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Expand Up @@ -64,9 +64,3 @@ tags: []
### 14. **"Shapiro-Wilk Test vs. Anderson-Darling: Checking for Normality in Small vs. Large Samples"**
- Comparing two common tests for normality: Shapiro-Wilk and Anderson-Darling.
- How sample size and distribution affect the choice of normality test.

### 15. **"Cox Proportional Hazards Model: A Guide to Survival Analysis in Medical Studies"**
- Overview of the Cox proportional hazards model for time-to-event data.
- Applications in survival analysis and clinical trial data.

### 16. **"Mann-Whitney U Test: Non-Parametric Comparison of Two Independent Samples"**
23 changes: 13 additions & 10 deletions _posts/-_ideas/2030-01-01-climate_change.md
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Expand Up @@ -5,7 +5,8 @@ categories:
- Data Science
classes: wide
date: '2030-01-01'
excerpt: Explore how data science, machine learning, and big data are critical tools in addressing climate change and promoting sustainability.
excerpt: Explore how data science, machine learning, and big data are critical tools
in addressing climate change and promoting sustainability.
header:
image: /assets/images/data_science_9.jpg
og_image: /assets/images/data_science_9.jpg
Expand All @@ -14,20 +15,22 @@ header:
teaser: /assets/images/data_science_9.jpg
twitter_image: /assets/images/data_science_9.jpg
keywords:
- Climate Change
- Data Science
- Machine Learning
- Climate change
- Data science
- Machine learning
- Sustainability
- Big Data
seo_description: An in-depth look at how data science, big data, and machine learning can help solve climate change and sustainability challenges.
- Big data
seo_description: An in-depth look at how data science, big data, and machine learning
can help solve climate change and sustainability challenges.
seo_title: 'Climate Change and Data Science: Solving Global Problems'
seo_type: article
summary: This article provides a comprehensive list of potential topics at the intersection of climate change, sustainability, and data science.
summary: This article provides a comprehensive list of potential topics at the intersection
of climate change, sustainability, and data science.
tags:
- Climate Change
- Climate change
- Sustainability
- Machine Learning
- Big Data
- Machine learning
- Big data
title: Exploring Climate Change, Sustainability, and Data Science
---

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27 changes: 15 additions & 12 deletions _posts/-_ideas/2030-01-01-ideas_statistical_tests.md
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Expand Up @@ -6,7 +6,8 @@ categories:
- Hypothesis Testing
classes: wide
date: '2030-01-01'
excerpt: A list of 15 article ideas covering statistical tests, ranging from ANOVA and Kruskal-Wallis to non-parametric tests and power analysis.
excerpt: A list of 15 article ideas covering statistical tests, ranging from ANOVA
and Kruskal-Wallis to non-parametric tests and power analysis.
header:
image: /assets/images/data_science_3.jpg
og_image: /assets/images/data_science_2.jpg
Expand All @@ -15,20 +16,22 @@ header:
teaser: /assets/images/data_science_3.jpg
twitter_image: /assets/images/data_science_2.jpg
keywords:
- Statistical Tests
- ANOVA
- Kruskal-Wallis
- Data Analysis
- Hypothesis Testing
seo_description: Explore 15 ideas for writing articles on various statistical tests, including their differences, assumptions, and applications in data analysis.
- Statistical tests
- Anova
- Kruskal-wallis
- Data analysis
- Hypothesis testing
seo_description: Explore 15 ideas for writing articles on various statistical tests,
including their differences, assumptions, and applications in data analysis.
seo_title: '15 Article Ideas: Writing about Statistical Tests'
seo_type: article
summary: This article provides 15 ideas for articles on statistical tests, including their use cases, assumptions, and applications in real-world data analysis.
summary: This article provides 15 ideas for articles on statistical tests, including
their use cases, assumptions, and applications in real-world data analysis.
tags:
- ANOVA
- Hypothesis Testing
- Statistical Tests
- Data Science
- Anova
- Hypothesis testing
- Statistical tests
- Data science
title: 15 Article Ideas on Statistical Tests
---

