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Classification Systems Intro to Mapping & GIS
Levels of Measurement Nominal: “names” of items without intercorrelation Ordinal: implied order without inference to the spaces between values Interval: ranking considering values between Ratio: meaningful base and ratios between values
Measurement Scales Nominal: Categorical measure [e.g., land use map] Lowest level [=  only possible operation] Ordinal: Ranking Measure Lowest quantitative level [=,  >, <] Strong ordinal: all objects placed in order, no ties. Weaker ordinal: all objects placed in order, but ties exist. Weakest ordinal: rating scales: Strongly agree, agree, disagree, strongly disagree.
Temperature Scale  Conversion from Degrees F to C  Interval Scale Can measure the size of a difference, but not how many times one observation is greater than another: Temperature: Consider ratio of 80°F and 40°F      80°F 	   /   40°F  =   2.00      26.6°C          /  4.44°C =  5.99 No true zero amount.  At 0°F there is still some of the thing called temperature.  But an interval of 20° is two times as large as the interval of 10°. Operations: [=, >, <, +, -]
Distance Scale  Conversion from Miles to Kilometers  Ratio Scale Can place numbers in ratio to each other: Edith makes three times as much money as Walter. Bill lives twice as far from here as Mary. 20 miles   / 10 miles	     =  2.0 32.3 km    /  16.1 km     =  2.0 There is a true zero.  You can have zero money.  Ratio remains same through transformation of metric. Operations:   [=, >, <, +, -, *, /, ^]
Overview of Map Classing What is classing?  Why do we class? Overriding principles. Principles for deciding: Number of classes. Method to use in classing. Methods of Classing: Natural Breaks Equal Interval Quantile Mean and Standard Deviation Arithmetic Progression Geometric Progression
WhatIsClassing? Classification process to reduce a large number of individual quantitative values to: A smaller number of ordered categories, each of which encompasses a portion of the original data value range. Various methods divide the data value range in different ways. Varying the method can have a very large impact on the look of the map.
Fundamental Principles Each of the original (unclassed) data values must fall into one of the classes.  Each data value has a class home. None of the original data values falls into more than one class. These two rules are supreme: if any method results in classes that violate these rules, the resulting classes must be altered to conform to the two fundamental principles.  Always.
Shorthand Way of Saying This  Classes must be: Mutually exclusive & Exhaustive
Principles for Deciding on Number of Classes Rules of thumb: Monochrome color schemes: no more than 5 to 7 classes. Multi-hue map: no more than 9. it depends on other things such as ….
Communication goal What are you trying to prove or disprove with this map? Is it to communicate complex data or prove a simple point. Consider your audience. Complexity of Spatial Pattern Complex data may require specific classification methods. Available Symbol Types Principles for Deciding on Number of Classes
Principles for Deciding on Number of Classes Communication goal: quantitative precision: use larger number of class intervals.  Each class will encompass a relatively small range of the original data values and will therefore represent those values more precisely. Trade offs: Too much data to enable the information to show through. Indistinct symbols.
Principles for Deciding on Number of Classes Communication goal: immediate graphic impact: use smaller number of class intervals.  Each class will be graphically clear, but will be imprecise quantitatively.  Trade offs: Potential for oversimplification One class may include wildly varying data values
Principles for Deciding on Number of Classes Complexity of Spatial Pattern Highly ordered spatial distribution can have more classes.  Complex pattern of highly interspersed data values requires fewer classes.
