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Statistical Data Analysis

University of Washington_021124C
[University of Washington]


- Overview

Statistical data analysis is the process of collecting and analyzing large amounts of data to identify trends and develop insights. It is a component of data analytics and is widely used by governments, businesses, and other organizations. 

The process of statistical analysis involves the following steps: 

  • Identify the nature of the data
  • Establish a relationship between the data and the sample population
  • Create a model that summarizes the relationship between the population and the data
  • Prove if the model is valid
  • Use predictive analysis to predict future trends and events

 

Some of the methods used in statistical analysis include: Mean, Standard deviation, Regression, Hypothesis testing, Sample size determination. 

 

- Statistical Pattern Recognition

Statistical pattern recognition (SPR) is a data analysis field that uses mathematical models and algorithms to identify patterns from large datasets. It can be used for various tasks, such as handwriting or speech recognition, classification of objects in images, and natural language processing. 

In SPR, the pattern is grouped according to its features. The number of features determines how the pattern is viewed as a point in a d-dimensional space. These features are chosen in a way that different patterns take space without overlapping.

Pattern recognition is important because it allows computers and machines to do jobs that humans can do. Humans are very good at pattern recognition, but machines and computers are not as good. 

Pattern recognition has applications in statistical data analysis, signal processing, image analysis, information retrieval, bioinformatics, data compression, computer graphics, and machine learning.


 

[More to come ...]

 

 



 

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