Why hospitals also need benchmarking marketing capabilities? An empirical study of relationships between marketing practices and its outcomes.
Sharma, Anand ; Dadwal, Sumesh Singh ; Mahal, Sandeep Singh 等
Introduction
In dynamic competitive environment customer satisfaction is
becoming the generic strategy of all marketers. Even hospitals and
health care providers are feeling the heat of competition, particularly
players in private sector. They are changing the ways of doing their
business. But perhaps due to the prevalence of excess demand over supply
the output of many public sector hospitals are not as per required
quality standards. But now various forces of change, that include
competitive pressures, alternate health care delivery mechanisms,
changing cost structures, monitoring by public and private groups,
increased information availability, and a markedly better-informed
customer base, have begun to exert significant pressures on health care
providers to reassess their strategic options. In order to obtain
competitive advantage a health service providers (hospitals) should
inculcate a market-based learning approach where they can identify and
monitor value sources of competitive advantage, such as marketing
capabilities, which can provide fact-based evidence to help managers
recognize the need for capability improvements.
Profile of Health Industry in India
Health care industry is one of the fastest-growing industries in
the service sector, which grew by more than 13 per cent per annum in the
last decade. Highly qualified and experienced personnel man India's
health services. Slowly, super-specialty hospitals specializing in both
modern and traditional Indian medical systems supported by
state-of-the-art equipment are now attracting patients from across the
world. India's health care industry is estimated at Rs1,500 billion
or USD 34 billion. In a country geographically widespread and having so
much socioeconomic diversity no one can serve all. So segments of health
care providers are emerging which are targeting specific socioeconomic
or lifestyle segments. Private players are attracting high net-worth
patients both from the domestic and the international market. The
government is always under fiscal pressure and advises public sector
units to improve efficiency or generate additional resources. Here lies
the opportunity and threat in front of the so-called relaxing market
players. There are more than 140 million upper- and middle-class
population, growing at over 4 per cent per annum with combined annual
income of over Rs820,000 crore. Further, privatization of the insurance
sector has led to a spurt in health care services. Insurance is expected
to be the main driver for raising quality consciousness and increased
demand for better standards, hospital accreditation, and patient-
management information systems.
Review of Literature
In the present work researchers have looked into marketing drivers
and expectations of health care service providers in Chandigarh and its
surrounding area. It has been recognized that market-based learning is
an important source of sustainable competitive advantage (Hult 1998;
Slater and Narver 1995). Barney, (1991) observed that four indicators,
viz., value, rareness, inimitability, and non-substitutability, provide
a firm the much required ability to generate sustained competitive
advantage. Galbreath and Galvin (2004) discovered that while RBV (Recourse-based view) theory largely associates firm performance with
intangible resources, the association might not always hold true
empirically. One explanation may be that the strength of some resources
are dependent upon interactions or combinations with other resources and
therefore no single resource--intangible or otherwise--becomes the most
important to firm performance (Academy of Management, Best Conference
Paper, 2004 BPS: L6).
Strategic marketing scholars have identified a firm's market
orientation as its ability to learn about its market environment and to
use this knowledge to guide its actions appropriately (Hunt and Morgan 1995; Jaworski and Kohli 1993; Narver and Slater 1990). It has been
found that relatively higher emphasis was placed on the marketing
strategy by firms which are large, are involved in consumer goods industry, are involved in exports, have high domestic sales growth, and
have adopted a differentiation strategy combined with a cost leadership
strategy (Sharma 2004). But it has also been noted that the basic
principles of marketing appear to be equally valuable to both large and
small firms. (Wai-sum Siu and Kirby 1998). Literature has illustrated
that each marketing capability is directly and positively related to
firm performance, indicating that these marketing capabilities are
sources of competitive advantage (Vorhies and Morgan 2005). Further they
observed that marketing capability interdependency factor is strongly
and positively linked with a firm's performance. This indicates
that for designing customer service strategies these marketing
capabilities should be of the utmost importance and a firm or a hospital
should focus on these marketing variables to achieve a competitive
advantage.
Need of the study and corresponding constructs
Thus, keeping the literature in mind this study was conducted to
find out the basic strategies, which help hospitals to achieve a
competitive advantage. Although numerous studies related to hospital
have been conducted, no one specifically attempted to identify the
underlying determinants of hospital profitability. If these factors are
identified, hospital executives can focus their efforts on those aspects
of operations that affect profitability most, and public policy makers
can gain insights into the potential effects of alternative policy
decisions on hospital financial viability. A study was conducted with
twenty-two hypothesized profitability determinants as independent
variables and five profitability measures as dependent variables. The
results provide evidence that selected managerial and patient-mix
variables are predictors of profitability. It appears profitability is
not dictated by organizational or market factors but more strongly
influenced by factors that, to some extent, can be influenced by
hospital policies and practices (Gapenski, Vogel, and Langland-Orban
1993).
