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Understanding Central Tendency Properties in Statistics www.HelpWithAssignment.com
Numerical Data Properties RelativeStanding Central Tendency Variation Mean Range Percentiles Interquartile Range Median Z–scores Variance Mode Standard Deviation Numerical DataProperties & Measures www.HelpWithAssignment.com
Measure of central tendency Most common measure Acts as ‘balance point’ Affected by extreme values (‘outliers’) Formula (sample mean) Mean n  X i X X X    …  n 1 2 1 i X   n n 	www.HelpWithAssignment.com
Raw Data:	10.3	4.9	8.9	11.7	6.3	7.7  X X X X X X X      1 2 3 4 5 6  1 X   n 6      10 8 9 11 6 3 . . . .  6  30 . 	www.HelpWithAssignment.com
Numerical DataProperties & Measures Numerical Data Properties RelativeStanding Central Variation Tendency Percentiles Mean Range Median Interquartile Range Z–scores Mode Variance Standard Deviation 	www.HelpWithAssignment.com
Measure of central tendency Middle value in ordered sequence  If n is odd, middle value of sequence  If n is even, average of 2 middle values Position of median in sequence  Not affected by extreme values Median  n 1 Positioning   Point  2 	www.HelpWithAssignment.com
Raw Data:	24.1	22.6	21.5	23.7	22.6 Ordered:	21.5	22.6	22.6	23.7	24.1 Position:	1	2	3	4	5 Median Example Odd-Sized Sample   n 1 5 1 Positioning   Point    3 0 . 2 2 Median  22 6 . 	www.HelpWithAssignment.com
Median Example Even-Sized Sample Raw Data:	10.3	4.9	8.9	11.7	6.3	7.7 Ordered:	4.9	6.3	7.78.9	10.3	11.7 Position:	1	2	34	5	6   n 1 6 1 Positioning   Point    3 5 . 2 2  7 7 8 9 . . Median   8 30 . 2 	www.HelpWithAssignment.com
Numerical DataProperties & Measures Numerical Data Properties RelativeStanding Central Variation Tendency Range Mean Percentiles Interquartile Range Median Z–scores Mode Variance Standard Deviation 	www.HelpWithAssignment.com
Measure of central tendency Value that occurs most often Not affected by extreme values May be no mode or several modes May be used for quantitative or qualitative data Mode 	www.HelpWithAssignment.com
No ModeRaw Data:	10.3	4.9	8.9	11.7	6.3	7.7 One ModeRaw Data:	6.3	4.9	8.9	 6.3 	4.9	4.9 More Than 1 ModeRaw Data:	21	28	28	41	4343 Mode Example 	www.HelpWithAssignment.com
Thinking Challenge You’re a financial analyst for Prudential-Bache Securities. You have collected the following closing stock prices of  new stock issues:  17, 16, 21, 18, 13, 16, 12, 11. Describe the stock pricesin terms of central tendency. 	www.HelpWithAssignment.com
Central Tendency Solution Mean n  X i X X X    … 1 2 8 i  1 X   n 8        17 16 21 18 13 16 12 11  8  15 5 . 	www.HelpWithAssignment.com
Central Tendency Solution Median ,[object Object]
Ordered:	11	12	13	16	16	17	18	21
Position:	1	2	3	4	5	6	7	8  n 1 8 1    4 5 . Positioning Point 2 2  16 16 Median   16 2 	www.HelpWithAssignment.com
Mode Raw Data:	17	16	21	18	13	16	12	11 		Mode = 16 Central Tendency Solution 	www.HelpWithAssignment.com
Summary of Central Tendency Measures  Measure Formula Description Mean Balance Point  X /  n i Median ( n +1) Middle Value  Position    2 When Ordered Mode none Most Frequent 	www.HelpWithAssignment.com

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Understanding central tendency properties in statistics

  • 1. Understanding Central Tendency Properties in Statistics www.HelpWithAssignment.com
