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Module 5.

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Presentation on theme: "Module 5."— Presentation transcript:

1 Module 5

2 Choropleth Mapping

3 Data Classification for Choropleth Mapping
1. Equal interval 2. Quantiles 3. Standard deviation 4. Natural Breaks (Jencks) 5. Optimal

4 Data Classification for Choropleth Mapping
ESRI site for data classification

5 Equal Interval

6 Quantiles

7 Module 5 How to choose a technique? This can be a difficult question to answer, what worked for one map and data set may not work for another. There are a several different statistical techniques that can help to classify data, which will follow shortly. In the meantime, there are several criteria to help you determine which statistical technique will help you to best classify your data: 1. Does method consider how data are distributed along the number line? Some methods are designed for data that might be evenly distributed along the values line; other methods are designed for data that is clustered together at one end of the values scale Is method easy to understand? Some methods are very complicated which may result in bad data distributions. If the method is easy to understand, others may understand why you chose to use it Is method easy to compute? The easier to compute, the less likely an error in data classification will result Is resulting legend easy to understand? Complicated legends can easily confuse map-readers.

8 Module 5 5. Is method acceptable for ordinal data? Some statistical classification techniques do not handle certain types of data very well. 6. Method encompasses full range of data? This method will ensure that all values are included and reflected equally in the resulting classification. 7. Method reflects logical division of data values? Some classifications do not make logical sense, many times this is a reflection of using the wrong method with the data set. 8. The method results in NO empty classes. 9. The method results in NO overlapping classes. Classes cannot have values that overlap, otherwise data may be double represented.

9 Quantile Classification

10 Equal Interval Classification

11 Jencks Classification

12 Classifications

13 Standard Deviation Classification

14 Standard Deviation Classification

15 Standard Deviation Classification
Height (m) 2 3 4 5 6 7 9


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