Essential Statistical Methods for Data Analysis

Understanding Statistical Dispersion

Dispersion is the extent to which data values in a dataset are spread out or scattered around a central value, such as the mean or median. It quantifies the variability or consistency within the data, complementing measures of central tendency (which describe the center of the data). A high dispersion indicates widely scattered data, while low dispersion suggests data points clustered closely together.

Measures of dispersion are essential for understanding data

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Statistical Methods and Excel Techniques for Data Analysis

Descriptive Statistics

Descriptive statistics is a branch of statistics used to summarize, organize, and describe the main features of a dataset. It helps in understanding data using numerical measures like mean, median, mode, variance, and standard deviation.

1. Mean

  • Mean is the average value of a dataset.
  • It is calculated by dividing the sum of all observations by the total number of observations.
  • It gives a general idea about the overall data value.
  • Formula: Mean = (Sum of all values) / (Number of
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Mastering Statistical Methods and Data Analysis

Sampling Methods

  • Simple Random Sampling: Every subject has an equal probability of being selected. This provides a good representation but may be subject to non-response bias.
  • Systematic Sampling: This involves applying a selection interval k from a random starting point. While every subject has an equal probability of being selected, it is simple but may not provide a good representation if there is a pattern in the way subjects are lined up.
  • Stratified Sampling: The sampling frame is divided into
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Sampling, Correlation, and Multivariate Methods for Research

Sampling: Population, Sample, Census

Population, sample, census: The population of interest is the entire group researchers want to generalize to. A sample is the smaller group that is actually observed or measured. A census collects data from every single member of the population. Population = who you care about. Sample = who you study. Census = everyone in the population.

Representative vs. Biased Samples

Representative vs. biased samples: A representative sample (unbiased) gives every member of

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Data Types and Statistical Analysis Concepts Explained

Q1. Data Types: Categorical vs. Numerical

[8–9 Marks]

Answer:
Data comprises raw facts and figures collected for analysis and decision-making. Based on nature, data is mainly classified into Categorical data and Numerical data.

1) Categorical Data (Qualitative)

Categorical data represents qualities or categories and cannot be measured numerically.

Types:

  • Nominal: No natural order

    Example: Gender (Male/Female), Blood Group
  • Ordinal: Ordered categories

    Example: Grades (A, B, C), Satisfaction level

Example:

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Statistics Essentials: Mean, Regression, Events & Sampling

Measures of Central Tendency

Explain measures of central tendency.

  1. Mean: The average value, calculated by summing all values and dividing by the number of observations.
  2. Median: The middle value when data is arranged in order; useful for skewed distributions.
  3. Mode: The most frequently occurring value in the dataset.

Regression and Regression Equations

Describe regression and types of regression equations

Regression models the relationship between a dependent variable (y) and one or more independent variables

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