Enabling easy statistical significance testing for deep neural networks.
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Updated
Jul 1, 2024 - Python
Enabling easy statistical significance testing for deep neural networks.
Grammars suitable for lark parser and Hypothesis
🏠 This repository contains data analysis scripts for the 2022 American Community Survey (ACS) focusing on individuals aged 25 and over in North Carolina, based on 75,340 observations. This repository offers valuable insights into demographic and economic patterns across North Carolina's urban areas.
This repository is created for storing the components of Statistical Tests of One Pop, Two Pops and Three or more pops using Python.
Course included such topics, as Data Preprocessing, Exploratory Data Analysis (EDA), Statistical Data Analysis (SDA), Data Collection and Storage (PostgreSQL), Business Analytics, Making Business Decisions Based on Data (Hypotheses testing), How to Tell a Story Using Data (Presentation and Data Visualization - Maplotlib, Seaborn, Plotly), Automa…
Resampling-Based Hypothesis Testing for Python
Implement statistical hypothesis tests with Python easly
Data Science Statistics Interview Questions
An R project that investigates whether different genres of songs have significantly different durations through the use of a one-way ANOVA test and post hoc significance tests conducted over an excerpt of a dataset consisting of 1 million popular songs compiled by The Echo Nest and a lab at Columbia University.
To import data from multiple sources, clean and wrangle data, perform exploratory data analysis (EDA), and create meaningful data visualizations. I will then predict future trends from data by developing linear, multiple, polynomial regression models & pipelines and learn how to evaluate them.
Idealvalues is a tool you can use for hypothesis testing. Use Idealvalues to find a sum value within an array of numbers.
How to Use Hypothesis and Pytest for Robust Property-Based Testing in Python
Rossmann Retail Sales Prediction
Exploring and analyzing the dataset to draw meaningful insights. Conducted hypothesis testing, resolved data anomalies, and crafted a predictive model using KNN Classifier. Addressed key questions, such as demographic-based variations in loan status and predicting loan-to-value ratios. Ensured data integrity for informed decision-making.
Sales of products in four different regions is tabulated for males and females. Find if male-female buyer rations are similar across regions
Codes in paper "A Multivariate Robust Test for Genetic Pleiotropy".
Hypothesis-Test in python
Trying out the hypothesis library for property-based testing
A basic program for data analysis of 1 parameter, it can be extended and optimized. Program done collaborating with Alessandro Namar
A collection of Statistics and ML notebooks useful for Graduate Students
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