Based on previous literature review, in the current research,
researchers have identified eight distinct marketing capabilities, which
contribute to business performance (Vorhies and Morgan 2005). These
marketing capabilities or the strategic elements which lead a firm to
achieve competitive advantage are:
* Product Development, the process by which firms develop and
manage product and service offerings (Dutta, Narasimhan, and Rajiv 1999);
* Pricing, the ability to extract the optimal revenue from the
firm's customers (Dutta, Zbaracki, and Bergen 2003);
* Customer Management (a process by which a firm retains its
customers and saves on making new customers which can lead to
profitability), the firm's ability to establish and maintain
Customer Relationship Management (CRM) that effectively and efficiently
delivers value to consumer (Weitz and Jap 1995);
* Marketing Communications, the firm's ability to manage
customer value perceptions (McKee et al. 1992);
* Staff management, the process by which the firm encounters
customer orders (Shapiro, Slywotzky, and Doyle 1997);
* Market Information Management, the process by which firms learn
about their markets and use market knowledge (Day 1994; Menon and
Varadarajan 1992);
* Marketing Planning, the firm's ability to conceive marketing
strategies that optimize the match between the firm's resources and
its marketplace (Morgan et al. 2003);
* Marketing Implementation, the process by which intended marketing
strategy is transformed into realized resource developments (Noble and
Mokwa 1999). In the present research work market performance is measured
with respect to market effectiveness and current profitability of
hospitals.
Objectives of the Study
The study was conducted with a view to:
* Finding out the association between income group of patients and
type of hospitals and marketing variables/drivers.
* Finding out the relationship between marketing drivers (Product
Development, Pricing, Customer management, Marketing Communication
Staff, Marketing Information Management, Marketing Planning, Marketing
Implementation) and marketing outcome (Market Effectiveness and Current
Profitability).
* Finding out the differences between marketing strategies of
government and private hospitals.
Research Methodology
Data were collected from fifteen hospitals (all big hospitals) with
the help of a well-structured questionnaire vide Annexure 1, which was
submitted to marketing administrators of hospitals. For developing the
questionnaire, the scale was adapted from an earlier paper, 'Bench
Marking Capabilities for Sustainable Competitive Advantage'
(Vorhies and Morgan 2005). The data collected were analysed by using
statistical tools, viz., Chi-square test, Correlation test, Regression
analysis and ANOVA, using Microsoft Excel and SPSS software.
Analysis of Data
Type of customers and type of hospitals
[H.sub.0]1 : There is no relationship between the type of hospital
and the income group of the patients.
To find out the relationship between the income groups and the
preference for the type of hospital, the Chi-square test was performed.
From the Chi-square test the [chi square] (p = 0.000 at [alpha] of
0.05,) indicates that there may be some relationship. Further, as it may
be observed from Table 1, certain frequencies are low so Yeats
correction factor was applied which again lead's to rejection of
the Hypothesis ([chi square] calculated = 5.63, [chi square] tabulated =
3.84).
Scores for marketing variables
Researchers observed that the means of score as given by marketing
heads of hospitals (on Lickert scale) for the marketing
variables/drivers are almost same, except for Marketing Communications,
where the private hospitals pay more attention. Further, all scores are
on the higher side on a scale of 1-7, most of the score being more than
5.
Marketing variables:
Govt. Private
1. Pricing 5.72 5.59
2. Product Development 5.59 5.82
3. Customer Management 5.02 5.35
4. Marketing Communications 2.45 5.71
5. Staff Management 6.04 6.10
6. Marketing Information 3.88 3.77
Management
7. Marketing Planning 3.48 4.20
8. Marketing, Implementation 4.95 5.23
For marketing planning and information management the scores are
low. Higher score values indicate that hospitals deliberate upon
strategies related to Pricing, Product Development, Customer Management
and Staff. While other variables/drivers like Information Management,
Planning, and Marketing Implementation are given lesser preference by
both types of hospitals.
Further, the analysis reveals that hospitals generally try to
formulate strategies specific to 'patient segments'. Hospitals
catering to the higher income group (HIG) tend to focus marketing
strategies on these drivers/variables and those catering to the lower
income group (LIG) do it to a lesser extent.
Scores on marketing variables/drivers:
LIG HIG
l. Pricing 5.7 6.0
2. Product Development 5.5 5.8
3. Customer Management 5.0 5.3
4. Marketing Communications 2.4 5.7
5. Staff 6.0 6.1
6. Marketing Information 2.8 3.7
Management
7. Marketing Planning 3.4 4.2
8. Marketing Implementation 4.9 5.2
As already established with Chi-squire private hospitals mostly
cater to higher income group of the society and government hospitals to
lower income group. So it can be further inferred that private hospitals
are using these market drivers more vigorously than government
hospitals. This can be because private hospitals compete to gain the
patients base, whereas government hospitals fight for social needs and
they generally do not formulate strategies keeping in mind those of the
competitors. Marketing Communications has a significant difference in
the means, which might be because the patients of the higher income
group want to know more about any hospital before going to it. Thus
private hospitals or the hospitals which want to attract this segment
have to communicate aggressively that patients believe in them. On the
other hand government hospitals or those catering to the lower income
segment of the society do not need to advertise much.
[H.sub.0]2 : There is no difference of scores of the
'strategic marketing variables' between government and private
hospitals in Chandigarh.
