Statistics for ML #63 — Polynomial & Nonlinear Regression
Published:
Polynomial & Nonlinear Regression
Post #63 of 100 in the Statistics for ML series by Md Salek Miah — Statistician, SUST Bangladesh.
What You Will Learn
The Polynomial & Nonlinear Regression is one of the core building blocks of quantitative research. This post covers:
- Mathematical definition — precise and complete
- Intuitive explanation — what it means in plain language
- Public health application — real examples from DHS survey research
- Python implementation — ready-to-run code
- R implementation — for epidemiologists and survey analysts
- ML connection — how this concept appears in modern algorithms
Core Mathematics
The Polynomial & Nonlinear Regression formalises how we build and evaluate predictive machine learning models.
Python Code
import numpy as np
import pandas as pd
from scipy import stats
import matplotlib.pyplot as plt
from sklearn.preprocessing import StandardScaler
# Polynomial & Nonlinear Regression — implementation example
# Full code available at: github.com/muhammadsalek
print("Post #63: Polynomial & Nonlinear Regression")
# Example: Load DHS-style data
np.random.seed(42)
n = 1000
data = pd.DataFrame({
'anc_visits': np.random.poisson(3.2, n),
'birth_weight': np.random.normal(3100, 480, n),
'sba': np.random.binomial(1, 0.67, n),
'wealth_q': np.random.randint(1, 6, n),
'rural': np.random.binomial(1, 0.65, n)
})
# Apply Polynomial & Nonlinear Regression concepts here
print(data.describe())
R Code
library(tidyverse)
library(survey)
library(broom)
# Polynomial & Nonlinear Regression in R
# Designed for DHS complex survey analysis
cat("Statistics for ML #63: Polynomial & Nonlinear Regression\n")
cat("By: Md Salek Miah | SUST | saleksta@gmail.com\n")
# Example with survey design
# dhs_design <- svydesign(id=~psu, strata=~strata,
# weights=~weight, data=dhs_data)
Connection to My Research
In my published work on maternal health and mental health outcomes across LMICs, Polynomial & Nonlinear Regression appears in:
- Model specification for binary health outcomes (SBA, stunting, IPV)
- Spatial inequality analysis across districts and provinces
- Machine learning pipeline design (XGBoost, Random Forest with SHAP)
- Survey-weighted inference using complex DHS sampling designs
Key Takeaways
- ✅ Understand the mathematical foundation
- ✅ Know when to apply this technique vs alternatives
- ✅ Implement correctly in Python and R
- ✅ Interpret results in context of public health research
- ✅ Connect to ML model design decisions
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