Refine your search
Availability
-
Authors
-
Collections
-
Holding libraries
-
Item types
-
Locations
-
Series
-
Topics
- Art
- Basic Statistics
- Bayesian Generalized Linear Models
- Bayesian Meta Analysis
- Bias Plots Risk
- Binary Data
- Bivariate Description Data
- Black Box Methods
- Categorical Data Analysis
- Central Dispersion
- Central Tendency
- Clustering
- Comparision
- Computer Language
- Computer Programme Language
- Data
- Data Analysis
- Data Structure
- Data Visualization
- Discovering R
- Divide and Conquer
- Essentials
- Evaluating Model Performance
- Forecasting Numeric Data
- Forest Plots
- Heterogeneity
- Improving Model Performance
- K-means
- Lazy Learning
- Linear Regression
- Logistic Regression
- Machine Learning
- Market Basket Analysis
- Meta Analysis
- Meta Analysis and R
- Meta Regression
- Model Trees
- Multilevel Meta Analysis
- Multilevel Modeling
- Multinomial Logistic Regression Models
- Multiple Regression
- Naive Bayes
- Negative Binomial Regression Models
- Network Meta Analysis
- Ordinal Logistic Regression Models
- Packt
- Poisson Regression Models
- Power Analysis
- Practice
- Predictive Modeling
- Principles
- Probabilistic Learning
- Probability Theory
- Proportional Odd Models
- Publication Bias
- Quantitative Research
- R Computer Language
- R Computer Program Language
- R Computer Programme
- R Computer Programme Language
- R Data Structure
- R Language and Statistics
- Regression Methods
- Regression Trees
- Reproducibility
- Social Research
- Social Research Methodology
- Social Research Methods
- Social Science Research
- Specialized Machine Learning
- Statistics
- Statistics Visualization
- Structural Equation Model
- Subgroup Analysis
- Techniques
- Testing Hypotheses
- Tools
- Transfoming Data
- Univariate Discription Data
- Visualization
- Zero Inflated Models
- Show more
- Show less