To find out whether there is statistical difference of the scores
of marketing drivers and to establish tentative relationship between a
parametric (marketing variables/ drivers) and a non-parametric variable
(type of hospital: government or private) researchers compared the means
of scores using Independent Samples T Test, as follows:
[H.sub.0]2a : There is no difference in the pricing strategy of
government and private hospitals.
T-test indicate that there is no significant difference between the
Pricing Strategies of government and private hospitals (p = 0.535 at
[alpha] of 0.05, mean difference = 0.352, and Levene's p = 0.771).
There is no evidence to suggest that two means are different. Although
private hospitals appear to focus more on pricing strategies than the
government hospitals.
[H.sub.0]2b : There is no difference in the product development
strategy of government and private hospitals.
Further, no significant difference in the product development
strategy was found between the government and private hospitals (p =
0.392 at [alpha] of 0.05, mean difference = 0.257 and Levene's p=
0.432). There is no evidence to suggest that two means are different.
[H.sub.0]2c : There is no difference in the customer management
strategy of government and private hospitals.
No significant difference in the customer management strategy was
found between government and private hospitals (p = 0.613 at [alpha] of
0.05, mean difference = -0.3363 and Levene's p= 0.656). There is no
evidence to suggest that two means are different.
[H.sub.0]2d : There is no difference in the marketing communication
strategies of government and private hospitals.
Test rejects the null hypothesis that there is no difference in the
marketing communication strategies of government and private hospitals
(p = 0.000 at [alpha] of 0.05, mean difference = -3.3 and Levene's
p = 0.706). There is no evidence to suggest that two means are
different. From the mean scores, the researchers inferred that a
difference lies in the focus on communication as driver of marketing
between the government and private hospitals (mean score Government =
2.45, Private = 5.71). This shows that the private hospitals do take
care of their corporate image and advertise themselves accordingly. A
few private hospitals have websites of their own which are updated
periodically whereas some big government hospitals also have websites
which are not updated since long.
[H.sub.0]2e : There is no difference in the management of staff
among government and private hospitals.
The null hypothesis that there is no significant difference in
focus on the management of staff among the government and private
hospitals is accepted (p = 0.847 at [alpha] of 0.05, mean difference =
-0.053 and Levene's p = 0.632 and means range from 6.04-6.09)
showing that both type of hospitals keep their staff trained and happy.
[H.sub.0]2f : There is no difference in the marketing information
strategies among government and private hospitals.
The null hypothesis that there is no significant difference in the
scores of marketing information strategies between government and
private hospitals (p = 0.241 at [alpha] of 0.05, mean difference = 0.73
and Levene's p = 0.681 and means range from 2.88-3.77 for
government and private hospitals respectively). The low mean score
indicates that hospitals do not go in for information management.
Although previous studies show that information management is highly
correlated with marketing effectiveness and current profitability still
the hospitals are not managing information systems.
[H.sub.0]2g : There is no difference in the marketing planning
strategies between government and private hospitals.
Low scores on marketing planning (means are 3.48 for government
hospitals and 4.20 for private hospitals) show lack of focus on this
driver by all. Further the null hypothesis of no significant difference
in the marketing planning scores between government and private
hospitals is not rejected (p = 0.260 at [alpha] of 0.05, mean difference
= -0.73 and Levene's p = 0.131)
[H.sub.0]2h : There is no difference in the marketing
implementation strategies among government and private hospitals.
Non-rejection of hypothesis indicates that there is no significant
difference in scores of the marketing implementation strategies between
the government and private hospitals (p = 0.392 at [alpha] of 0.05, mean
difference = -0.273 and Levene's p = 0.597). Average mediocre scores showed that the implementation process in the hospitals is just
on an average level (the means are 4.95 for government and 5.22 for
private hospitals).
[H.sub.0]3 : Strategic marketing variables are not related to
target customer of the hospitals.
The managements of the hospitals were asked to identify their
target patients. This test was performed so that it could be known what
type of strategies attracted the patients to the hospitals. The results
obtained from ANOVA (Table 2) show that only marketing communication is
related with the target customer's income groups (p = 0.000 at
[alpha] of 0.05) and thus the hypothesis of no significant difference
between the scores of market drivers of hospital viz-a-viz target
customer population is accepted with just one exception in case of
marketing communication.
Perceived performance as related to Marketing Variable/Drivers
Perceived performance was measured in terms of marketing
effectiveness (on market share growth relative to competition, growth in
sales revenue, increasing sales to existing customers) and profitability
(business unit profitability, return on investment, return on sales,
reaching final goals), and then it was correlated with marketing
drivers. From the matrix of correlations between marketing drivers and
outcome in form of perceived effectiveness and profitability (Table 3),
it has become obvious that the strategic marketing variables have a
positive correlation with the effectiveness and profitability variables.
Further, it may be observed that drivers such as Pricing (r =
0.592, p = 0.020), Customer Management (r = 0.572 p = 0.026), Staff (r =
0.614, p = 0.015), Marketing Planning (r = 0.781, p = 0.001) and Market
Information Management (r = 0.802, p = 0.000) are strongly related to
Market Effectiveness. On the other hand Product Development (r = 0.535,
p = 0.040), Customer Management (r = 0.802, p = 0.000), Market
Information Management (r = 0.546, p = 0.035), and Marketing Planning (r
= 0.648, p = 0.009) are strongly related to Current Profitability. All
correlations are highly significant at [alpha] of 0.05.
