--- preprocessing: data_order0: - method: data_order param: 0 data_order1: - method: data_order param: 1 data_politics: - method: data_order param: 0 - method: data_section param: 'Politics' data_foreign_affairs: - method: data_order param: 0 - method: data_section param: 'Foreign affairs' data_science: - method: data_order param: 0 - method: data_section param: 'Science' data_economy: - method: data_order param: 0 - method: data_section param: 'Economy' data_miscellaneous: - method: data_order param: 0 - method: data_section param: 'Miscellaneous' data_culture: - method: data_order param: 0 - method: data_section param: 'Culture' data_sports: - method: data_order param: 0 - method: data_section param: 'Sports' data_mobility: - method: data_order param: 0 - method: data_section param: 'Mobility' data_internet: - method: data_order param: 0 - method: data_section param: 'Internet' data_health: - method: data_order param: 0 - method: data_section param: 'Health' data_order0_with_minimum_one_vote: - method: data_order param: 0 - method: exclude_data_with_value param: {'column': 'totalvotes', 'value': 0} descriptive: - !descriptive_overview name: "Extended_Data_Table_1_Descriptive_Data_for_different_comment_levels" dataset: "data" group_by: "order" metrics: - operation: "count" column: null - operation: "count_nonzero" column: "totalvotes" - operation: "sum" column: "totalvotes" - operation: "mean" column: "totalvotes" - operation: "std_dev" column: "totalvotes" - operation: "sum" column: "upvotes" - operation: "sum" column: "downvotes" - operation: "mean" column: "bayes-corrected (q=0.25) valence" - operation: "std_dev" column: "bayes-corrected (q=0.25) valence" - operation: "mean" column: "bayes-corrected (q=0.25) extremity" - operation: "std_dev" column: "bayes-corrected (q=0.25) extremity" - !descriptive_overview name: "Extended_Data_Table_2_Descriptive_Data_for_different_news_categories" dataset: "data" group_by: "section" metrics: - operation: "count" column: null - operation: "sum" column: "number O(n+1)-replies" - operation: "count_nonzero" column: "number O(n+1)-replies" - operation: "count_nonzero" column: "totalvotes" - operation: "sum" column: "totalvotes" - operation: "sum" column: "upvotes" - operation: "sum" column: "downvotes" - operation: "count_nonzero" column: "totalvotes" - operation: "mean" column: "valence" - operation: "std_dev" column: "valence" - operation: "mean" column: "bayes-corrected (q=0.25) valence" - operation: "std_dev" column: "bayes-corrected (q=0.25) valence" - operation: "mean" column: "extremity" - operation: "std_dev" column: "extremity" - operation: "mean" column: "bayes-corrected (q=0.25) extremity" - operation: "std_dev" column: "bayes-corrected (q=0.25) extremity" analysis: - !linear_regression name: "Evidence_uncongeniality_simplest_model_linear_regression_only_valence_non_standardized" dataset: "data_order0" independent_variables: - 'valence' dependent_variable: 'number O(n+1)-replies' standardize: false report_effect_size: true - !linear_regression name: "Evidence_uncongeniality_preregistered_model" dataset: "data_order0" independent_variables: - 'bayes-corrected (q=0.25) valence' - 'totalvotes' dependent_variable: 'number O(n+1)-replies' standardize: true report_effect_size: true - !linear_regression name: "Evidence_uncongeniality_stability_against_variation_in_weight_q5" dataset: "data_order0" independent_variables: - 'bayes-corrected (q=0.5) valence' - 'totalvotes' dependent_variable: 'number O(n+1)-replies' standardize: true - !linear_regression name: "Evidence_uncongeniality_stability_against_variation_in_weight_q75" dataset: "data_order0" independent_variables: - 'bayes-corrected (q=0.75) valence' - 'totalvotes' dependent_variable: 'number O(n+1)-replies' standardize: true - !linear_regression name: "Evidence_uncongeniality_stability_against_variation_in_weight__no_bayes_correction" dataset: "data_order0" independent_variables: - 'valence' - 'totalvotes' dependent_variable: 'number O(n+1)-replies' standardize: true - !linear_regression_grouped name: "Evidence_uncongeniality_robustness_analysis_on_person_level" dataset: "data_order0" independent_variables: - 'bayes-corrected (q=0.25) valence' - 'totalvotes' dependent_variable: 'number O(n+1)-replies' aggregation_functions: - 'mean' - 'sum' - 'sum' group_by: 'user_id' standardize: true print_detailed_coefficients: true - !linear_regression_grouped name: "Evidence_uncongeniality_robustness_analysis_on_section_level" dataset: "data_order0" independent_variables: - 'bayes-corrected (q=0.25) valence' - 'totalvotes' dependent_variable: 'number O(n+1)-replies' aggregation_functions: - 'mean' - 'sum' - 'sum' group_by: 'section' standardize: true print_detailed_coefficients: true - !linear_regression name: "Evidence_uncongenialty_section_politics" dataset: "data_politics" independent_variables: - 'bayes-corrected (q=0.25) valence' - 'totalvotes' dependent_variable: 'number O(n+1)-replies' standardize: true - !linear_regression name: "Evidence_uncongenialty_section_affairs" dataset: "data_foreign_affairs" independent_variables: - 'bayes-corrected (q=0.25) valence' - 'totalvotes' dependent_variable: 'number O(n+1)-replies' standardize: true - !linear_regression name: "Evidence_uncongenialty_section_science" dataset: "data_science" independent_variables: - 'bayes-corrected (q=0.25) valence' - 'totalvotes' dependent_variable: 'number O(n+1)-replies' standardize: true - !linear_regression name: "Evidence_uncongenialty_section_economy" dataset: "data_economy" independent_variables: - 'bayes-corrected (q=0.25) valence' - 'totalvotes' dependent_variable: 'number O(n+1)-replies' standardize: true - !linear_regression name: "Evidence_uncongenialty_section_miscellaneous" dataset: "data_miscellaneous" independent_variables: - 'bayes-corrected (q=0.25) valence' - 'totalvotes' dependent_variable: 'number O(n+1)-replies' standardize: true - !linear_regression name: "Evidence_uncongenialty_section_culture" dataset: "data_culture" independent_variables: - 'bayes-corrected (q=0.25) valence' - 'totalvotes' dependent_variable: 'number O(n+1)-replies' standardize: true - !linear_regression name: "Evidence_uncongenialty_section_sports" dataset: "data_sports" independent_variables: - 'bayes-corrected (q=0.25) valence' - 'totalvotes' dependent_variable: 'number O(n+1)-replies' standardize: true - !linear_regression name: "Evidence_uncongenialty_section_mobility" dataset: "data_mobility" independent_variables: - 'bayes-corrected (q=0.25) valence' - 'totalvotes' dependent_variable: 'number O(n+1)-replies' standardize: true - !linear_regression name: "Evidence_uncongenialty_section_internet" dataset: "data_internet" independent_variables: - 'bayes-corrected (q=0.25) valence' - 'totalvotes' dependent_variable: 'number O(n+1)-replies' standardize: true - !linear_regression name: "Evidence_uncongenialty_section_health" dataset: "data_health" independent_variables: - 'bayes-corrected (q=0.25) valence' - 'totalvotes' dependent_variable: 'number O(n+1)-replies' standardize: true - !linear_regression name: "Evidence_uncongeniality_robustness_order1" dataset: "data_order1" independent_variables: - 'bayes-corrected (q=0.25) valence' - 