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25 changes: 14 additions & 11 deletions _posts/-_ideas/NLP and Data Science Article Topic Ideas.md
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Expand Up @@ -4,20 +4,23 @@ categories:
- NLP
- Data Science
classes: wide
excerpt: Explore in-depth article topics combining NLP and Data Science, from text preprocessing to deep learning models, sentiment analysis, and chatbots.
excerpt: Explore in-depth article topics combining NLP and Data Science, from text
preprocessing to deep learning models, sentiment analysis, and chatbots.
keywords:
- NLP
- Data Science
- Machine Learning
- Topic Modeling
- Sentiment Analysis
seo_description: Explore in-depth article topics combining Natural Language Processing and Data Science, covering a range of tasks, models, and techniques.
- Nlp
- Data science
- Machine learning
- Topic modeling
- Sentiment analysis
seo_description: Explore in-depth article topics combining Natural Language Processing
and Data Science, covering a range of tasks, models, and techniques.
seo_title: 'NLP and Data Science: Article Topics'
summary: This article provides a list of topic ideas for writing detailed articles about NLP and Data Science, suitable for technical and practical discussions.
summary: This article provides a list of topic ideas for writing detailed articles
about NLP and Data Science, suitable for technical and practical discussions.
tags:
- NLP
- Data Science
- Machine Learning
- Nlp
- Data science
- Machine learning
title: 'NLP and Data Science: Article Topic Ideas'
---

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4 changes: 2 additions & 2 deletions _posts/-_ideas/numerical_methods_fortran.md
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@@ -1,7 +1,7 @@
---
tags:
- plaintext
- fortran
- Plaintext
- Fortran
---

# Numerical Methods Using Fortran Repository
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25 changes: 15 additions & 10 deletions _posts/2020-01-01-causality_and_correlation.md
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Expand Up @@ -4,7 +4,8 @@ categories:
- Statistics
classes: wide
date: '2020-01-01'
excerpt: Understand how causal reasoning helps us move beyond correlation, resolving paradoxes and leading to more accurate insights from data analysis.
excerpt: Understand how causal reasoning helps us move beyond correlation, resolving
paradoxes and leading to more accurate insights from data analysis.
header:
image: /assets/images/data_science_4.jpg
og_image: /assets/images/data_science_1.jpg
Expand All @@ -13,21 +14,25 @@ header:
teaser: /assets/images/data_science_4.jpg
twitter_image: /assets/images/data_science_1.jpg
keywords:
- Simpson's Paradox
- Simpson's paradox
- Causality
- Berkson's Paradox
- Berkson's paradox
- Correlation
- Data Science
seo_description: Explore how causal reasoning, through paradoxes like Simpson's and Berkson's, can help us avoid the common pitfalls of interpreting data solely based on correlation.
- Data science
seo_description: Explore how causal reasoning, through paradoxes like Simpson's and
Berkson's, can help us avoid the common pitfalls of interpreting data solely based
on correlation.
seo_title: 'Causality Beyond Correlation: Understanding Paradoxes and Causal Graphs'
seo_type: article
summary: An in-depth exploration of the limits of correlation in data interpretation, highlighting Simpson's and Berkson's paradoxes and introducing causal graphs as a tool for uncovering true causal relationships.
summary: An in-depth exploration of the limits of correlation in data interpretation,
highlighting Simpson's and Berkson's paradoxes and introducing causal graphs as
a tool for uncovering true causal relationships.
tags:
- Simpson's Paradox
- Berkson's Paradox
- Simpson's paradox
- Berkson's paradox
- Correlation
- Data Science
- Causal Inference
- Data science
- Causal inference
title: 'Causality Beyond Correlation: Simpson''s and Berkson''s Paradoxes'
---