  • 2. Numerical Data Properties RelativeStanding Central Tendency Variation Mean Range Percentiles Interquartile Range Median Z–scores Variance Mode Standard Deviation Numerical DataProperties & Measures www.HelpWithAssignment.com
  • 3. Measure of central tendency Most common measure Acts as ‘balance point’ Affected by extreme values (‘outliers’) Formula (sample mean) Mean n  X i X X X    …  n 1 2 1 i X   n n www.HelpWithAssignment.com
  • 4. Raw Data: 10.3 4.9 8.9 11.7 6.3 7.7  X X X X X X X      1 2 3 4 5 6  1 X   n 6      10 8 9 11 6 3 . . . .  6  30 . www.HelpWithAssignment.com
  • 5. Numerical DataProperties & Measures Numerical Data Properties RelativeStanding Central Variation Tendency Percentiles Mean Range Median Interquartile Range Z–scores Mode Variance Standard Deviation www.HelpWithAssignment.com
  • 6. Measure of central tendency Middle value in ordered sequence If n is odd, middle value of sequence If n is even, average of 2 middle values Position of median in sequence Not affected by extreme values Median  n 1 Positioning Point  2 www.HelpWithAssignment.com
  • 7. Raw Data: 24.1 22.6 21.5 23.7 22.6 Ordered: 21.5 22.6 22.6 23.7 24.1 Position: 1 2 3 4 5 Median Example Odd-Sized Sample   n 1 5 1 Positioning Point    3 0 . 2 2 Median  22 6 . www.HelpWithAssignment.com
  • 8. Median Example Even-Sized Sample Raw Data: 10.3 4.9 8.9 11.7 6.3 7.7 Ordered: 4.9 6.3 7.78.9 10.3 11.7 Position: 1 2 34 5 6   n 1 6 1 Positioning Point    3 5 . 2 2  7 7 8 9 . . Median   8 30 . 2 www.HelpWithAssignment.com
  • 9. Numerical DataProperties & Measures Numerical Data Properties RelativeStanding Central Variation Tendency Range Mean Percentiles Interquartile Range Median Z–scores Mode Variance Standard Deviation www.HelpWithAssignment.com
  • 10. Measure of central tendency Value that occurs most often Not affected by extreme values May be no mode or several modes May be used for quantitative or qualitative data Mode www.HelpWithAssignment.com
  • 11. No ModeRaw Data: 10.3 4.9 8.9 11.7 6.3 7.7 One ModeRaw Data: 6.3 4.9 8.9 6.3 4.9 4.9 More Than 1 ModeRaw Data: 21 28 28 41 4343 Mode Example www.HelpWithAssignment.com
  • 12. Thinking Challenge You’re a financial analyst for Prudential-Bache Securities. You have collected the following closing stock prices of new stock issues: 17, 16, 21, 18, 13, 16, 12, 11. Describe the stock pricesin terms of central tendency. www.HelpWithAssignment.com
  • 13. Central Tendency Solution Mean n  X i X X X    … 1 2 8 i  1 X   n 8        17 16 21 18 13 16 12 11  8  15 5 . www.HelpWithAssignment.com
  • 14.
  • 16. Position: 1 2 3 4 5 6 7 8  n 1 8 1    4 5 . Positioning Point 2 2  16 16 Median   16 2 www.HelpWithAssignment.com
  • 17. Mode Raw Data: 17 16 21 18 13 16 12 11 Mode = 16 Central Tendency Solution www.HelpWithAssignment.com
  • 18. Summary of Central Tendency Measures Measure Formula Description Mean Balance Point  X / n i Median ( n +1) Middle Value Position 2 When Ordered Mode none Most Frequent www.HelpWithAssignment.com
  • 19. HelpWithAssignment.com At HelpWithAssignment.com we provide best quality Assignment help, Homework help, Online Tutoring and Thesis and Dissertation help as well. For any of the above services you can contact us at http://www.helpwithassignment.com/ andhttp://www.helpwithassignment.com/statistics-assignment-help www.HelpWithAssignment.com
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