Respondents also perceived that the focus on price promotions (r =
0.471 p = 0.076), expenditure on marketing communication (r = 0.133 p =
0.636), staffing policy (r = 0.439 p = 0.101), and factors leading to
market effectiveness(r = 0.374, p = 0.169), are weekly related to
current profitability. All these are perceived as expenses which eat
into current profitability. Market effectiveness and current
profitability are considered as separate constituents not supplementary
but as substitute for each other (small correlation coefficient).
They also perceive that product development (r = 0.342, p = 0.213),
marketing communication (r = 0.373, p = 0.171), marketing implementation
(r = 0.289, p = 0.296), and current profitability (r = .374, p = 0.169)
are not strongly related to market effectiveness. The irony is that
profitability and market effectiveness are perceived as antitheses and
not synergizing each other. Also, marketing communication is perceived
as not important either for profitability or for market effectiveness.
So they perceive that profitability and market effectiveness are weekly
related or are just opposite to each other. So they chose either of them
and not both of them as performance measure (agency effect).
Effect of Drivers on Marketing Outcomes
The relative influence of marketing drivers on marketing
effectiveness was also measured. The strength and direction of relation
is seen from the correlation matrix but regression equation helps one
find the relative contribution of each marketing driver towards
marketing effectiveness or current profitability. The general equation
formed is a straight line and is given as
[Y.sub.i] = [[beta].sub.0] + [[beta].sub.i] [X.sub.i] + [e.sub.i]
Where:
[Y.sub.i] = Dependent or Criterion Variable (the market
effectiveness or current profitability);
[X.sub.i] = Independent or Predictor Variable (marketing variables
/drivers);
[[[beta].sub.0] = Intercept of the line;
[[[beta].sub.i] = Slope of the line; and
[e.sub.i] = Error associated with the ith observation.
Effect of Drivers on Marketing Effectiveness
Effect of Pricing on Marketing Effectiveness
It can be observed that the value of correlation coefficient
'r' is 0.592 and has high positive value. Here p = 0.020
(below 0.05) which leads to the conclusion that the linear model fits
well, and marketing effectiveness does depend upon focusing on pricing
strategies and is positively related.
Thus, Marketing Effectiveness = 3.038 + 0.396 (Pricing) + 0.149 I
To check the empirical validity of the above equation, when one puts the
value of Xi as 6.50 (empirically observed value for Pricing) one gets
5.76 as Yi which is very close to the empirical value for (Marketing
effectiveness) 6.00. Thus, it is very close to the calculated value.
Effect of Customer Management strategies on Marketing Effectiveness
Marketing Effectiveness = 3.669 + 0.328 (Customer Management) +
0.13 II
(r=0.572, p = 0.026, which is below 0.05)
Effect of Staff on Marketing Effectiveness
Marketing Effectiveness = 0.227 + 0.847 (Staff) + 0.302 III
(r = 0.614, p = 0.15)
Effect of Market Information Management (MIM) on Marketing
Effectiveness
Marketing Effectiveness = 4.079 + 0.391 (MIM) + 0.302 IV
(r = 0.802, p = 0.000)
Effect of Marketing Planning on Marketing Effectiveness
Marketing Effectiveness = 3.638 + 0.453 (Marketing Planning) +
0.101 V
(r = 0.781, p= 0.000)
From the above regression equations I to V, it can be inferred that
the strategic marketing variables/drivers are strongly related to
marketing effectiveness.
Effect of Drivers on Current Profitability
Similarly, the strategic marketing drivers/factors like Product
Development, Customer Management, Market Information Management, and
Marketing Planning show a strong effect on Current Profitability.
Effect of Product Development on Current Profitability
Current Profitability = 0.912 (Product Development) - 0.314 + 0.399
VI
(r = 0.535, p = 0.040)
Effect of Customer Management Strategies on Current Profitability
Current Profitability = 0.551 (Customer Management) + 2.032 + 0.114
VII
(r = 0.802, p = 0.000)
Effect of Marketing Information Management on Current Profitability
Current Profitability = 0.319 (MIM) + 3.832 + 0.136 VIII
(r = 0.546, p = 0.035)
Effect of Marketing Planning on Current Profitability
Current Profitability = 0.451 (Marketing Planning) + 3.165 + 0.147
IX
(r = 0.648, p = 0.009).
From equations VI to IX it is observed that Current Profitability
is positively related and affected by the marketing variables/drivers.
Thus the hospitals should strive to formulate the strategies and
implement them in such a way that they gain maximum profits out of it
and can have an effective market in the region.