'totalvotes' dependent_variable: 'number O(n+1)-replies' standardize: true - !linear_regression name: "Evidence_uncogeniality_model_with_seperate_upvotes_downvotes" dataset: "data_order0" independent_variables: - 'upvotes' - 'downvotes' dependent_variable: 'number O(n+1)-replies' standardize: true - !linear_regression name: "Evidence_antagonism_preregistered_model" dataset: "data_order0" independent_variables: - 'mean bayes-corrected (q=0.25) valence of replies' dependent_variable: 'bayes-corrected (q=0.25) valence' standardize: true - !linear_regression name: "Evidence_antagonism_stability_against_variation_in_weight_q5" dataset: "data_order0" independent_variables: - 'mean bayes-corrected (q=0.5) valence of replies' dependent_variable: 'bayes-corrected (q=0.5) valence' standardize: true - !linear_regression name: "Evidence_antagonism_stability_against_variation_in_weight_q75" dataset: "data_order0" independent_variables: - 'mean bayes-corrected (q=0.75) valence of replies' dependent_variable: 'bayes-corrected (q=0.75) valence' standardize: true - !linear_regression name: "Evidence_antagonism_stability_against_variation_in_weight_no_bayes_correction" dataset: "data_order0" independent_variables: - 'mean valence of replies' dependent_variable: 'valence' standardize: true - !linear_regression name: "Evidence_antagonism_section_politics" dataset: "data_politics" independent_variables: - 'mean bayes-corrected (q=0.25) valence of replies' dependent_variable: 'bayes-corrected (q=0.25) valence' standardize: true - !linear_regression name: "Evidence_antagonism_section_affairs" dataset: "data_foreign_affairs" independent_variables: - 'mean bayes-corrected (q=0.25) valence of replies' dependent_variable: 'bayes-corrected (q=0.25) valence' standardize: true - !linear_regression name: "Evidence_antagonism_section_science" dataset: "data_science" independent_variables: - 'mean bayes-corrected (q=0.25) valence of replies' dependent_variable: 'bayes-corrected (q=0.25) valence' standardize: true - !linear_regression name: "Evidence_antagonism_section_economy" dataset: "data_economy" independent_variables: - 'mean bayes-corrected (q=0.25) valence of replies' dependent_variable: 'bayes-corrected (q=0.25) valence' standardize: true - !linear_regression name: "Evidence_antagonism_section_miscellaneous" dataset: "data_miscellaneous" independent_variables: - 'mean bayes-corrected (q=0.25) valence of replies' dependent_variable: 'bayes-corrected (q=0.25) valence' standardize: true - !linear_regression name: "Evidence_antagonism_section_culture" dataset: "data_culture" independent_variables: - 'mean bayes-corrected (q=0.25) valence of replies' dependent_variable: 'bayes-corrected (q=0.25) valence' standardize: true - !linear_regression name: "Evidence_antagonism_section_sports" dataset: "data_sports" independent_variables: - 'mean bayes-corrected (q=0.25) valence of replies' dependent_variable: 'bayes-corrected (q=0.25) valence' standardize: true - !linear_regression name: "Evidence_antagonism_section_mobility" dataset: "data_mobility" independent_variables: - 'mean bayes-corrected (q=0.25) valence of replies' dependent_variable: 'bayes-corrected (q=0.25) valence' standardize: true - !linear_regression name: "Evidence_antagonism_section_internet" dataset: "data_internet" independent_variables: - 'mean bayes-corrected (q=0.25) valence of replies' dependent_variable: 'bayes-corrected (q=0.25) valence' standardize: true - !linear_regression name: "Evidence_antagonism_section_health" dataset: "data_health" independent_variables: - 'mean bayes-corrected (q=0.25) valence of