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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Essential Statistics Concepts and Formulas

Fundamental Statistical Definitions

1. Define Mean: Mean is the average. It is calculated as the Sum of all values ÷ Number of values.

2. Find Mean of First Ten Natural Numbers: The first 10 natural numbers are 1 to 10. The sum is 55. Mean = 55 ÷ 10 = 5.5.

3. Define Median: The Median is the middle value when data is arranged in ascending or descending order.

4. Find Median of First Ten Even Numbers: The first 10 even numbers are 2, 4, 6, 8, 10, 12, 14, 16, 18, 20. For an even count (10 values), the

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Advanced Statistical Analysis and Econometrics in SPSS

Skewness and Kurtosis: Distribution Shapes

What They Measure

  • Skewness measures the asymmetry of a distribution around its mean.
    • Positive (right) skew: Long right tail—most observations are on the left (e.g., income).
    • Negative (left) skew: Long left tail—most observations are on the right.
    • Skewness = 0: Symmetric distribution (ideally normal).
  • Kurtosis measures tailedness and peakness—how heavy the tails are relative to a normal distribution.
    • Mesokurtic: Kurtosis ≈ 3 (normal distribution).
    • Leptokurtic:
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Quantitative Versus Qualitative Research Methods Comparison

Elements of Investigation: Quantitative vs. Qualitative

1. Environment (MARCO)

  • Quantitative: Can be developed in a natural environment or a closed laboratory.
  • Qualitative: In contact with the object being studied, in a natural setting.

2. Design Structure

  • Quantitative: Requires a fixed design established a priori (in advance).
  • Qualitative: Has an emergent design; it is not fixed in advance.

3. Goals and Flexibility

  • Quantitative: Techniques are pre-set, aiming for technical flexibility.
  • Qualitative: The reality
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Statistical Test Interpretation and SPSS Decision Rules

Statistical Significance: The Main Rule

The decision rule for hypothesis testing is based on the p-value:

  • p < 0.05: Significant → Reject H0 (Null Hypothesis)
  • p ≥ 0.05: Not significant → Fail to reject H0

Choosing the Appropriate Test:

  • 1 group vs known value → One-Sample T-Test
  • 2 groups (different people) → Independent Samples T-Test
  • 2 groups (same people before/after) → Paired Samples T-Test
  • 3+ groups → ANOVA (+ Tukey Post-Hoc if significant)
  • Numeric ↔ Numeric relationship → Correlation
  • Predict
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Essential Data Science Concepts and Statistical Measures

Foundational Concepts in Data Science and Statistics

Essential Data Science Terminology

The following terms represent fundamental concepts used in data analysis and machine learning:

  • Data Science: A field that uses scientific methods, algorithms, and tools to extract knowledge and insights from data.
  • Datafication: The process of transforming information, activities, or objects into a data format.
  • Population & Sample: The Population is the entire group being studied; the Sample is a representative
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