Multiple Regression Model
Further, to find out joint effect of multiple drivers acting
simultaneously, researchers tried a multiple regression model. In this,
only a few marketing variables which had shown a higher correlation
(> 0.6), were regressed with marketing effectiveness or current
profitability. When the variables like Pricing, Customer Management,
Staff, Marketing Information Management, and Marketing Planning were
regressed with marketing effectiveness the regression equation obtained
was:
Marketing Effectiveness = 0.223 (Pricing) - 0.269 (Customer
Management) + 0.312 (Staff) - 0.012 (Marketing Information Management) +
0.544 (Marketing Planning) + 1.523 X
It may be noted that the coefficient of customer management and
marketing information management negatively effect the scores of
marketing effectiveness. The R for the regression equation is 0.882 and
the [R.sup.2] is 0.779, showing that on the whole these five factors/
drivers have a strong effect on marketing effectiveness. The
relationship is proved by the ANOVA where the p-value was 0.009 at
[alpha] of 0.05. The marketing strategy elements/drivers, which show
strong relationship with Current Profitability, were then regressed on
current profitability.
Keeping the marketing strategy variables in mind Current
Profitability can be calculated by the following equation:
Current Profitability = 0.324 (Product Development) + 0.772
(Customer Management) + 0.473 (Marketing Information Management) - 0.762
(Marketing Planning) + 0.650 XI
Where R = 0.824, [R.sup.2] = 0.678, and the p-value from the ANOVA
test was found to be 0.015 at [alpha] 0.05. This proves the
appropriateness of the equation as a whole.
It can also be inferred that marketing planning is considered as
redundant activity, which strongly and negatively affect corporate
profitability. Similarly, coefficient of marketing planning negatively
affects the score of corporate profitability. This may be because of
mental dissonance/conflicts in the minds of the respondents, which had
arisen due to mismatch between customer expectation and owners'
expectation (performance appraisal system).
Conclusion
From the research, one can conclude that as the efficiency of
marketing strategies increases, the marketing effectiveness and current
profitability will also increase in the same direction. The hospitals in
the region (both government and private) are giving emphasis on
marketing drivers like staff, customer management, product development
and pricing but are not emphasizing on marketing planning and marketing
information management. If the two types of hospitals give equal
importance to all the drivers, they could achieve higher penetration in
the market. Further, these strategies are strongly and positively
related to the market-effectiveness and current profitability.
Multiple regression equation measuring the effect of the marketing
strategies on the marketing effectiveness and current profitability
found a change in the value of regression coefficients. There were even
some negative coefficient values in the equations. It was found that
customer satisfaction and marketing information management increased the
marketing effectiveness when regressed alone, but during multiple
regression the values for these coefficients became negative. The exact
reason for the difference is not known but the perceived reason could be
that there is some problem with the resource allocation ('either
this or that dilemma'). Hospital management considers these two
variables to be important during the planning stages of the strategies
but during implementation they might be diverting resources from the
customer management ([[beta].sub.i] = -0.269) and information management
([[beta].sub.i] = -0.012) to some other drivers that they consider more
important in affecting marketing effectiveness. Similarly, the equation
formed with current profitability and marketing strategy variables
affecting it showed that while measuring profitability, hospitals in
Chandigarh intend to neglect marketing planning ([[beta].sub.i] =
-0.762).
Implication for policy makers and Managers
From the research a 2 x 2 matrix could be proposed for future
analysis, which can help hospitals achieve higher marketing
effectiveness and current profitability (Figure 1).
[FIGURE 1 OMITTED]
Marketing Effectiveness and Current Profitability are kept on the X
and Y axes respectively and the plane is divided on the basis of high
and low effectiveness and profitability; four quadrants are formed which
decide four likely positions for a hospital. Any hospital management
would try to reach the Desired Zone (QIII) from whichever quadrant they
stand. The hospitals should be able to analyse themselves by conducting
the internal analysis such as the balanced score card method from which
they would come to know the exact marketing elements where they may be
lagging behind. No hospital would like to fall in QI (Undesired Zone),
where there is low Profitability and low Effectiveness. They would try
and reach either QII or QIV but preferably should work on the required
strategies to reach QIII for high Marketing Effectiveness and high
Current Profitability.
Any hospital, which is in QII quadrant (high Marketing
Effectiveness and Low Current Profitability), should work on the
strategies like Product Development, Customer Management, Marketing
Planning, Marketing Implementation, and Pricing to reach QIII. If a
hospital is in QIV (high Current Profitability and low Marketing
Effectiveness), it will have to work on strategies like Marketing
Communication, Staff, Marketing Planning, and Marketing Information
Management to reach QIII.
Managers and policy makers can use these regression models to find
their marketing effectiveness and profitability. Further, they can
incorporate these marketing output measures in the appraisal systems of
the employees. Such a new system will be focused on customers, driven by
marketing, and oriented towards profitability. Such a system will
minimize managers decision deviated by agency effect. Also, it is found
in the multiple regression equation that the mutual effect of different
marketing variables/drivers does not appear to be synergetic, although,
one by one, each driver is positively correlated with marketing output
measures. Such paradox can be hypothesized to be caused by mental
dissonance of marketing administrators, due to mismatch between how they
are appraised and how they ought to be making decisions in competitive
settings. Thus the proposed matrix can reduce this kind of conflicts and
set up a framework of decision making even in a bureaucratic set-up. As
observed, the lesser aggressiveness of government hospitals may decrease
their market share particularly for middle and upper income patient
segments. Policies have to be designed in such a manner that government
hospitals also start catering at least to three economic segments
delivering differentiated services and pricing accordingly. The message
for them is that future survival is in competing with competitors and
having always a competitive edge and not with a governmental edge.
