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THE HIDDEN BIAS IN CUSTOMER
METRICS
BOB E. HAYES, PHD
BUSINESS OVER BROADWAY
Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com
Purpose
 Help understand how people interpret two different
metrics:
 Mean Score
 Net Score
 While these two metrics are equivalent (as one goes
up, so does the other), do people see them
differently?
Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com
If you know one metric, you know the others
 These metrics are
highly correlated with
each other
 They tell you the same
thing – relatively
speaking
 If you have an NPS of -
30, you know your
mean score will be
about 6.2.
 If you have an NPS of
40, you know your
promoters will be
about 57% and
detractors will be
about 17%.
Net
Promoter
Score®
Mean
% 9-10
(Promoters)
% 0-6
(Detractors)
% 7-8
(Passives)
% 6 or
greater
-100 4.1 -2.7 97.3 5.5 24.9
-90 4.4 -0.4 89.6 10.8 31.0
-80 4.7 2.2 82.2 15.6 36.9
-70 4.9 5.1 75.1 19.8 42.4
-60 5.3 8.3 68.3 23.4 47.8
-50 5.6 11.8 61.8 26.4 52.9
-40 5.9 15.6 55.6 28.8 57.7
-30 6.2 19.7 49.7 30.6 62.3
-20 6.5 24.1 44.1 31.8 66.7
-10 6.8 28.8 38.8 32.4 70.8
0 7.1 33.8 33.8 32.5 74.7
10 7.4 39.0 29.0 31.9 78.4
20 7.7 44.6 24.6 30.8 81.8
30 7.9 50.5 20.5 29.0 84.9
40 8.3 56.7 16.7 26.7 87.9
50 8.6 63.1 13.1 23.8 90.6
60 8.9 69.9 9.9 20.3 93.0
70 9.2 76.9 6.9 16.2 95.3
80 9.5 84.3 4.3 11.5 97.2
90 9.9 91.9 1.9 6.2 98.9
100 10.1 99.9 -0.1 0.3 100.5
Recommend question is on a 0 to 10 scale where 0 = Not at all likely and 10 = Extremely likely; sample to calculate other metrics from NPS
consists of three independent studies on consumer attitudes toward PC manufacturers and wireless service providers.
Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com
Summary Metrics Paint Similar Picture
 Each of the 48 data points in the
graph represents a single
company’s summary metric:
mean of recommend and net
score of recommend (NPS)
 Two summary metrics (NPS and
Mean) are strongly correlated (r =
.97).
 Looking at regression equation,
we know comparable Mean and
NPS values: NPS of 0.0
corresponds to a Mean of 7.0.
 NPS of… Equals
Mean of…
y = 0.03x + 7.09
R² = 0.94
0
1
2
3
4
5
6
7
8
9
10
-100 -80 -60 -40 -20 0 20 40 60 80 100
Recommend-MeanScore
Recommend - Net Score (NPS)
Data are from three independent studies about consumer attitudes toward their:
1. PC manufacturer: Survey of 1058 US consumers from 2007. GMI (Global Market Insite, Inc.)
2. Wireless service provider: Survey of 994 US consumers from 2007. GMI (Global Market Insite, Inc.)
3. Wireless service provider: Survey of 5686 global consumers from 2010. Mob4Hire
N = 48 brands, most brands represent different wireless service providers (N = 41) and a handful of
PC manufacturers. Metrics were calculated for brands with 30 or more responses.
-100 4.0
-50 5.5
0 7.0
50 8.5
100 10.0
Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com
Study Design
 Participants invited via blog post about the study; post
shared through social media connections, professional
online communities and email list.
 Blog post included hyperlink to web-based data
collection instrument
 CEM professionals were given 5 NPS values (-100, -50, 0, 50 and 100) and 5
comparable Mean values (4.0, 5.5, 7.0, 8.5 and 10. For each metric value, they were
asked to make their best guess about the size of the following customer segments:
 % of respondents who have a rating of 9 or 10 (Promoters / Top Box Score)
 % of respondents who have a rating between 0 and 6, inclusive (Detractors /
Bottom Box Score)
 % of respondents who have a rating of 7 or 8 (Passives / Middle Box Score)
 % of respondents who have a rating of 6 or greater (Satisfied / Top Box Score)
Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com
Sample Demographics
B2B
and
B2C
42%
B2C
3%
B2B
55%
Individual
contributor
of CEM
Program
3%
Manager of
CEM
Program
28%
Director of
CEM
Program
9%
Senior
Executive
of CEM
Program
13%
Outside
consultant
22%
Other
25%
Beginner
10%
Average
13%
Proficient
45%
Expert
32%
What is your level of expertise in
your company's CEM Program?What is your current role?
