TOPIC INFO (UGC NET)
TOPIC INFO – UGC NET (Geography)
SUB-TOPIC INFO – Geographical Techniques (UNIT 9)
CONTENT TYPE – Detailed Notes
What’s Inside the Chapter? (After Subscription)
1. Concept of Central Tendency
2. Arithmetic Mean
2.1. Properties of Mean
2.2. Advantages of Mean
2.3. Limitations of Mean
3. Median
3.1. Properties of Median
3.2. Advantages of Median
3.3. Limitations of Median
4. Mode
4.1. Properties of Mode
4.2. Advantages of Mode
4.3. Limitations of Mode
5. Significance
6. Applications
Note: The First Topic of Unit 1 is Free.
Access This Topic With Any Subscription Below:
- UGC NET Geography
- UGC NET Geography + Book Notes
Measures of Central Tendency
UGC NET GEOGRAPHY
Geographical Techniques (UNIT 9)
- Measures of central tendency are fundamental statistical tools used in geographical techniques to summarize, interpret, and compare spatial and non-spatial data. Geography relies heavily on quantitative data derived from field surveys, censuses, remote sensing, meteorological observations, and socio-economic records.
- These datasets are often large and complex, and measures of central tendency help geographers identify a single representative value around which the data are concentrated. The most commonly used measures of central tendency in geographical analysis are the mean, median, and mode. Each measure has distinct characteristics, advantages, and limitations, and their selection depends on the nature of the geographical data and the objectives of the analysis.
Concept of Central Tendency
- In geographical studies, central tendency refers to the statistical tendency of data values to cluster around a central or typical value. For example, when analyzing rainfall distribution across a region, population density of urban centers, average temperature of climatic zones, or crop yield across agricultural belts, geographers require a single value that represents the entire dataset. Measures of central tendency enable comparison between regions, identification of spatial inequalities, and interpretation of temporal changes.
- Geographical techniques apply these measures in both physical geography (such as climatology, hydrology, geomorphology) and human geography (such as population geography, economic geography, settlement geography). Since geographical data can be discrete or continuous, symmetrical or skewed, and spatially uneven, the choice of a suitable measure is critical for accurate interpretation.
Arithmetic Mean
- The arithmetic mean is the most widely used measure of central tendency in geographical analysis. It is defined as the sum of all observations divided by the total number of observations. In geography, the mean is used to calculate average temperature, average rainfall, average population density, average elevation, and average income levels of regions.
- The arithmetic mean is particularly useful when data values are evenly distributed and not affected by extreme values. It provides a precise and mathematically tractable measure, making it suitable for further statistical analysis such as correlation, regression, and trend analysis in geographical research.
- However, in geographical datasets, extreme values are common. For example, rainfall distribution may include unusually high rainfall in coastal or mountainous areas, or population data may include megacities that distort the average. In such cases, the arithmetic mean may give a misleading representation of the typical condition of a region.
Formula for Arithmetic Mean
$$\overline X\;=\;\frac{\sum X}N\;$$
Where,
\(\overline X\) = Arithmetic Mean
\(\sum X\) = Sum of all observations
N = Number of Observations
Arithmetic Mean for Grouped Data
$$\overline X\;=\;\frac{\sum fX}{\sum f}\;$$
Where:
f = Frequency of Observations
X = Mid-value of class intervals
