
Exploratory data analysis sounds like an advanced analytics approach as it is a method which is used to find patterns in a dataset, analyse and summarise them to reach a perfect set of conclusions. Many of the experts are confused about the difference between a normal data analysis and data analysis with a prefix exploratory in its name.
In exploratory data analysis, we understand data, visualize it and find the patterns beneath the dataset. In this tutorial, we will be learning about Exploratory data analysis in detail.
EDA explores the patterns, characteristics, relationships, and more which helps in data preparation, decision making, strategic approach, hypothesis generation, and more.
Exploratory Data Analysis is important for so many reasons, let us know about some of the most important parts of EDM below.
There are a series of steps which you must consider while performing exploratory data analysis. It includes finding patterns, anomalies, hypotheses, cleaning data, and more for further analysis.
You can use specific tools which can help you with exploratory data analysis work below.
There are four major methods of classifications in EDA which goes like.
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