I can help you conduct econometric analysis using Python and write report
- 4.8
- (10)
Project Details
Why Hire Me?
With over 7 years of hands-on experience in data analytics, I bring a strong blend of econometric knowledge and Python expertise. I use libraries like statsmodels
, pandas
, and scikit-learn
to build robust models—from OLS and probit regressions to time-series and panel data techniques. Every project is backed by diagnostic testing, clear interpretation, and reporting aligned to APA/Harvard/IEEE formats.
Key Strengths:
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Applied econometrics with Python across multiple industries and domains
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End-to-end project handling: from data cleaning to visualization and reporting
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Diagnostic tests for multicollinearity, heteroskedasticity, and autocorrelation
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Academic, research, and consulting experience reflected in structured outputs
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Clean, reproducible code and formatted, plagiarism-free reports
What I Need to Start Your Work
To ensure the most accurate and relevant econometric analysis using Python, I will need:
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Project Overview
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Description of your goals, research questions, or hypotheses
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What the econometric analysis is intended to uncover or prove
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Dataset & Structure
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File in
.csv
,.xlsx
,.json
, or.txt
format -
Description of variables (e.g., dependent, independent, categorical) and data source
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Any preprocessing already done (e.g., missing value handling, encoding)
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Analysis Specifications
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Preferred models (e.g., linear regression, panel models, probit/logit)
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Whether you need robustness checks or advanced diagnostics
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Any preferred libraries (e.g.,
statsmodels
,linearmodels
,matplotlib
,seaborn
)
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Report Formatting Needs
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Preferred citation style and format (APA, Harvard, IEEE)
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Word count, structure (e.g., intro-method-results-discussion), and audience type
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Whether raw Python code or appendix is to be included
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Timelines & Communication
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Delivery deadline and expected milestones
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Preferred communication channel and update frequency
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Portfolio

Impact of Minimum Wage Increase on Part-Time Employment in U.S. Cities: A Python-Based Panel Data Analysis
Used Python to conduct fixed-effects panel regression analyzing the impact of minimum wage increases on part-time employment rates across 40 U.S. cities. Findings informed wage policy modeling and strategic labor cost planning.

Housing Prices and Air Pollution: A Time-Series Econometric Study Across Major U.S. Metros
Applied multivariate time-series regression in Python to study how air pollution (AQI) impacts housing prices across five major U.S. metro areas. Results helped guide policy and pricing decisions in real estate and environmental planning.

Determinants of Loan Default in U.S. Credit Unions: An Econometric Risk Model Using Python
Built an econometric model in Python to identify key predictors of loan default for U.S. credit union members. The analysis guided underwriting policy, risk-tier segmentation, and operational strategies for improved loan performance.
Process

Customer Reviews
10 reviews for this Gig ★★★★★ 4.8
helped with hypothesis testing and interpretation in R. visualizations were decent. minor edits needed in references but overall great work
I submitted a messy csv and he still managed to clean it up and run the model. added diagnostics and suggestions in the report too
very professional. the regression output looked complicated at first but he broke it down nicely. also liked the formatting in R Markdown
ran time series in R using ARIMA and GARCH. explanation was detailed and I used the report directly for my research paper
he used plm in R for my panel data assignment and everything was clean and clear. even added plots I didn’t ask for but helped a lot
had some trouble with my dataset format but once that was sorted he ran everything smoothly. also appreciated the explanation on multicollinearity
I asked for APA format and he followed it perfectly. model results were detailed and the way he interpreted coefficients helped a lot
used pandas and statsmodels to build a full model for our startup analysis. graphs were neat and interpretation was clear. on time delivery too
he helped with multiple regression and added all diagnostics in statsmodels. few terms were hard to follow but he explained them when I asked
I needed time series model using python and he handled everything from ARIMA to visual plots. clear report and results matched my expectations