Creator: Manuel A. Meléndez-Sánchez ([email protected])
Meléndez-Sánchez, Manuel. 2019. A Dataset of Latin American Presidents, 1990-2019 (Version 2). Retrieved from https://github.com/melendezsanchez/latam_presidents/.
This dataset includes information about the 162 presidential terms that lasted for more than 24 hours between January 1, 1990 and July 23, 2019 in 18 Latin American countries:
- Argentina
- Bolivia
- Brazil
- Chile
- Colombia
- Costa Rica
- Dominican Republic
- Ecuador
- El Salvador
- Guatemala
- Honduras
- Mexico
- Nicaragua
- Panama
- Paraguay
- Peru
- Uruguay
- Venezuela
The current version of the dataset includes the following variables:
-
Observation ID (
term_id
): The unit of observation is the leader-term. So, for example, there are two separate observations to Argentinian president Carlos Menem: one for his first term (1989-1995) and another for his second term (1995-1999). Each observation has a unique term ID captured by this variable. Term IDs concatenate a country code, the first word of the leader’s last name, and the last two integers of the year in which the term began. -
Country Name (
country_name
): The name of the country corresponding to each observation. -
Country Code (
country_code
): A three-character code corresponding to the country for each observation. -
Leader’s Last Name (
hog_last
): The leader’s (“head of government”, or hog) last name. -
Leader's First Name (
hog_first
): The leader’s (“head of government”, or hog) first name. -
Number of Consecutive Terms (
term_c
): This counts the number of consecutive terms that the leader has served, including the current observation. -
Number of Total Terms (
term_t
): This counts the total number of consecutive AND non-consecutive terms the leader has served, including the current observation. -
Term Start Year (
term_start_year
): The year in which the current observation (term) began. -
Term End Year (
term_end_year
): The year in which the current observation (term) ended. -
Party Name (
party_full
): The name, in English, of the party on which the leader ran. Non-party candidates are listed as Independent. -
Party Abbreviation (
party_short
): A 2-4 letter acronym identifying the party upon which the leader ran. Most of these acronyms correspond to the acronyms used by the parties in their own literature. -
Party ID (
party_id
): A unique identifier for each party. It is generated by concatenating the party abbreviation (party_short
) with the country code (country_code
). -
Path In (
path_in
): The path through which a presidential term began, coded as follows: 0 = democratic elected; 1 = democratically reelected (immediate reelection only); 2 = constitutional succession following vacancy; 3 = coup or other irregular, extra-constitutional path; 4 = other. -
Path Out (
path_out
): The path through with a presidential term ended, coded as follows: 0 = regular end of term, not eligible for (immediate) reelection; 1 = regular end of term, won reelection; 2 = regular end of term, lost reelection; 3 = regular end of term, eligible for (immediate) reelection but did not seek it; 4 = death; 5 = resignation; 6 = impeachment; 7 = coup or other irregular, extra-constitutional path; 8 = other; 9 = leader still in office. -
Doyle’s Populism Indicator (
dd_pop
): Dummy indicating whether the leader was identified as populist (1) in David Doyle’s 2011 paper [1]. Observations that were not coded by Doyle are listed as NAs. -
Campello’s Campaign Score (
dc_camp
): Variable indicating whether the leader’s campaign advocated statist (0) or neoliberal (1) policies, as per Daniella Campello’s 2014 paper [2]. I add a third category (2) for observations that fall within Campello’s temporal scope conditions but where not coded in paper because they were not preceded by a campaign. All other observations that were not coded by Campello are listed as NAs. -
Campello’s Government Score (
dc_gov
): Variable indicating whether the first year of the leader’s government advocated statist (0) or neoliberal (1) policies, as per Daniella Campello’s 2014 paper [2]. Observations that were not coded by Campello are listed as NAs. -
Campello’s Policy Switch Score (
dc_switch
): Dummy variable indicating whether leaders carried out a “policy switch,” defined as switching from a statist campaign platform to a neoliberal government or vice versa. This variable is generated by comparing scores on thedc_camp
anddc_gov
variables. 1 indicates a policy switch, 0 indicates no switch, and all observations not coded by Campello are marked NA. -
Team Populism’s Left-Right Score (
tp_lr
): Variable indicating the leader’s ideological orientation, as coded by Team Populism [3]. Leftist are coded (-1), centrists are coded (0), and rightists are coded (1). Observations that were not coded by team populist are marked NA. -
Team Populism’s Populist Rhetoric Index (
tp_score
): Index indicating the prevalence of populist rhetoric for each leader, as calculated by Team Populism [3]. Higher values represent more populist rhetorics. Observations that were not coded by Team Populist are marked NA. -
Team Populism’s Populist Classification (
tp_cat
): Categorial variable indicating whether a leader is “not populist,” “somewhat populist,” “populist,” or “very populist,” as calculated by Team Populism [3] based ontp_score
. Observations that were not coded by team populist are marked NA. -
Levitsky and Loxton’s Populism Score (
ll_pop
): Variable indicating leader types as coded by Levitsky and Loxton’s 2013 paper [4]. Coded as follows: 0 = non-populists; 1 = full populists; 2 = movement populists; 3 = maverick populists; 4 = radical opposition leaders. Observations that were not coded by Levitsky and Loxton are marked NA.
[1] Doyle, David. 2011. “The Legitimacy of Political Institutions: Explaining Contemporary Populism in Latin America.” Comparative Political Studies 44(11): 1447-1473.
[2] Campello, Daniela. 2014. “The Politics of Financial Booms and Crises: Evidence From Latin America.” Comparative Political Studies 47(2): 260-286.
[3] Team Populism. 2019. Global Populism Database (Guardian Version). Retrieved from https://populism.byu.edu/Pages/Data on July 24, 2019.
[4] Levitsky, Steven and James Loxton. 2013. “Populism and Competitive Authoritarianism in the Andes.” Democratization 20(1): 107-136.