FOR SOLVED PREVIOUS PAPERS OF INDIAN ECONOMIC SERVICE KINDLY CONTACT US ON OUR WHATSAPP NUMBER 9009368238

FOR SOLVED PREVIOUS PAPERS OF ISS KINDLY CONTACT US ON OUR WHATSAPP NUMBER 9009368238
FOR BOOK CATALOGUE
CLICK ON WHATSAPP CATALOGUE LINK https://wa.me/c/919009368238
Factor Analysis – Concept & Interpretation
1. Introduction
📌 Factor Analysis is a statistical technique used to identify underlying factors (latent variables) that explain patterns of correlations among observed variables.
📌 It helps reduce dimensionality while preserving essential information.
📌 Used in economics, psychology, marketing, finance, and social sciences.
✔ Example: In consumer behavior research, purchase decisions may depend on unobserved factors like brand perception, price sensitivity, and product quality.
2. Concept of Factor Analysis
✔ Factor analysis assumes that multiple observed variables are influenced by a smaller number of unobserved (latent) factors.
✔ The goal is to reduce the dataset’s complexity by finding common patterns.
🔹 (1) Factor Model
The general mathematical representation is: Xi=λi1F1+λi2F2+…+λikFk+ϵiX_i = \lambda_{i1} F_1 + \lambda_{i2} F_2 + … + \lambda_{ik} F_k + \epsilon_i
where:
- XiX_i = Observed variables
- λij\lambda_{ij} = Factor loadings (strength of the relationship)
- FkF_k = Latent factors
- ϵi\epsilon_i = Unique (random) error term
✔ Factor loadings (λ\lambda) represent the correlation between observed variables and underlying factors.
✔ Higher loadings → Stronger influence of the factor on that variable.
3. Types of Factor Analysis
🔹 (1) Exploratory Factor Analysis (EFA)
✔ Used when the underlying structure of data is unknown.
✔ Identifies how many factors exist and which variables are linked to each factor.
✔ Commonly used in market research, psychology, and sociology.
✔ Example: A company wants to group customer preferences into hidden factors like “Price Sensitivity” and “Brand Loyalty.”
🔹 (2) Confirmatory Factor Analysis (CFA)
✔ Used when the structure is already known or hypothesized.
✔ Tests whether observed variables align with predefined factors.
✔ Commonly used in survey validation and hypothesis testing.
✔ Example: A bank expects customer satisfaction to depend on service quality, interest rates, and digital banking experience, and uses CFA to verify this.
4. Steps in Factor Analysis
✔ Step 1: Data Collection → Collect multiple related variables.
✔ Step 2: Correlation Matrix → Analyze relationships between variables.
✔ Step 3: Extract Factors → Use Principal Component Analysis (PCA) or Eigenvalue analysis.
✔ Step 4: Rotate Factors → Use Varimax Rotation to improve interpretation.
✔ Step 5: Interpret Factor Loadings → Identify significant relationships.
5. Interpretation of Factor Analysis Results
✔ Factor Loadings (λ\lambda):
- Values close to 1 → Strong relationship between variable and factor.
- Values close to 0 → Weak relationship.
✔ Eigenvalues: - Measure how much variance a factor explains.
- Factors with eigenvalues >1 are retained.
✔ Communalities: - Indicate how much of a variable’s variance is explained by the factors.
- Higher values (>0.5) indicate better representation.
📌 Example Output from Factor Analysis:
| Variable | Factor 1 (Brand Loyalty) | Factor 2 (Price Sensitivity) |
|---|---|---|
| Purchase Frequency | 0.85 | 0.10 |
| Brand Preference | 0.82 | 0.12 |
| Sensitivity to Discounts | 0.18 | 0.80 |
| Willingness to Pay More | 0.12 | 0.78 |
✔ Interpretation:
- “Purchase Frequency” and “Brand Preference” are strongly associated with Brand Loyalty.
- “Sensitivity to Discounts” and “Willingness to Pay More” are linked to Price Sensitivity.
- The two hidden factors successfully explain customer behavior.
6. Applications of Factor Analysis
✔ Economics: Identifying key economic indicators affecting GDP growth.
✔ Marketing: Understanding consumer preferences and segmenting markets.
✔ Finance: Identifying hidden risk factors affecting stock prices.
✔ Psychology: Identifying personality traits from survey data.
7. Conclusion
✔ Factor Analysis reduces complexity by identifying hidden relationships in data.
✔ Helps in market segmentation, economic forecasting, and behavioral analysis.
✔ Interpretation of factor loadings and eigenvalues is crucial for meaningful insights.
