taegyoon kimreferences bruce desmarais degrandis-mccourtney early career pro-fessor in political...

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TAEGYOON KIM Political Scientist | Computational Social Scientist Oce 214 Pond Laboratory, State College, PA, 16803 Webpage https://taegyoon-kim.github.io Email [email protected] Phone 814.810.7263 SKILLS Programming R (tidyverse, plm, lme4, stm, quanteda, network, igraph, ergm), Python (pandas, numpy, matploblib, scikit-learn, Keras, Pytorch, NLTK, transformers, tweepy), Stata, Git, LaTex Data Analytics Machine learning, NLP/Text-as-data, Network Analysis, Regression Models, Survey Methods (imputation, clustering, weighting), Visualization Languages English (uent), Korean (native) RESEARCH AREAS Political/Social Science Political Communication, Political Behavior, Public Policy, State Politics, Politics and Social Media Data Science Machine Learning, NLP/Text-as-data, Network Analysis (Information Diusion) PRESENTATIONS Spread of Violent Political Rhetoric on Twitter PaCSS/PolNet 2020, PolMeth 2020, APSA 2020 AWARDS Paterno Graduate Fellowship, 2018-2019 Penn State University Summer Graduate Research Award, 2019 & 2020 Penn State University EDUCATION Dual-title PhD in Political Science and Social Data Analytics Penn State University, Expected in 2022 MA in Political Science Seoul National University, 2016 Dual-title BA in Political Science and English Linguistics & Literature Yonsei University, 2013 ONGOING PROJECTS Violent Political Rhetoric on Twitter Link Own Dissertation Project In Paper 1, I develop an approach to automatic detection of Tweets involving violent political rhetoric and investigate the characteristics of violent Tweets and their diusion. The key ndings include a) Twitter users who write posts threatening posts are on the fringe of the Twitter network, b) those users are ideologically more extreme and liberal, c) spread of violent Tweets exhibit strong ideological homophily, and d) violent Tweets spread through multiple chains on following ties. In Paper 2, I conduct an experiment to investigate the eects of exposure to online threats of political violence on aective polarization. I argue that, while violent threats from an out-party member leads to aective polarization by inducing fear/anger toward the out-group, threats from an in-party member contributes to aective de-polarization by evoking collective shame. In Paper 3, I explore why the mass use violent political rhetoric on Twitter. I claim that oine political events concerning moralized political issues often evoke lethal partisanship, resulting in the rise of violent rhetoric as a means for extreme partisan expression. Attention to the COVID-19 pandemic on Twitter: Partisan dierences among U.S. state legislators Link State Policy Analysis Project (PI: Bruce Desmarais) As part of State Policy Analysis Project, we investigate state legislators’ attention to the spread of COVID-19 pandemic on Twitter, using statistical/computational tools. It yields insight into how state governments respond to the spread of the virus, both at the national- and state-level, and how their responses dier depending on political party.

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Page 1: TAEGYOON KIMREFERENCES Bruce Desmarais DeGrandis-McCourtney Early Career Pro-fessor in Political Science, Penn State Uni-versity Associate Director of the Center for Social Data Analytics,

TAEGYOON KIMPolitical Scientist | Computational Social ScientistOffice 214 Pond Laboratory, State College, PA, 16803Webpage https://taegyoon-kim.github.ioEmail [email protected] 814.810.7263

SKILLSProgrammingR (tidyverse, plm, lme4, stm, quanteda,network, igraph, ergm), Python (pandas,numpy, matploblib, scikit-learn, Keras,Pytorch, NLTK, transformers, tweepy),Stata, Git, LaTex

Data AnalyticsMachine learning, NLP/Text-as-data,Network Analysis, Regression Models,Survey Methods (imputation, clustering,weighting), Visualization

LanguagesEnglish (fluent), Korean (native)

RESEARCH AREASPolitical/Social SciencePolitical Communication, Political Behavior,Public Policy, State Politics, Politics andSocial Media

Data ScienceMachine Learning, NLP/Text-as-data,Network Analysis (Information Diffusion)

PRESENTATIONSSpread of Violent Political Rhetoricon TwitterPaCSS/PolNet 2020, PolMeth 2020, APSA2020

AWARDSPaterno Graduate Fellowship,2018-2019Penn State UniversitySummer Graduate Research Award,2019 & 2020Penn State University

EDUCATIONDual-title PhD in Political Science and Social Data AnalyticsPenn State University, Expected in 2022

MA in Political ScienceSeoul National University, 2016

Dual-title BA in Political Science and English Linguistics &LiteratureYonsei University, 2013

ONGOING PROJECTS

Violent Political Rhetoric on Twitter LinkOwn Dissertation Project• In Paper 1, I develop an approach to automatic detection of Tweetsinvolving violent political rhetoric and investigate the characteristicsof violent Tweets and their diffusion.• The key findings include a) Twitter users who write posts threateningposts are on the fringe of the Twitter network, b) those users areideologically more extreme and liberal, c) spread of violent Tweetsexhibit strong ideological homophily, and d) violent Tweets spreadthrough multiple chains on following ties.• In Paper 2, I conduct an experiment to investigate the effects ofexposure to online threats of political violence on affectivepolarization. I argue that, while violent threats from an out-partymember leads to affective polarization by inducing fear/anger towardthe out-group, threats from an in-party member contributes toaffective de-polarization by evoking collective shame.• In Paper 3, I explore why the mass use violent political rhetoric onTwitter. I claim that offline political events concerning moralizedpolitical issues often evoke lethal partisanship, resulting in the rise ofviolent rhetoric as a means for extreme partisan expression.

Attention to the COVID-19 pandemic on Twitter: Partisandifferences among U.S. state legislators LinkState Policy Analysis Project (PI: Bruce Desmarais)• As part of State Policy Analysis Project, we investigate statelegislators’ attention to the spread of COVID-19 pandemic onTwitter, using statistical/computational tools. It yields insight intohow state governments respond to the spread of the virus, both atthe national- and state-level, and how their responses differdepending on political party.

Page 2: TAEGYOON KIMREFERENCES Bruce Desmarais DeGrandis-McCourtney Early Career Pro-fessor in Political Science, Penn State Uni-versity Associate Director of the Center for Social Data Analytics,

REFERENCESBruce DesmaraisDeGrandis-McCourtney Early Career Pro-fessor in Political Science, Penn State Uni-versityAssociate Director of the Center for SocialData Analytics, Penn State University

Webpage http://brucedesmarais.comEmail [email protected]

PUBLICATIONSThe Effects of Diverse Polling Methods on the Estimation ofCandidates’ Approval Ratings: The Case of 19thPresidential Election in South KoreaWith Jongho Choi and Kangwook HanJournal of International and Area Studies, Vol.24, No.1 (2017)

TEACHINGGraduate Statistical Method Course PreceptorMultivariate Analysis for Political Research, Christopher Zorn,Penn State University, Spring 2020

Topics in Political Methodology, Christopher Zorn,Penn State University, Fall 2019

Statistical Methods for Political Research, Bruce Desmarais,Penn State University, Fall 2019