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Expand Up @@ -4,7 +4,9 @@ categories:
- Statistics
classes: wide
date: '2020-01-02'
excerpt: Discover the fundamentals of Maximum Likelihood Estimation (MLE), its role in data science, and how it impacts businesses through predictive analytics and risk modeling.
excerpt: Discover the fundamentals of Maximum Likelihood Estimation (MLE), its role
in data science, and how it impacts businesses through predictive analytics and
risk modeling.
header:
image: /assets/images/data_science_3.jpg
og_image: /assets/images/data_science_3.jpg
Expand All @@ -13,24 +15,27 @@ header:
teaser: /assets/images/data_science_3.jpg
twitter_image: /assets/images/data_science_3.jpg
keywords:
- Machine Learning
- Predictive Analytics
- Statistical Modeling
- Maximum Likelihood Estimation
- MLE
- bash
- python
seo_description: Explore Maximum Likelihood Estimation (MLE), its importance in data science, machine learning, and real-world applications.
- Machine learning
- Predictive analytics
- Statistical modeling
- Maximum likelihood estimation
- Mle
- Bash
- Python
seo_description: Explore Maximum Likelihood Estimation (MLE), its importance in data
science, machine learning, and real-world applications.
seo_title: 'MLE: A Key Tool in Data Science'
seo_type: article
summary: This article covers the essentials of Maximum Likelihood Estimation (MLE), breaking down its mathematical foundation, importance in data science, practical applications, and limitations.
summary: This article covers the essentials of Maximum Likelihood Estimation (MLE),
breaking down its mathematical foundation, importance in data science, practical
applications, and limitations.
tags:
- Statistical Modeling
- bash
- Maximum Likelihood Estimation
- Data Science
- MLE
- python
- Statistical modeling
- Bash
- Maximum likelihood estimation
- Data science
- Mle
- Python
title: 'Maximum Likelihood Estimation (MLE): Statistical Modeling in Data Science'
---

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33 changes: 20 additions & 13 deletions _posts/2020-01-03-assessing_goodness-of-fit_non-parametric_data.md
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Expand Up @@ -4,7 +4,9 @@ categories:
- Statistics
classes: wide
date: '2020-01-03'
excerpt: The Kolmogorov-Smirnov test is a powerful tool for assessing goodness-of-fit in non-parametric data. Learn how it works, how it compares to the Shapiro-Wilk test, and explore real-world applications.
excerpt: The Kolmogorov-Smirnov test is a powerful tool for assessing goodness-of-fit
in non-parametric data. Learn how it works, how it compares to the Shapiro-Wilk
test, and explore real-world applications.
header:
image: /assets/images/data_science_3.jpg
og_image: /assets/images/data_science_3.jpg
Expand All @@ -13,21 +15,26 @@ header:
teaser: /assets/images/data_science_3.jpg
twitter_image: /assets/images/data_science_3.jpg
keywords:
- Kolmogorov-Smirnov test
- goodness-of-fit tests
- non-parametric statistics
- distribution fitting
- Shapiro-Wilk test
seo_description: This article introduces the Kolmogorov-Smirnov test for assessing goodness-of-fit in non-parametric data, comparing it with other tests like Shapiro-Wilk, and exploring real-world use cases.
- Kolmogorov-smirnov test
- Goodness-of-fit tests
- Non-parametric statistics
- Distribution fitting
- Shapiro-wilk test
seo_description: This article introduces the Kolmogorov-Smirnov test for assessing
goodness-of-fit in non-parametric data, comparing it with other tests like Shapiro-Wilk,
and exploring real-world use cases.
seo_title: 'Kolmogorov-Smirnov Test: A Guide to Non-Parametric Goodness-of-Fit Testing'
seo_type: article
summary: This article explains the Kolmogorov-Smirnov (K-S) test for assessing the goodness-of-fit of non-parametric data. We compare the K-S test to other goodness-of-fit tests, such as Shapiro-Wilk, and provide real-world use cases, including testing whether a dataset follows a specific distribution.
summary: This article explains the Kolmogorov-Smirnov (K-S) test for assessing the
goodness-of-fit of non-parametric data. We compare the K-S test to other goodness-of-fit
tests, such as Shapiro-Wilk, and provide real-world use cases, including testing
whether a dataset follows a specific distribution.
tags:
- Kolmogorov-Smirnov Test
- Goodness-of-Fit Tests
- Non-Parametric Data
- Shapiro-Wilk Test
- Distribution Fitting
- Kolmogorov-smirnov test
- Goodness-of-fit tests
- Non-parametric data
- Shapiro-wilk test
- Distribution fitting
title: 'Kolmogorov-Smirnov Test: Assessing Goodness-of-Fit in Non-Parametric Data'
---