What Best Describes
Your Company?
 Forty-one CX professionals participated in the study.
Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com
Sample: Expertise in Metric
Beginner
24%
Average
30%
Proficient
21%
Expert
24%
Beginner
21%
Average
37%
Proficient
17%
Expert
24%
Level of expertise in using NPS
in their CEM program
Level of expertise in using
Mean Scores in their CEM
program
 Wide range of expertise seen for both NPS and Mean
Scores
Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com
Estimating % of Promoters From NPS and Mean Values
 People are more accurate at estimating the size of Promoters (i.e., Top Box Score) using the
NPS (except for slight understimation for NPS = 100.
 When given a high Mean Score, people greatly underestimate the percent of Promoters.
Estimated percent of promoters: CEM professionals’ best guess as to the percent of respondents who have
ratings of 9 or 10 (Promoters)
0
10
20
30
40
50
60
70
80
90
100
4.0 5.5 7.0 8.5 10.0
PercentofCustomerswith
aratingof9or10(Promoters)
Mean Value
Actual % Promoters
Estimated % Promoters
Actual percent of promoters: The actual percent of respondents who have a rating of 9 or 10 (Promoters)
Confidence Interval: Sample statistic ± margin of error at a 95% confidence level for estimated percent of Promoters
 CEM professionals were given different NPS and Mean values and
asked to estimate the % of customers who are Promoters.
For estimation using Mean Values, N = 26 to 30.
For estimation using NPS Values, N = 33 to 41.
0
10
20
30
40
50
60
70
80
90
100
-100 -50 0 50 100
PercentofCustomerswith
aratingof9or10(Promoters)
NPS Value
Actual % Promoters
Estimated % Promoters
Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com
Estimating % of Detractors From NPS and Mean Values
 When given a low summary metric, people greatly underestimate the percent of Detractors –
more so for Mean values than for NPS values.
 When given a high summary value, people slightly overestimate the percent of Detractors
Estimated percent of Detractors: CEM professionals’ best guess as to the percent of respondents who have
ratings of 0 - 6 (Detractors)
Actual percent of Detractors: The actual percent of respondents who have a rating of 0 - 6 (Detractors)
Confidence Interval: Sample statistic ± margin of error at a 95% confidence level for estimated percent of Detractors
 CEM professionals were given different NPS and Mean values and
asked to estimate the % of customers who are Detractors.
For estimation using Mean Values, N = 26 to 30.
For estimation using NPS Values, N = 33 to 41.
-10
0
10
20
30
40
50
60
70
80
90
100
4.0 5.5 7.0 8.5 10.0
PercentofCustomerswith
aratingof0or6(Detractors)
Mean Value
Actual % Detractors
Estimated % Detractors
-10
0
10
20
30
40
50
60
70
80
90
100
-100.0 -50.0 0.0 50.0 100.0
PercentofCustomerswith
aratingof0to6(Detractors)
NPS Value
Actual % Detractors
Estimated % Detractors
Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com
Estimating % of Passives From NPS and Mean Values
 When given a low summary metric, people greatly underestimate the percent of Detractors –
more so for Mean values than for NPS values.
 When given a high summary value, people slightly overestimate the percent of Detractors
Estimated percent of Passives: CEM professionals’ best guess as to the percent of respondents who have
ratings of 7 - 8 (Passives)
Actual percent of Passives: The actual percent of respondents who have a rating of 7 - 8 (Passives)
Confidence Interval: Sample statistic ± margin of error at a 95% confidence level for estimated percent of Passives
 CEM professionals were given different NPS and Mean values and
asked to estimate the % of customers who are Passives.
For estimation using Mean Values, N = 26 to 30.
For estimation using NPS Values, N = 33 to 41.
-10
0
10
20
30
40
50
60
70
80
90
100
-100.0 -50.0 0.0 50.0 100.0
PercentofCustomerswith
aratingof7or8(Passives)
NPS Value
Actual % Passives
Estimated % Passives
-10
0
10
20
30
40
50
60
70
80
90
100
4.0 5.5 7.0 8.5 10.0
PercentofCustomerswith
aratingof7or8(Passives)
Mean Value
Actual % Passives
Estimated % Passives
Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com
 Greater downward bias in predictions when NPS is used.