Classing Methods
Natural Breaks ,[object Object]
Default classification method in ArcMap.,[object Object]
Natural Breaks
Advantages Maximizes the similarity of values within each class. Increases the precision of the map given the number of classes. Disadvantages Class breaks often look arbitrary. Need to explain the method. Method will be difficult to grasp for those lacking a background in statistical methods.  Natural Breaks
Equal Interval Each class encompasses an equal portion of the original data range. Also called equal size or equal width. Calculation: Determine rangeof original data values: Range  =  Maximum - Minimum Decide on number of classes,  N. Calculateclass width: CW = Range / N
Class      Lower Limit            Upper Limit	1	Min				Min + CW	2	Min + CW			Min + 2CW	3	Min + 2CW		Min + 3CW		. . .				. . .N	Min + (N-1) CW		Max	 Equal Interval
Example:   Min = 0;  Max = 100;  N = 5 Range = 100 - 0  or  100 Class Width = 100 / 5 or 20 Class      Lower Limit            Upper Limit	1		  0		to		20	2		20		to		40	3		40		to		60	4		60		to		80	5		80		to	       100 Equal Interval
Example:   Min = 0;  Max = 100;  N = 5 Range = 100 - 0  or  100 Class Width = 100 / 5 or 20 Class      Lower Limit            Upper Limit	1		  0		to		20	2		21		to		40	3		41		to		60	4		61		to		80	5		81		to	       100 Accepted Equal Interval Must be Mutually Exclusive
Equal Interval
Equal Interval
Advantages: Easy to understand, intuitive appeal Each class represents an equal range or amount of the original data range. Good for rectangular data distributions Disadvantages: Not good for skewed data distributions—nearly all values appear in one class. Equal Interval
Five Classes Equal Interval
Defined Interval Each class is of a size defined by the map author. Intervals may need to be altered to fit the range of the data. Calculation: Set interval size. Determine rangeof original data values: Range  =  Maximum – Minimum Calculatenumber of classes: N = Range / CW
Example:   Min = 40;  Max = 165;  CW = 25 Range = 165 - 40  = 125 N = 125 / 25 = 5 classes  Class      Lower Limit            Upper Limit	1		40		to		65	2		66		to		90	3		91		to		115	4		116		to		140	5		141		to		165 Defined Interval Must be Mutually Exclusive
Defined Interval
Defined Interval
Advantages: Easy to understand, intuitive appeal Each class represents an specified amount Good for rectangular data distributions Good for data with “assumed” breaks Decades for years, 1,000s for money, etc. Disadvantages: Not good for skewed data distributions—many classes will be empty and not mapped. Defined Interval
Quantile Classes Places an equal number of  cases in each class. Sets class break points wherever they need to be in order to accomplish this. May not always be possible to get exact quantiles: Number of geounits may not be equally divisible by number of classes.  [21 / 5]. Putting same number of cases in each class might violate mutually exclusive classes rule. 12 values in 4 classes:  0 0 0 |0 0 3| 4 4 5| 6 7 7  NO 0 0 0 0 0 |3| 4 4 5| 6 7 7  YES
Quantile
Quantile
Quantile Classes Advantages: Each class has equal representation on the map. Intuitive appeal: map readers like to be able to identify the “top 20%” or the “bottom 20%” Disadvantages: Very irregular break points unless data have rectangular distribution. Break points often seem arbitrary.  Remedy this with approximate quantiles.
Mean & Standard Deviation Places break points at the Mean and at various Standard Deviation  intervals above and below the mean. Mean: measure of central tendency. Standard Deviation: measure of variability.
Mean & Standard Deviation Class      Lower Limit            Upper Limit	1	Min				Mean – 1.5*SD	2	Mean – 1.5*SD		Mean – 0.5*SD	3	Mean – 0.5*SD		Mean + 0.5*SD	4	Mean + 0.5*SD		Mean + 1.5*SD	5	Mean + 1.5*SD		Mean + 2.5*SD	6	Mean + 2.5*SD		Max
Mean & Standard Deviation Mean
Mean & Standard Deviation Clearly showswhat’s “average”.
Mean & Standard Deviation Advantages: Statistically oriented people like it. Allows easier comparison of maps of variables measured in different metrics.  Income and education levels. Disadvantages: Many map readers are not familiar with the concept of the standard deviation. Not good for skewed data.
Geometric Interval The width of each succeeding class interval is larger than the previous interval by a constant amount.   Calculating the constant amount, CW: Decide on number of classes, N. Calculate the range: R = Max - Min Solve:  R =  CW + 2CW + . . . + NCWfor CW
Geometric: Class Widths 	Class            Width1		CW	2		2CW	3		3CW	4		4CW	5		5CW
Geometric Progression Classes The width of each succeeding class interval is larger than the previous interval by a exponentially varying amount.   Calculating the BASE amount, CW: Decide on number of classes, N. Calculate the range: R = Max - Min Solve:
Geometric: Class Example Max = 160; Min = 10; R = 150; CW = 10 Class   Lower Limit +   CLASS* CW     =    Upper Limit	1	    10		+	10	=         20	2	    20		+	20	=         40	3	    40		+	30	=         70	4	    70		+	40	=       110 		5	  110		+	50	=       160
Geometric Interval
Geometric Interval
Geometric Interval Advantages: Uneven, but regular class breaks. Tends to even out class frequencies for skewed distributions while making class widths relatively small in areas where there is high frequency. Disadvantages: Uncommon. Unequal width classes.
Making a sensible map Remember, class breaks should make sense to both you and the audience. Most of the time, you should change what ArcMap produces by default. Median Year Built
Years shouldn’t be demical!
Number formatting ArcGIS assumes by default that numbers not explicitly set as integers are floating point (decimal) numbers. ArcGIS also assumes all floating point numbers should show 6 places after the decimal point.
Layer Properties Under the Fields tab in the Layer Properties, you can set aliases for the field names, as well as define the format of the field. Set numbers to have no zeroes after the decimal point.