Annexure I
(Adapted from Douglas W. Vorhies, Niel A. Morgan,
'Benchmarking Marketing Capabilities for Sustainable Competitive
Advantage', Journal of Marketing, Vol. 69, January 2005)
Questionnaire
Name of the hospital: --
Address: --
Year of establishment: --
Approximate number of out-patients per day: --
Approximate number of in-patients in the hospital at this time: --
Number of beds in the hospital: --
Have you made the policies of your hospital keeping in knowledge
the policies of your competitors?
Yes [] No []
If yes, please answer the following questions:
Who is your target customer (in terms of price):
Please rate your hospital (unit) in terms of its marketing
capabilities in the following statements. (-3 refers to extreme
dissatisfaction and 3 refers to extreme satisfaction.)
Pricing:
You use the pricing skills and -3 -2 -1 0 1 2 3
systems to respond quickly to market
changes
You have the knowledge of -3 -2 -1 0 1 2 3
competitors' pricing tactics
You are doing an effective job of -3 -2 -1 0 1 2 3
pricing product and services
Product development:
You are continuously monitoring -3 -2 -1 0 1 2 3
competitors prices and price changes
You have ability to develop new -3 -2 -1 0 1 2 3
services
You do test marketing of your new -3 -2 -1 0 1 2 3
services
You have been successfully launching -3 -2 -1 0 1 2 3
new services
You have been insuring that service -3 -2 -1 0 1 2 3
development efforts are responsive to
customer needs
Customer management and focus:
Patients ore given prompt and better -3 -2 -1 0 1 2 3
services
Patients ore treated with dignity -3 -2 -1 0 1 2 3
and respect
Medical condition of patients is -3 -2 -1 0 1 2 3
explained thoroughly to them
Feedback is obtained from patients -3 -2 -1 0 1 2 3
Specific needs of patients are taken -3 -2 -1 0 1 2 3
care of
Retaining the patients -3 -2 -1 0 1 2 3
Marketing communications:
You have being developing and -3 -2 -1 0 1 2 3
executing advertising programmes
Advertising management and creative -3 -2 -1 0 1 2 3
skills
Public relation skills -3 -2 -1 0 1 2 3
Brand image management skills and -3 -2 -1 0 1 2 3
processes
Managing corporate image and -3 -2 -1 0 1 2 3
reputation
Staffing:
Giving staff the training they need -3 -2 -1 0 1 2 3
to be effective
Effective staff control system -3 -2 -1 0 1 2 3
Professional and competent staff -3 -2 -1 0 1 2 3
Marketing information management:
Gathering information from the -3 -2 -1 0 1 2 3
customers and competitors
Using market research skills to -3 -2 -1 0 1 2 3
develop effective marketing
programmes
Tracking customers wants and needs -3 -2 -1 0 1 2 3
Making full use of your marketing -3 -2 -1 0 1 2 3
research information
Analysing your market information -3 -2 -1 0 1 2 3
Marketing planning:
Marketing planning skills -3 -2 -1 0 1 2 3
Ability to effectively segment and -3 -2 -1 0 1 2 3
target market
Marketing management skills and -3 -2 -1 0 1 2 3
processes
Developing creative marketing -3 -2 -1 0 1 2 3
strategies
Thoroughness of marketing planning -3 -2 -1 0 1 2 3
process
Marketing implementation:
Allocating marketing resources -3 -2 -1 0 1 2 3
effectively
Organizing to deliver marketing -3 -2 -1 0 1 2 3
programmes effectively
Translating marketing strategies -3 -2 -1 0 1 2 3
into actions
Executing marketing strategies -3 -2 -1 0 1 2 3
quickly
Monitoring marketing performance -3 -2 -1 0 1 2 3
Please evaluate the performance of your business over the last year.
(-3 if it is much worse and +3 if it is much better)
Market effectiveness:
Market share growth relative to -3 -2 -1 0 1 2 3
competitors
Growth in sales revenue -3 -2 -1 0 1 2 3
Acquiring new customers -3 -2 -1 0 1 2 3
Increasing sales to existing -3 -2 -1 0 1 2 3
customers
Market profitability:
Business unit profitability -3 -2 -1 0 1 2 3
Return on investment -3 -2 -1 0 1 2 3
Return on sale -3 -2 -1 0 1 2 3
Reaching financial goals -3 -2 -1 0 1 2 3
Thank you for your kind cooperation
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Anand Sharma * Sumesh Singh Dadwal * Sandeep Singh Mahal *
* Pharmaceutical Management, National Institute of Pharmaceutical
Education and Research, Mohali, India.
Table 1 : Cross-table between customer segment and preferred
hospital type.
Type of hospital Target customer groups/Income Total
Low income High income
(< Rs 2 lakh/year) (> Rs 2 lakh/year)
Government 8 0 8
Private 0 7 7
Total 8 7 15
Lower income patients are targets of government hospitals and upper
segment patients are targets of private hospitals.