Estimating % of Positives (6-10) from NPS and Mean Values
 For each NPS value, CEM professionals underestimated the percent of Positive respondents.
 When given a mean, CEM professionals underestimated the percent of Positive respondents
when mean was 5.5 or greater; overestimated percent of Positive respondents when Mean = 4.
Estimated percent of positives: CEM professionals’ best guess as to the percent of respondents who have
ratings of 6 - 10 (Positives)
Actual percent of positives: The actual percent of respondents who have a rating of 6 – 10 (Positives)
Confidence Interval: Sample statistic ± margin of error at a 95% confidence level for estimated percent of Positives
 CEM professionals were given different NPS and Mean values and
asked to estimate the % of customers who are Positives (6 – 10 rating).
For estimation using Mean Values, N = 26 to 30.
For estimation using NPS Values, N = 33 to 41.
0
10
20
30
40
50
60
70
80
90
100
-100 -50 0 50 100
PercentofRespondentswitha
ratingof6orgreater
NPS Value
Actual % 6 or greater
Estimated % 6 or greater
0
10
20
30
40
50
60
70
80
90
100
4.0 5.5 7.0 8.5 10.0
PercentofRespondentswitha
ratingof6orgreater
Mean Value
Actual % 6 or greater
Estimated % 6 or greater
 Greater downward bias in predictions when NPS is used.
Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com
Study Findings
 Some bias in customer metrics
 CX professionals underestimate the size of important customer
segments when only looking at Mean or Net Promoter Scores
 CX professionals are better at estimating the size of
NPS-specific segments based on the Net Promoter
Scores than Mean Scores
 CX professionals underestimate the size of Satisfied
segment based on summary metric on both Mean or
Net Promoter Scores (slightly worse for NPS)
Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com
Implications
 Operations
 Correct interpretation of results improves how leaders run their
organizations
 Present both aggregated metric (NPS or Mean) and
segment-specific metric (Top/Bottom Box Score)
 Minimizes misinterpretation of data
 Human Resources
 Data Education / Training on basics of data analysis
 Data literacy is essential to Big Data Success
 Visualization/Analytic Software
 Pick vendors who allow you to summarize your data in different ways
Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com
For More Information
Bob E. Hayes, Ph.D.
Email: bob@businessoverbroadway.com
Web: www.businessoverbroadway.com
Blog: www.businessoverbroadway.com/blog
Twitter: www.twitter.com/bobehayes

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The Hidden Bias in Customer Metrics

  • 1. THE HIDDEN BIAS IN CUSTOMER METRICS BOB E. HAYES, PHD BUSINESS OVER BROADWAY
  • 2. Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com Purpose  Help understand how people interpret two different metrics:  Mean Score  Net Score  While these two metrics are equivalent (as one goes up, so does the other), do people see them differently?
  • 3. Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com If you know one metric, you know the others  These metrics are highly correlated with each other  They tell you the same thing – relatively speaking  If you have an NPS of - 30, you know your mean score will be about 6.2.  If you have an NPS of 40, you know your promoters will be about 57% and detractors will be about 17%. Net Promoter Score® Mean % 9-10 (Promoters) % 0-6 (Detractors) % 7-8 (Passives) % 6 or greater -100 4.1 -2.7 97.3 5.5 24.9 -90 4.4 -0.4 89.6 10.8 31.0 -80 4.7 2.2 82.2 15.6 36.9 -70 4.9 5.1 75.1 19.8 42.4 -60 5.3 8.3 68.3 23.4 47.8 -50 5.6 11.8 61.8 26.4 52.9 -40 5.9 15.6 55.6 28.8 57.7 -30 6.2 19.7 49.7 30.6 62.3 -20 6.5 24.1 44.1 31.8 66.7 -10 6.8 28.8 38.8 32.4 70.8 0 7.1 33.8 33.8 32.5 74.7 10 7.4 39.0 29.0 31.9 78.4 20 7.7 44.6 24.6 30.8 81.8 30 7.9 50.5 20.5 29.0 84.9 40 8.3 56.7 16.7 26.7 87.9 50 8.6 63.1 13.1 23.8 90.6 60 8.9 69.9 9.9 20.3 93.0 70 9.2 76.9 6.9 16.2 95.3 80 9.5 84.3 4.3 11.5 97.2 90 9.9 91.9 1.9 6.2 98.9 100 10.1 99.9 -0.1 0.3 100.5 Recommend question is on a 0 to 10 scale where 0 = Not at all likely and 10 = Extremely likely; sample to calculate other metrics from NPS consists of three independent studies on consumer attitudes toward PC manufacturers and wireless service providers.
