hu et al 2020, collabra: psychology │ │ rawdata_behav_exp7b_2018.csv # data from Hu et al 2020, collabra: psychology │ └───scales │ FADGS_dataset4_1_clean.csv # questionnaire data, see Liu et al 2020, J Open Psych Data

Owner

  • Name: Hu Chuan-Peng
  • Login: hcp4715
  • Kind: user
  • Location: Nanjing, China
  • Company: Nanjing Normal University

School of Psychology, Nanjing Normal Uni

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