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Statistical Analysis is the process of examining data to understand it better and extract useful insights. It helps identify patterns, relationships and trends in the data which supports better decision-making and predictions.
Statistical analysis usually follows a structured process to ensure accurate and meaningful results. These steps help in collecting, preparing, analyzing and presenting data effectively.
Collecting reliable and high quality data is important for accurate analysis. Data is first gathered from different sources.
The collected data is cleaned and structured so it can be analyzed properly.
In this step, statistical techniques are applied to analyze the data and extract useful insights. Common methods include:
In this step, the results of the analysis are explained and shared in a clear way so others can understand the insights like:
There are six major types of Statistical Analysis:
Descriptive Statistics is used to summarize and organize data so we can understand its main features easily. It provides simple measures and visualizations that describe how the data is distributed.
Inferential Statistics uses sample data to draw conclusions or make predictions about a larger population. It helps determine whether the observed results are meaningful or occurred by chance.
Exploratory Data Analysis (EDA) focuses on exploring data to understand patterns, relationships and possible issues before building models. It helps analysts get a better understanding of the dataset and prepare it for further analysis.
Predictive Modelling uses historical data to predict future outcomes or trends. It applies machine learning and statistical techniques to build models that can make data driven predictions.
Prescriptive Analysis focuses on recommending the best actions based on data. It goes a step further than prediction by suggesting solutions to achieve better outcomes.
Causal Analysis is used to understand whether one variable causes a change in another variable. It helps identify cause and effect relationships in data.