replies' dependent_variable: 'bayes-corrected (q=0.25) valence' standardize: true - !linear_regression name: "Evidence_antagonism_robustness_order1" dataset: "data_order1" independent_variables: - 'mean bayes-corrected (q=0.25) valence of replies' dependent_variable: 'bayes-corrected (q=0.25) valence' standardize: true - !paired_ttest name: "Evidence_polarization_paired_ttest_extremity" dataset: "data_order0" variable_1: 'bayes-corrected (q=0.25) extremity' variable_2: 'mean bayes-corrected (q=0.25) extremity of replies' - !paired_ttest name: "Evidence_polarization_stability_against_variation_in_weight_paired_ttest_q5" dataset: "data_order0" variable_1: 'bayes-corrected (q=0.5) extremity' variable_2: 'mean bayes-corrected (q=0.5) extremity of replies' - !paired_ttest name: "Evidence_polarization_stability_against_variation_in_weight_paired_ttest_q75" dataset: "data_order0" variable_1: 'bayes-corrected (q=0.75) extremity' variable_2: 'mean bayes-corrected (q=0.75) extremity of replies' - !paired_ttest name: "Evidence_polarization_stability_against_variation_in_weight_paired_ttest_bayes" dataset: "data_order0" variable_1: 'extremity' variable_2: 'mean extremity of replies' - !paired_ttest name: "Evidence_polarization_robustness_paired_ttest_order1" dataset: "data_order1" variable_1: 'bayes-corrected (q=0.25) extremity' variable_2: 'mean bayes-corrected (q=0.25) extremity of replies' - !paired_ttest name: "Evidence_polarization_paired_ttest_extremity_politics" dataset: "data_politics" variable_1: 'bayes-corrected (q=0.25) extremity' variable_2: 'mean bayes-corrected (q=0.25) extremity of replies' - !paired_ttest name: "Evidence_polarization_paired_ttest_extremity_foreign_affairs" dataset: "data_foreign_affairs" variable_1: 'bayes-corrected (q=0.25) extremity' variable_2: 'mean bayes-corrected (q=0.25) extremity of replies' - !paired_ttest name: "Evidence_polarization_paired_ttest_extremity_science" dataset: "data_science" variable_1: 'bayes-corrected (q=0.25) extremity' variable_2: 'mean bayes-corrected (q=0.25) extremity of replies' - !paired_ttest name: "Evidence_polarization_paired_ttest_extremity_economy" dataset: "data_economy" variable_1: 'bayes-corrected (q=0.25) extremity' variable_2: 'mean bayes-corrected (q=0.25) extremity of replies' - !paired_ttest name: "Evidence_polarization_paired_ttest_extremity_miscellaneous" dataset: "data_miscellaneous" variable_1: 'bayes-corrected (q=0.25) extremity' variable_2: 'mean bayes-corrected (q=0.25) extremity of replies' - !paired_ttest name: "Evidence_polarization_paired_ttest_extremity_culture" dataset: "data_culture" variable_1: 'bayes-corrected (q=0.25) extremity' variable_2: 'mean bayes-corrected (q=0.25) extremity of replies' - !paired_ttest name: "Evidence_polarization_paired_ttest_extremity_sports" dataset: "data_sports" variable_1: 'bayes-corrected (q=0.25) extremity' variable_2: 'mean bayes-corrected (q=0.25) extremity of replies' - !paired_ttest name: "Evidence_polarization_paired_ttest_extremity_mobility" dataset: "data_mobility" variable_1: 'bayes-corrected (q=0.25) extremity' variable_2: 'mean bayes-corrected (q=0.25) extremity of replies' - !paired_ttest name: "Evidence_polarization_paired_ttest_extremity_internet" dataset: "data_internet" variable_1: 'bayes-corrected (q=0.25) extremity' variable_2: 'mean bayes-corrected (q=0.25) extremity of replies' - !paired_ttest name: "Evidence_polarization_paired_ttest_extremity_health" dataset: "data_health" variable_1: 'bayes-corrected (q=0.25) extremity' variable_2: 'mean bayes-corrected (q=0.25) extremity of replies' visualization: - !hexbinplot name: "Fig_2a" dataset: "data_order0" variable_x_axis: 'bayes-corrected (q=0.25) valence' variable_y_axis: 'number O(n+1)-replies' y_axis_maximum: 40 trendline: True logarithmic_hex_scaling: True - !forestplot name: "Fig_2b" regression_model_names: - "Evidence_uncongenialty_section_politics" - "Evidence_uncongenialty_section_foreign_affairs" - "Evidence_uncongenialty_section_science" - "Evidence_uncongenialty_section_economy" - "Evidence_uncongenialty_section_miscellaneous" - "Evidence_uncongenialty_section_culture" - "Evidence_uncongenialty_section_sports" - "Evidence_uncongenialty_section_mobility" - "Evidence_uncongenialty_section_internet" - "Evidence_uncongenialty_section_health" regression_model_labels: - "Politics" - "Foreign Affairs" - "Science" - "Economy" - "Miscellaneous" - "Culture" - "Sports" - "Mobility" - "Internet" - "Health" coefficient_names: - "bayes-corrected (q=0.25) valence" - "totalvotes" x_axis_minimum: -0.6 dotsize: 2 x_axis_label: "Standardized coefficient (95% Confidence Interval)" - !heatmap name: "Fig_2c" dataset: "data_order0_with_minimum_one_vote" axis_variables: - 'upvotes' - 'downvotes' heat_variable: 'number O(n+1)-replies' axis_maxima: - 20 - 20 axis_minima: - 0 - 0 logarithmic_heat_scaling: 'false' - !densityplot name: 'Fig_3a' dataset: "data_order0" variable_x_axis: 'mean bayes-corrected (q=0.25) valence of replies' variable_y_axis: 'bayes-corrected (q=0.25) valence' data_breakpoints: - 0 - !forestplot name: "Fig_3b" regression_model_names: - "Evidence_antagonism_section_politics" - "Evidence_antagonism_section_foreign_affairs" - "Evidence_antagonism_section_science" - "Evidence_antagonism_section_economy" - "Evidence_antagonism_section_miscellaneous" - "Evidence_antagonism_section_culture" - "Evidence_antagonism_section_sports" - "Evidence_antagonism_section_mobility" - "Evidence_antagonism_section_internet" - "Evidence_antagonism_section_health" regression_model_labels: - "Politics" - "Foreign Affairs" - "Science" - "Economy" - "Miscellaneous" - "Culture" - "Sports" - "Mobility" - "Internet" - "Health" coefficient_names: - 'mean bayes-corrected (q=0.25) valence of replies' x_axis_minimum: -0.1 dotsize: 2 x_axis_label: "Standardized coefficient (95% Confidence Interval)" - !violinplot name: "Fig_4a" dataset: "data_order0" variable_x_axis: 'bayes-corrected (q=0.25) extremity' variable_y_axis: 'mean bayes-corrected (q=0.25) extremity of replies' x_axis_label: '' y_axis_label: 'Extremity value' title: '' - !forestplot_paired_ttest name: "Fig_4b" paired_ttest_names: - "Evidence_polarization_paired_ttest_extremity_politics" - "Evidence_polarization_paired_ttest_extremity_affairs" - "Evidence_polarization_paired_ttest_extremity_science" - "Evidence_polarization_paired_ttest_extremity_economy" - "Evidence_polarization_paired_ttest_extremity_miscellaneous" - "Evidence_polarization_paired_ttest_extremity_culture" - "Evidence_polarization_paired_ttest_extremity_sports" - "Evidence_polarization_paired_ttest_extremity_mobility" - "Evidence_polarization_paired_ttest_extremity_internet" - "Evidence_polarization_paired_ttest_extremity_health" paired_ttest_labels: - "Politics" - "Foreign Affairs" - "Science" - "Economy" - "Miscellaneous" - "Culture" - "Sports" - "Mobility" - "Internet" - "Health" x_axis_minimum: -0.06 dotsize: 2 x_axis_label: "Mean difference bayes-corrected (q=0.25) extremity (95% Confidence Interval)" - !histogram name: 'Extended_Fig_1' dataset: "data" variable: 'totalvotes' x_axis_label: 'Number of total votes' y_axis_label: 'Number of comments' x_axis_logarithmic_scaling: false y_axis_logarithmic_scaling: true title: '' ...