400万人が利用する会社訪問アプリ
早稲田大学 / 国際教養学部
国際教養学部4年生 | 専攻はソーシャルメディアの感情分析 | 香港大学で政策・行政学を学ぶ交換留学生 | 現在、Forest株式会社の海外事業部でインターンを担当
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Grade: 3.79/4.00Grade: 3.79/4.00 ·Dean's List: Top 10% for four consecutive semesters (First and Second Year) ·Scholarships:
-Project Planning and Execution: Planned and executed interactive facilities for visitors at the Sichuan Museum, featuring exhibits that highlight Sichuan's cultural characteristics, such as traditional handicraft experience zones and interactive cultural quizzes, effectively engaging audiences.
·Key Coursework: Data Science in Politics and Public Administration (R Language), Database Management, Vulnerability Reframed, Big Data in Global Cities ·Projects & Achievements:
Using R, I performed data cleaning, wrangling, and visualization analysis on the replication data from the research article. -Data Wrangling and Cleaning: Cleaned and processed over 55,000 tally sheets using R, applying machine learning classifications to identify fraudulent votes. -Fraud Detection and Visualization: Assessed fraud probabilities and created binary indicators for fraudulent tallies, visualizing results with histograms and bar charts. -State-Level Analysis: Analyzed and visualized the prevalence of fraudulent tallies across Mexican states, replicating key research findings.
Collaborated on a project analyzing global energy policy design and its impact on environmental performance using R. We employed text mining to assess policy names and topic modeling to identify trends. Our analysis included LASSO regression to explore the relationship between energy budgets and the Climate Change Index. The findings offer valuable insights for policymakers on how language and budget priorities influence environmental outcomes and support decarbonization efforts. -Data Collection and Text Mining: Analyzed the impact of energy policy design on environmental performance across 26 countries (2020-2022) using R, including budget and diction analysis. -Topic Modeling: Tokenized policy names using R, identified 951 key terms related to energy policies, and applied topic modeling to extract potential themes. -LASSO Regression for Policy Impact: Performed LASSO regression to assess the relationship between energy budget allocation and the Climate Change Index, highlighting correlations with renewable energy investment. -Data Visualization: Created word clouds and bar charts to visualize keyword trends and policy shifts over time, presenting insights into policy emphasis and performance.