  • 4. Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com Summary Metrics Paint Similar Picture  Each of the 48 data points in the graph represents a single company’s summary metric: mean of recommend and net score of recommend (NPS)  Two summary metrics (NPS and Mean) are strongly correlated (r = .97).  Looking at regression equation, we know comparable Mean and NPS values: NPS of 0.0 corresponds to a Mean of 7.0.  NPS of… Equals Mean of… y = 0.03x + 7.09 R² = 0.94 0 1 2 3 4 5 6 7 8 9 10 -100 -80 -60 -40 -20 0 20 40 60 80 100 Recommend-MeanScore Recommend - Net Score (NPS) Data are from three independent studies about consumer attitudes toward their: 1. PC manufacturer: Survey of 1058 US consumers from 2007. GMI (Global Market Insite, Inc.) 2. Wireless service provider: Survey of 994 US consumers from 2007. GMI (Global Market Insite, Inc.) 3. Wireless service provider: Survey of 5686 global consumers from 2010. Mob4Hire N = 48 brands, most brands represent different wireless service providers (N = 41) and a handful of PC manufacturers. Metrics were calculated for brands with 30 or more responses. -100 4.0 -50 5.5 0 7.0 50 8.5 100 10.0
  • 5. Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com Study Design  Participants invited via blog post about the study; post shared through social media connections, professional online communities and email list.  Blog post included hyperlink to web-based data collection instrument  CEM professionals were given 5 NPS values (-100, -50, 0, 50 and 100) and 5 comparable Mean values (4.0, 5.5, 7.0, 8.5 and 10. For each metric value, they were asked to make their best guess about the size of the following customer segments:  % of respondents who have a rating of 9 or 10 (Promoters / Top Box Score)  % of respondents who have a rating between 0 and 6, inclusive (Detractors / Bottom Box Score)  % of respondents who have a rating of 7 or 8 (Passives / Middle Box Score)  % of respondents who have a rating of 6 or greater (Satisfied / Top Box Score)
  • 6. Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com Sample Demographics B2B and B2C 42% B2C 3% B2B 55% Individual contributor of CEM Program 3% Manager of CEM Program 28% Director of CEM Program 9% Senior Executive of CEM Program 13% Outside consultant 22% Other 25% Beginner 10% Average 13% Proficient 45% Expert 32% What is your level of expertise in your company's CEM Program?What is your current role? What Best Describes Your Company?  Forty-one CX professionals participated in the study.
  • 7. Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com Sample: Expertise in Metric Beginner 24% Average 30% Proficient 21% Expert 24% Beginner 21% Average 37% Proficient 17% Expert 24% Level of expertise in using NPS in their CEM program Level of expertise in using Mean Scores in their CEM program  Wide range of expertise seen for both NPS and Mean Scores
  • 8. Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com Estimating % of Promoters From NPS and Mean Values  People are more accurate at estimating the size of Promoters (i.e., Top Box Score) using the NPS (except for slight understimation for NPS = 100.  When given a high Mean Score, people greatly underestimate the percent of Promoters. Estimated percent of promoters: CEM professionals’ best guess as to the percent of respondents who have ratings of 9 or 10 (Promoters) 0 10 20 30 40 50 60 70 80 90 100 4.0 5.5 7.0 8.5 10.0 PercentofCustomerswith aratingof9or10(Promoters) Mean Value Actual % Promoters Estimated % Promoters Actual percent of promoters: The actual percent of respondents who have a rating of 9 or 10 (Promoters) Confidence Interval: Sample statistic ± margin of error at a 95% confidence level for estimated percent of Promoters  CEM professionals were given different NPS and Mean values and asked to estimate the % of customers who are Promoters. For estimation using Mean Values, N = 26 to 30. For estimation using NPS Values, N = 33 to 41. 0 10 20 30 40 50 60 70 80 90 100 -100 -50 0 50 100 PercentofCustomerswith aratingof9or10(Promoters) NPS Value Actual % Promoters Estimated % Promoters
