Common Types of Statistical Analysis
There are 6 major types of Statistical Analysis:
Descriptive Statistics
Descriptive Statistics Focuses on summarizing the main characteristics of a data set. Involve methods for organizing, summarizing, and presenting data in a meaningful way. It provides a concise summary of the main features of a dataset, such as measures of central tendency (mean, median, mode), measures of dispersion (range, variance, standard deviation), and graphical representations (histograms, box plots, etc.). Descriptive statistics help researchers and analysts to understand the basic characteristics of the data, identify patterns, and draw preliminary conclusions.
Inferential Statistics
Inferential statistics involves making inferences or predictions about a population based on a sample of data. It uses probability theory to generalize findings from a sample to a larger population. This type of analysis includes hypothesis testing, confidence intervals, and regression analysis. Inferential statistics allows researchers to draw conclusions, make predictions, and test hypotheses about populations, even when only a subset of the population is observed.
Exploratory Data Analysis (EDA)
Exploratory Data Analysis (EDA) is an approach to analyzing data sets to summarize their main characteristics, often with visual methods· Unlike inferential statistics, EDA focuses more on uncovering patterns, trends, and relationships within the data rather than making formal statistical inferences. It involves techniques such as scatter plots, histograms, and correlation analysis to explore relationships between variables and identify potential outliers or anomalies. EDA is often used as a preliminary step before applying more formal statistical methods.
Predictive Modeling
Predictive modeling involves using statistical algorithms and machine learning techniques to predict future outcomes based on historical data. It is widely used in various fields such as finance, marketing, healthcare, and weather forecasting. Predictive models are trained on historical data to identify patterns and relationships between variables, which are then used to make predictions on new or unseen data. Common techniques include linear regression, decision trees, neural networks, and support vector machines.
Prescriptive Analysis
Prescriptive analysis goes beyond predictive modeling by recommending actions or decisions based on the predictions generated by predictive models. It involves optimizing decision-making processes to achieve specific goals or objectives. Prescriptive analytics combines techniques from operations research, optimization, and decision theory to identify the best course of action among various alternatives. It is used in business applications such as supply chain management, resource allocation, and pricing optimization.
Causal Analysis
Causal analysis is analysis that seeks to establish if changes in one variable cause changes in another variable in a given data set. This is critical in establishing if the two variables relationships are based on causation or mere correlation. It usually requires to be designed as an experiment, or it can also be analyzed from a statistical viewpoint, using some more advanced statistical tools like regression analysis, causal inference, propensity score matching, and instrumental variable. The reason for understanding the causal relationship is to make empowered discussions and make informed interventions, especially, under public policy, health, and social circumstances strands.
Each type of statistical analysis plays a unique role in extracting insights from data and informing decision-making processes in different domains. There are 5 basic methods of statistical analysis to extract insights like mean, standard deviation, regression, Hypothesis testing and sample size determination.
What is Statistical Analysis?
In the world of using data to make smart decisions, Statistical Analysis is super tool. It helps make sense of all the raw data. Whether it’s figuring out what might happen in the market, or understanding how people behave when they buy things, or making a business run smoother, statistical analysis is key.
This article will dive depth to explain everything about statistical analysis in a simple way. We’ll talk about the different types, how it works, real examples, and the important tools we need to do it.
Table of Content
- What is Statistical Analysis?
- Common Types of Statistical Analysis
- Descriptive Statistics
- Inferential Statistics
- Exploratory Data Analysis (EDA)
- Predictive Modeling
- Prescriptive Analysis
- Causal Analysis
- Why Statistical Analysis is Important?
- Methods of Statistical Analysis
- Data Collection
- Data Organization
- Data Analysis
- Interpretation and Presentation
- Applications of Statistical Analysis with Examples
- Tools and Software for Statistical Analysis
- Conclusion