Table 2 : ANOVA For Scores of Marketing Variables between LIG and HIG
ANOVA
Sum of Mean
Squares df Square
Pricing Between Groups 0.464 1 0.464
Within Groups 14.894 13 1.146
Total 15.358 14
Product Development Between Groups 0.194 1 0.194
Within Groups 3.206 13 0.247
Total 3.400 14
Customer Management Between Groups 0.422 1 0.422
Within Groups 20.493 13 1.576
Total 20.915 14
Marketing Between Groups 39.781 1 39.781
Communication Within Groups 5.249 13 0.404
Total 45.029 14
Staff Between Groups 0.011 1 0.011
Within Groups 3.589 13 0.276
Total 3.600 14
Marketing Information Between Groups 3.000 1 3.000
Management Within Groups 25.869 13 1.990
Total 28.869 14
Marketing Planning Between Groups 1.962 1 1.962
Within Groups 18.395 13 1.415
Total 20.357 14
Marketing Between Groups 0.290 1 0.290
Implementation Within Groups 4.814 13 0.370
Total 5104 14
ANOVA
F Sig.
Pricing 0.405 0.535
Product Development 0.785 0.392
Customer Management 0.268 0.613
Marketing 98.532 0.000
Communication
Staff 0.039 0.847
Marketing Information 1.508 0.241
Management
Marketing Planning 1.387 0.260
Marketing 0.782 0.392
Implementation
Table 3: Matrix of correlation between marketing Drivers and marketing
outcomes
Pricining Product
Develop-
ment
Pricing Pearson Correlation 1 0.663 ***
Sig. Sig. (2-tailed) 0.007
N 15 15
Proche Pearson Correlation 0.663 ** 1
Development Sig. Sig. (2-tailed) 0.007
N 15 15
Customer Mgt Pearson Correlation 0.547* 0.663 **
Sig. Sig. (2-tailed) 0.035 0.007
N 15 15
Marketing Pearson Correlation 0.217 0.402
Communication Sig. Sig. (2-tailed) 0.438 0.137
Mgt N 15 15
Staff Pearson Correlation 0.408 0.014
Sig. Sig. (2-tailed) 0.131 0.960
N 15 15
Market Pearson Correlation 0.369 0.275
Information Mgt Sig. Sig. (2-tailed) 0.176 0.322
N 15 15
Marketing Pearson Correlation 0.462 0.524 *
Planning Sig. Sig. (2-tailed) 0.083 0.045
N 15 15
Marketing Pearson Correlation 0.360 0.747 **
Implementation Sig. Sig. (2-tailed) 0.187 0.001
N 15 15
Market Pearson Correlation 0.592 * 0.342
Effectiveness Sig. Sig. (2-tailed) 0.020 0.213
N 15 15
Current Pearson Correlation 0.471 0.535 *
Profitability Sig. Sig. (2-tailed) 0.076 0.040
N 15 15
Cus- Mar
tomer keting
Manage- Commu-
ment nication
Mgt
Pricing Pearson Correlation 0.547 * 0.217
Sig. Sig. (2-tailed) 0.035 0.438
N 15 15
Proche Pearson Correlation 0.663 ** 0.402
Development Sig. Sig. (2-tailed) 0.007 0.137
N 15 15
Customer Mgt Pearson Correlation 1 0.279
Sig. Sig. (2-tailed) 0.313
N 15 15
Marketing Pearson Correlation 279 1
Communication Sig. Sig. (2-tailed) 313
Mgt N 15 15
Staff Pearson Correlation 0.389 -0.040
Sig. Sig. (2-tailed) 0.152 0.888
N 15 15
Market Pearson Correlation 0.675 ** 0.423
Information Mgt Sig. Sig. (2-tailed) 0.006 0.117
N 15 15
Marketing Pearson Correlation 0.842 ** 0.469
Planning Sig. Sig. (2-tailed) 0.000 0.078
N 15 15
Marketing Pearson Correlation 0.692 ** 0.316
Implementation Sig. Sig. (2-tailed) 0.004 0.251
N 15 15
Market Pearson Correlation 0.572 * 0.373
Effectiveness Sig. Sig. (2-tailed) 0.026 0.171
N 15 15
Current Pearson Correlation 0.802 ** 0.133
Profitability Sig. Sig. (2-tailed) 0.000 0.636
N 15 15
Staff Market
Informa-
tion Mgt
Pricing Pearson Correlation 0.408 0.369
Sig. Sig. (2-tailed) 0.131 0.176
N 15 15
Proche Pearson Correlation 0.014 0.275
Development Sig. Sig. (2-tailed) 0.960 0.322
N 15 15
Customer Mgt Pearson Correlation 0.389 0.675 **
Sig. Sig. (2-tailed) 0.152 0.006
N 15 15
Marketing Pearson Correlation -0.040 0.423
Communication Sig. Sig. (2-tailed) 0.888 0.117
Mgt N 15 15
Staff Pearson Correlation 1 0.638 *
Sig. Sig. (2-tailed) 0.010
N 15 15
Market Pearson Correlation 0.638 * 1
Information Mgt Sig. Sig. (2-tailed) 0.010
N 15 15