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Expand Up @@ -4,7 +4,9 @@ categories:
- Statistics
classes: wide
date: '2020-01-04'
excerpt: The multiple comparisons problem arises in hypothesis testing when performing multiple tests increases the likelihood of false positives. Learn about the Bonferroni correction and other solutions to control error rates.
excerpt: The multiple comparisons problem arises in hypothesis testing when performing
multiple tests increases the likelihood of false positives. Learn about the Bonferroni
correction and other solutions to control error rates.
header:
image: /assets/images/data_science_6.jpg
og_image: /assets/images/data_science_6.jpg
Expand All @@ -13,23 +15,28 @@ header:
teaser: /assets/images/data_science_6.jpg
twitter_image: /assets/images/data_science_6.jpg
keywords:
- multiple comparisons problem
- Multiple comparisons problem
- Bonferroni correction
- Holm-Bonferroni
- false discovery rate
- hypothesis testing
- python
seo_description: This article explains the multiple comparisons problem in hypothesis testing and discusses solutions such as Bonferroni correction, Holm-Bonferroni, and FDR, with practical applications in fields like medical studies and genetics.
- Holm-bonferroni
- False discovery rate
- Hypothesis testing
- Python
seo_description: This article explains the multiple comparisons problem in hypothesis
testing and discusses solutions such as Bonferroni correction, Holm-Bonferroni,
and FDR, with practical applications in fields like medical studies and genetics.
seo_title: 'Understanding the Multiple Comparisons Problem: Bonferroni and Other Solutions'
seo_type: article
summary: This article explores the multiple comparisons problem in hypothesis testing, discussing solutions like the Bonferroni correction, Holm-Bonferroni method, and False Discovery Rate (FDR). It includes practical examples from experiments involving multiple testing, such as medical studies and genetics.
summary: This article explores the multiple comparisons problem in hypothesis testing,
discussing solutions like the Bonferroni correction, Holm-Bonferroni method, and
False Discovery Rate (FDR). It includes practical examples from experiments involving
multiple testing, such as medical studies and genetics.
tags:
- Multiple Comparisons Problem
- Bonferroni Correction
- Holm-Bonferroni
- False Discovery Rate (FDR)
- Multiple Testing
- python
- Multiple comparisons problem
- Bonferroni correction
- Holm-bonferroni
- False discovery rate (fdr)
- Multiple testing
- Python
title: 'Multiple Comparisons Problem: Bonferroni Correction and Other Solutions'
---

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32 changes: 19 additions & 13 deletions _posts/2020-01-05-one-way_anova_vs._two-way_anova_when_use_which.md
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Expand Up @@ -4,7 +4,9 @@ categories:
- Statistics
classes: wide
date: '2020-01-05'
excerpt: One-way and two-way ANOVA are essential tools for comparing means across groups, but each test serves different purposes. Learn when to use one-way versus two-way ANOVA and how to interpret their results.
excerpt: One-way and two-way ANOVA are essential tools for comparing means across
groups, but each test serves different purposes. Learn when to use one-way versus
two-way ANOVA and how to interpret their results.
header:
image: /assets/images/data_science_1.jpg
og_image: /assets/images/data_science_1.jpg
Expand All @@ -13,21 +15,25 @@ header:
teaser: /assets/images/data_science_1.jpg
twitter_image: /assets/images/data_science_1.jpg
keywords:
- one-way ANOVA
- two-way ANOVA
- interaction effects
- main effects
- hypothesis testing
seo_description: This article explores the differences between one-way and two-way ANOVA, when to use each test, and how to interpret main effects and interaction effects in two-way ANOVA.
- One-way anova
- Two-way anova
- Interaction effects
- Main effects
- Hypothesis testing
seo_description: This article explores the differences between one-way and two-way
ANOVA, when to use each test, and how to interpret main effects and interaction
effects in two-way ANOVA.
seo_title: 'One-Way ANOVA vs. Two-Way ANOVA: When to Use Which'
seo_type: article
summary: This article discusses one-way and two-way ANOVA, focusing on when to use each method. It explains how two-way ANOVA is useful for analyzing interactions between factors and details the interpretation of main effects and interactions.
summary: This article discusses one-way and two-way ANOVA, focusing on when to use
each method. It explains how two-way ANOVA is useful for analyzing interactions
between factors and details the interpretation of main effects and interactions.
tags:
- One-Way ANOVA
- Two-Way ANOVA
- Interaction Effects
- Main Effects
- Hypothesis Testing
- One-way anova
- Two-way anova
- Interaction effects
- Main effects
- Hypothesis testing
title: 'One-Way ANOVA vs. Two-Way ANOVA: When to Use Which'
---

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