  • 9. Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com Estimating % of Detractors From NPS and Mean Values  When given a low summary metric, people greatly underestimate the percent of Detractors – more so for Mean values than for NPS values.  When given a high summary value, people slightly overestimate the percent of Detractors Estimated percent of Detractors: CEM professionals’ best guess as to the percent of respondents who have ratings of 0 - 6 (Detractors) Actual percent of Detractors: The actual percent of respondents who have a rating of 0 - 6 (Detractors) Confidence Interval: Sample statistic ± margin of error at a 95% confidence level for estimated percent of Detractors  CEM professionals were given different NPS and Mean values and asked to estimate the % of customers who are Detractors. For estimation using Mean Values, N = 26 to 30. For estimation using NPS Values, N = 33 to 41. -10 0 10 20 30 40 50 60 70 80 90 100 4.0 5.5 7.0 8.5 10.0 PercentofCustomerswith aratingof0or6(Detractors) Mean Value Actual % Detractors Estimated % Detractors -10 0 10 20 30 40 50 60 70 80 90 100 -100.0 -50.0 0.0 50.0 100.0 PercentofCustomerswith aratingof0to6(Detractors) NPS Value Actual % Detractors Estimated % Detractors
  • 10. Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com Estimating % of Passives From NPS and Mean Values  When given a low summary metric, people greatly underestimate the percent of Detractors – more so for Mean values than for NPS values.  When given a high summary value, people slightly overestimate the percent of Detractors Estimated percent of Passives: CEM professionals’ best guess as to the percent of respondents who have ratings of 7 - 8 (Passives) Actual percent of Passives: The actual percent of respondents who have a rating of 7 - 8 (Passives) Confidence Interval: Sample statistic ± margin of error at a 95% confidence level for estimated percent of Passives  CEM professionals were given different NPS and Mean values and asked to estimate the % of customers who are Passives. For estimation using Mean Values, N = 26 to 30. For estimation using NPS Values, N = 33 to 41. -10 0 10 20 30 40 50 60 70 80 90 100 -100.0 -50.0 0.0 50.0 100.0 PercentofCustomerswith aratingof7or8(Passives) NPS Value Actual % Passives Estimated % Passives -10 0 10 20 30 40 50 60 70 80 90 100 4.0 5.5 7.0 8.5 10.0 PercentofCustomerswith aratingof7or8(Passives) Mean Value Actual % Passives Estimated % Passives
  • 11. Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com  Greater downward bias in predictions when NPS is used. Estimating % of Positives (6-10) from NPS and Mean Values  For each NPS value, CEM professionals underestimated the percent of Positive respondents.  When given a mean, CEM professionals underestimated the percent of Positive respondents when mean was 5.5 or greater; overestimated percent of Positive respondents when Mean = 4. Estimated percent of positives: CEM professionals’ best guess as to the percent of respondents who have ratings of 6 - 10 (Positives) Actual percent of positives: The actual percent of respondents who have a rating of 6 – 10 (Positives) Confidence Interval: Sample statistic ± margin of error at a 95% confidence level for estimated percent of Positives  CEM professionals were given different NPS and Mean values and asked to estimate the % of customers who are Positives (6 – 10 rating). For estimation using Mean Values, N = 26 to 30. For estimation using NPS Values, N = 33 to 41. 0 10 20 30 40 50 60 70 80 90 100 -100 -50 0 50 100 PercentofRespondentswitha ratingof6orgreater NPS Value Actual % 6 or greater Estimated % 6 or greater 0 10 20 30 40 50 60 70 80 90 100 4.0 5.5 7.0 8.5 10.0 PercentofRespondentswitha ratingof6orgreater Mean Value Actual % 6 or greater Estimated % 6 or greater  Greater downward bias in predictions when NPS is used.
  • 12. Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com Study Findings  Some bias in customer metrics  CX professionals underestimate the size of important customer segments when only looking at Mean or Net Promoter Scores  CX professionals are better at estimating the size of NPS-specific segments based on the Net Promoter Scores than Mean Scores  CX professionals underestimate the size of Satisfied segment based on summary metric on both Mean or Net Promoter Scores (slightly worse for NPS)
  • 13. Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com Implications  Operations  Correct interpretation of results improves how leaders run their organizations  Present both aggregated metric (NPS or Mean) and segment-specific metric (Top/Bottom Box Score)  Minimizes misinterpretation of data  Human Resources  Data Education / Training on basics of data analysis  Data literacy is essential to Big Data Success  Visualization/Analytic Software  Pick vendors who allow you to summarize your data in different ways
  • 14. Copyright © 2014 Business Over Broadway · Bob E. Hayes, PhD · bob@businessoverbroadway.com · www.businessoverbroadway.com For More Information Bob E. Hayes, Ph.D. Email: bob@businessoverbroadway.com Web: www.businessoverbroadway.com Blog: www.businessoverbroadway.com/blog Twitter: www.twitter.com/bobehayes