Map Classification Techniques

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Map Classification Techniques

  • 1. Classification Systems Intro to Mapping & GIS
  • 2. Levels of Measurement Nominal: “names” of items without intercorrelation Ordinal: implied order without inference to the spaces between values Interval: ranking considering values between Ratio: meaningful base and ratios between values
  • 3. Measurement Scales Nominal: Categorical measure [e.g., land use map] Lowest level [= only possible operation] Ordinal: Ranking Measure Lowest quantitative level [=, >, <] Strong ordinal: all objects placed in order, no ties. Weaker ordinal: all objects placed in order, but ties exist. Weakest ordinal: rating scales: Strongly agree, agree, disagree, strongly disagree.
  • 4. Temperature Scale Conversion from Degrees F to C Interval Scale Can measure the size of a difference, but not how many times one observation is greater than another: Temperature: Consider ratio of 80°F and 40°F 80°F / 40°F = 2.00 26.6°C / 4.44°C = 5.99 No true zero amount. At 0°F there is still some of the thing called temperature. But an interval of 20° is two times as large as the interval of 10°. Operations: [=, >, <, +, -]
  • 5. Distance Scale Conversion from Miles to Kilometers Ratio Scale Can place numbers in ratio to each other: Edith makes three times as much money as Walter. Bill lives twice as far from here as Mary. 20 miles / 10 miles = 2.0 32.3 km / 16.1 km = 2.0 There is a true zero. You can have zero money. Ratio remains same through transformation of metric. Operations: [=, >, <, +, -, *, /, ^]
  • 6. Overview of Map Classing What is classing? Why do we class? Overriding principles. Principles for deciding: Number of classes. Method to use in classing. Methods of Classing: Natural Breaks Equal Interval Quantile Mean and Standard Deviation Arithmetic Progression Geometric Progression
  • 7. WhatIsClassing? Classification process to reduce a large number of individual quantitative values to: A smaller number of ordered categories, each of which encompasses a portion of the original data value range. Various methods divide the data value range in different ways. Varying the method can have a very large impact on the look of the map.
  • 8. Fundamental Principles Each of the original (unclassed) data values must fall into one of the classes. Each data value has a class home. None of the original data values falls into more than one class. These two rules are supreme: if any method results in classes that violate these rules, the resulting classes must be altered to conform to the two fundamental principles. Always.
  • 9. Shorthand Way of Saying This Classes must be: Mutually exclusive & Exhaustive
  • 10. Principles for Deciding on Number of Classes Rules of thumb: Monochrome color schemes: no more than 5 to 7 classes. Multi-hue map: no more than 9. it depends on other things such as ….
  • 11. Communication goal What are you trying to prove or disprove with this map? Is it to communicate complex data or prove a simple point. Consider your audience. Complexity of Spatial Pattern Complex data may require specific classification methods. Available Symbol Types Principles for Deciding on Number of Classes
  • 12. Principles for Deciding on Number of Classes Communication goal: quantitative precision: use larger number of class intervals. Each class will encompass a relatively small range of the original data values and will therefore represent those values more precisely. Trade offs: Too much data to enable the information to show through. Indistinct symbols.
  • 13.
  • 14. Principles for Deciding on Number of Classes Communication goal: immediate graphic impact: use smaller number of class intervals. Each class will be graphically clear, but will be imprecise quantitatively. Trade offs: Potential for oversimplification One class may include wildly varying data values
  • 15.
  • 16. Principles for Deciding on Number of Classes Complexity of Spatial Pattern Highly ordered spatial distribution can have more classes. Complex pattern of highly interspersed data values requires fewer classes.
  • 17.
  • 18.
  • 20.
  • 21.
  • 23. Advantages Maximizes the similarity of values within each class. Increases the precision of the map given the number of classes. Disadvantages Class breaks often look arbitrary. Need to explain the method. Method will be difficult to grasp for those lacking a background in statistical methods. Natural Breaks
  • 24. Equal Interval Each class encompasses an equal portion of the original data range. Also called equal size or equal width. Calculation: Determine rangeof original data values: Range = Maximum - Minimum Decide on number of classes, N. Calculateclass width: CW = Range / N
  • 25. Class Lower Limit Upper Limit 1 Min Min + CW 2 Min + CW Min + 2CW 3 Min + 2CW Min + 3CW . . . . . .N Min + (N-1) CW Max Equal Interval
  • 26. Example: Min = 0; Max = 100; N = 5 Range = 100 - 0 or 100 Class Width = 100 / 5 or 20 Class Lower Limit Upper Limit 1 0 to 20 2 20 to 40 3 40 to 60 4 60 to 80 5 80 to 100 Equal Interval
  • 27. Example: Min = 0; Max = 100; N = 5 Range = 100 - 0 or 100 Class Width = 100 / 5 or 20 Class Lower Limit Upper Limit 1 0 to 20 2 21 to 40 3 41 to 60 4 61 to 80 5 81 to 100 Accepted Equal Interval Must be Mutually Exclusive
  • 30. Advantages: Easy to understand, intuitive appeal Each class represents an equal range or amount of the original data range. Good for rectangular data distributions Disadvantages: Not good for skewed data distributions—nearly all values appear in one class. Equal Interval
  • 31. Five Classes Equal Interval
  • 32.