Marketing Pearson Correlation 0.481 0.936 **
Planning Sig. Sig. (2-tailed) 0.069 0.000
N 15 15
Marketing Pearson Correlation 0.044 0.304
Implementation Sig. Sig. (2-tailed) 0.878 0.271
N 15 15
Market Pearson Correlation 0.614 * 0.802 **
Effectiveness Sig. Sig. (2-tailed) 0.015 0.000
N 15 15
Current Pearson Correlation 0.439 0.546 *
Profitability Sig. Sig. (2-tailed) 0.101 0.035
N 15 15
Market- Mar
ing Plan- keting
ning Imple-
menta-
tion
Pricing Pearson Correlation 0.462 0.360
Sig. Sig. (2-tailed) 0.083 0.187
N 15 15
Proche Pearson Correlation 0.524 * 0.747 **
Development Sig. Sig. (2-tailed) 0.045 0.001
N 15 15
Customer Mgt Pearson Correlation 0.842 ** 0.692 **
Sig. Sig. (2-tailed) 0.000 0.004
N 15 15
Marketing Pearson Correlation 0.469 0.316
Communication Sig. Sig. (2-tailed) 0.078 0.251
Mgt N 15 15
Staff Pearson Correlation 0.481 0.044
Sig. Sig. (2-tailed) 0.069 0.878
N 15 15
Market Pearson Correlation 0.936 ** 0.304
Information Mgt Sig. Sig. (2-tailed) 0.000 0.271
N 15 15
Marketing Pearson Correlation 1 0.473
Planning Sig. Sig. (2-tailed) 0.075
N 15 15
Marketing Pearson Correlation 0.473 1
Implementation Sig. Sig. (2-tailed) 0.075
N 15 15
Market Pearson Correlation 0.781 0.289
Effectiveness Sig. Sig. (2-tailed) 0.001 0.296
N 15 15
Current Pearson Correlation 0.648 ** 0.407
Profitability Sig. Sig. (2-tailed) 0.009 0.132
N 15 15
Market Current
Effec- Profit-
tiveness ability
Pricing Pearson Correlation 0.592 0.471
Sig. Sig. (2-tailed) 0.020 0.076
N 15 15
Proche Pearson Correlation 0.342 0.535 *
Development Sig. Sig. (2-tailed) 0.213 0.040
N 15 15
Customer Mgt Pearson Correlation 0.572 * 0.802 **
Sig. Sig. (2-tailed) 0.026 0.000
N 15 15
Marketing Pearson Correlation 0.373 0.133
Communication Sig. Sig. (2-tailed) 0.171 0.636
Mgt N 15 15
Staff Pearson Correlation 0.614 * 0.439
Sig. Sig. (2-tailed) 0.015 0.101
N 15 15
Market Pearson Correlation 0.802 * 0.546 *
Information Mgt Sig. Sig. (2-tailed) 0.000 0.035
N 15 15
Marketing Pearson Correlation 0781 ** 0.648 **
Planning Sig. Sig. (2-tailed) 0.001 0.009
N 15 15
Marketing Pearson Correlation 0.289 0.407
Implementation Sig. Sig. (2-tailed) 0.296 0.132
N 15 15
Market Pearson Correlation 1 0.374
Effectiveness Sig. Sig. (2-tailed) 0.169
N 15 15
Current Pearson Correlation 0.374 1
Profitability Sig. Sig. (2-tailed) 0.169
N 15 15
** Correlation is significant at the 0.01 level (2-tailed).
* Correlation is significant at the 0.05 level (2-tailed).
Coefficients (a)
Unstandardized Standardized
Coefficients Coefficients
Correlations
Model B Std. Error Beta
1 (Constant) 1.523 2.069
Pricing 0.223 0.137 0.333
Customer Mgt -0.269 0.243 -0.469
Staff 0.312 0.399 0.226
Marketing Info 1.237E-02 0.423 -0.025
Mgt
Marketing 0.544 0.595 0.936
Planning
Correlations
Model t Sig. Zero-order Partial Part
1 (Constant) 0.736 0.480
Pricing 1.627 0.138 0.592 0.477 0.255
Customer Mgt -1.107 0.297 0.572 -0.346 -0.174
Staff 0.782 0.454 0.614 0.252 0.123
Marketing Info -0.029 0.977 0.802 -0.010 -0.005
Mgt
Marketing 0.913 0.385 0.781 0.291 0.143
Planning
(a) Dependent Variable: Marketing Effectivenessa
Coefficients (a)
Unstandardized Standardized
Coefficients Coefficients
Correlations
Model B Std. Error Beta
1 (Constant) 0.650 2.313
Product 0.324 0.522 0.190
Development
Customer Mgt 0.722 0.285 1.051
Marketing Info 0.473 0.474 0.810
Mgt
Marketing -0.762 0.735 -1.095
Planning
Correlations
Model t Sig. Zero-order Partial Part
1 (Constant) 0.281 0.785
Product 0.620 0.549 0.535 0.192 0.111
Development
Customer Mgt 2.530 0.030 0.802 0.625 0.454
Marketing Info 0.998 0.342 0.546 0.301 0.179
Mgt
Marketing -1.037 0.324 0.648 -0.311 -0.186
Planning
(a) Dependent Variable: Marketing Effectivenessa