  • 33. Defined Interval Each class is of a size defined by the map author. Intervals may need to be altered to fit the range of the data. Calculation: Set interval size. Determine rangeof original data values: Range = Maximum – Minimum Calculatenumber of classes: N = Range / CW
  • 34. Example: Min = 40; Max = 165; CW = 25 Range = 165 - 40 = 125 N = 125 / 25 = 5 classes Class Lower Limit Upper Limit 1 40 to 65 2 66 to 90 3 91 to 115 4 116 to 140 5 141 to 165 Defined Interval Must be Mutually Exclusive
  • 37. Advantages: Easy to understand, intuitive appeal Each class represents an specified amount Good for rectangular data distributions Good for data with “assumed” breaks Decades for years, 1,000s for money, etc. Disadvantages: Not good for skewed data distributions—many classes will be empty and not mapped. Defined Interval
  • 38. Quantile Classes Places an equal number of cases in each class. Sets class break points wherever they need to be in order to accomplish this. May not always be possible to get exact quantiles: Number of geounits may not be equally divisible by number of classes. [21 / 5]. Putting same number of cases in each class might violate mutually exclusive classes rule. 12 values in 4 classes: 0 0 0 |0 0 3| 4 4 5| 6 7 7 NO 0 0 0 0 0 |3| 4 4 5| 6 7 7 YES
  • 41. Quantile Classes Advantages: Each class has equal representation on the map. Intuitive appeal: map readers like to be able to identify the “top 20%” or the “bottom 20%” Disadvantages: Very irregular break points unless data have rectangular distribution. Break points often seem arbitrary. Remedy this with approximate quantiles.
  • 42. Mean & Standard Deviation Places break points at the Mean and at various Standard Deviation intervals above and below the mean. Mean: measure of central tendency. Standard Deviation: measure of variability.
  • 43. Mean & Standard Deviation Class Lower Limit Upper Limit 1 Min Mean – 1.5*SD 2 Mean – 1.5*SD Mean – 0.5*SD 3 Mean – 0.5*SD Mean + 0.5*SD 4 Mean + 0.5*SD Mean + 1.5*SD 5 Mean + 1.5*SD Mean + 2.5*SD 6 Mean + 2.5*SD Max
  • 44. Mean & Standard Deviation Mean
  • 45. Mean & Standard Deviation Clearly showswhat’s “average”.
  • 46. Mean & Standard Deviation Advantages: Statistically oriented people like it. Allows easier comparison of maps of variables measured in different metrics. Income and education levels. Disadvantages: Many map readers are not familiar with the concept of the standard deviation. Not good for skewed data.
  • 47. Geometric Interval The width of each succeeding class interval is larger than the previous interval by a constant amount. Calculating the constant amount, CW: Decide on number of classes, N. Calculate the range: R = Max - Min Solve: R = CW + 2CW + . . . + NCWfor CW
  • 48. Geometric: Class Widths Class Width1 CW 2 2CW 3 3CW 4 4CW 5 5CW
  • 49. Geometric Progression Classes The width of each succeeding class interval is larger than the previous interval by a exponentially varying amount. Calculating the BASE amount, CW: Decide on number of classes, N. Calculate the range: R = Max - Min Solve:
  • 50. Geometric: Class Example Max = 160; Min = 10; R = 150; CW = 10 Class Lower Limit + CLASS* CW = Upper Limit 1 10 + 10 = 20 2 20 + 20 = 40 3 40 + 30 = 70 4 70 + 40 = 110 5 110 + 50 = 160
  • 53. Geometric Interval Advantages: Uneven, but regular class breaks. Tends to even out class frequencies for skewed distributions while making class widths relatively small in areas where there is high frequency. Disadvantages: Uncommon. Unequal width classes.
  • 54. Making a sensible map Remember, class breaks should make sense to both you and the audience. Most of the time, you should change what ArcMap produces by default. Median Year Built
  • 56. Number formatting ArcGIS assumes by default that numbers not explicitly set as integers are floating point (decimal) numbers. ArcGIS also assumes all floating point numbers should show 6 places after the decimal point.
  • 57. Layer Properties Under the Fields tab in the Layer Properties, you can set aliases for the field names, as well as define the format of the field. Set numbers to have no zeroes after the decimal point.

Editor's Notes

  1. This week, we will be discussing classification systems. Classification systems are the methods employed by GIS software to categorize large quantities of data into more manageable groups that can then be mapped. Before we can jump into classification itself, let’s consider the different levels of measurement employed when analyzing data.