Increasing fairness perceptions of government grant applicants: an investigation of justice theory in small business in post-Katrina New Orleans.
Kwun, Obyung ; Mancuso, Louis C. ; Alijani, Ghasem S. 等
BACKGROUND PERSPECTIVES
Hurricane Katrina further exacerbated the serious economic
challenges faced by New Orleans even before Katrina. The flooding, wind,
rain, and unfortunate looting and arson associated with the storm
destroyed or damaged thousands of businesses. Commerce was seriously
interrupted in industries such as entertainment, hospitality and
tourism, finance, and transportation. Small businesses and
entrepreneurial efforts suffered extensive losses stemming from the
damages, and the city's sales tax base plummeted. The labor force
declined considerably, particularly in the health and education
industries (According to FedStats and FEMA in 2006, the population of
Orleans Parish decreased by 60%: even today, the population is still
down 36%). Unemployment increased, and the city faced significant
population losses due to out-migration, particularly of the
African-American community. Use of mainly Hispanic workers from outside
the state to support the huge construction business, while the
African-American residents in New Orleans remained without jobs, raised
labor issues (Entertainment, Tourism and Hospitality, U.S. Chamber of
Commerce, November 8, 2005).
The severity of Katrina's destruction has made redevelopment
of New Orleans, including promoting investments, small businesses and
entrepreneurs, job creation and economic growth, a herculean task. The
incredible extent of damage due to the disaster should be a matter of
great concern to residents, businesses, policy makers, and politicians
for the purpose of acquiring and deploying necessary resources to
support a smooth and speedy recovery. In particular, it must be kept in
mind that the Hurricane Katrina aftermath produced small business
environments that were lacking in planning, susceptible to cash flow
reductions, lacking inadequate access to capital for recovery, facing
difficulties related to federal government aid, and attempting to
operate in a devastated infrastructure, slowing early recovery (Runyun,
March, 2006). Also, it is important that government agencies assist
affected businesses' attempts to survive and motivate new
entrepreneurs to start fresh businesses (Zolin & Kropp, January,
2007). Despite the critical nature of governmental assistance, a
previous study showed a high level of dissatisfaction with government
aid among New Orleans business owners (Mancuso, June, 2006). This
dissatisfaction, in turn, may discourage small business owners from
applying for government grants, which can speed up the recovery.
LITERATURE REVIEW
Justice theory has been successful in explaining attitudes and
behaviors in such diverse domains as resource allocation, conflict
resolution, personnel selection, and layoffs. Justice, as a perception
of fairness of the decision process and decision outcomes, has been
shown to influence attitudes (e.g., satisfaction) and behavior (e.g.,
turnover) (Greenberg, 1990).
Researchers have developed conceptual models of justice theory that
explain the role of fairness in organizations by identifying factors
(e.g., Bies, 1987) that account for different dimensions of justice and
their effects on attitudes and behaviors ( Andrews, Baker, & Hunt,
2008; Hershcovi, et.al., 2007; McFarlin & Sweeney, 1992). These
dimensions include procedural justice, interactional justice, and
distributive justice. Procedural justice refers to the fairness of the
formal procedures through which outcomes are achieved (Greenberg, 1990).
A number of research studies have demonstrated that procedural justice
affects attitudes toward the organization and its operations (Korsgaard,
Schweiger, & Spienza, 1995). Interactional justice deals with the
interpersonal treatment people receive from the decision maker and the
adequacy with which formal decision-making procedures are explained
(Bies, 1987). Empirical evidence has shown that perceptions of fairness
may also be affected by the interpersonal treatment received from the
decision-maker, causing affective and behavioral reactions (Donovan,
Drasgow, & Munson, 1998). Distributive justice refers to the
perceived fairness of the resulting distribution of decision-making
outcomes. The fairness of outcomes is evaluated based on distributive
rules that include equity, equality, and needs (Deutsch, 1975).
Based on the preceding discussion of justice theory, this study
attempts to examine the impacts of perceived fairness on small business
owners' satisfaction with government grants and granting agencies.
The following hypotheses were developed for this study, as illustrated
in Figure 1:
H1: Procedural Justice has a positive effect on satisfaction with
government grants for small businesses.
H2: Procedural Justice has a positive effect on satisfaction with
grant agencies for small businesses.
H3: Interactional Justice has a positive effect on satisfaction
with government grants for small businesses.
H4: Interactional Justice has a positive effect on satisfaction
with grant agencies for small businesses.
H5: Distributive Justice has a positive effect on satisfaction with
government grants for small businesses.
H6: Distributive Justice has a positive effect on satisfaction with
grant agencies for small businesses.
[FIGURE 1 OMITTED]
RESEARCH METHOD
DATA COLLECTION
For this study, owners/managers of small businesses were targeted
for data collection throughout post-Katrina New Orleans. Different
agencies and businesses use different criteria to determine whether a
business is small, such as the number of employees, annual income earned
and relative dominance in their industry. Different ranges of employee
size (size standards) for small businesses are encountered in the
literature. For the purpose of this study, the number of employees was
used as the determining factor for classification as a small business:
firms that employed 100 or less individuals were considered as small
businesses.
The survey questionnaire used in this study was developed by
adapting the items from existing justice literature (e.g., Moorman,
1991). Data was gathered by visiting small businesses and asking the
owners/managers to complete the questionnaires.
CHARACTERISTICS OF THE SAMPLE
There were 200 respondents in this study (see Table 1). The
respondents were evenly distributed by gender. The majority of the
respondents reported service and merchandising (63.5% and 29%,
respectively) business types and most respondents (98.5%) were from
businesses with less than 50 employees. More than 70% of the respondents
reported their knowledge level of government grant processes to be
average or above. Although 84% responded that government grants would
help their businesses, only 60% of the respondents have applied for a
government grant at least once. Of those respondents, 36% reported
having received a government grant.
DATA ANALYSIS
Partial Least Squares (PLS) analysis was used to test the proposed
research model. PLS recognizes two parts of model testing: a measurement
model and a structural model (Barclay et al., 1995; Fornell &
Larcker, 1981). In order to test a research model, the measurement model
first has to be evaluated, and then the structural model has to be
tested. The assessment of both models was conducted using SmartPLS 2.0.
The measurement model addresses the relationship between the
constructs and the items used to measure them. The test of the
measurement model consists of the estimation of the convergent and
discriminant validities of the measurement instrument. Convergent
validity refers to the extent to which measures of a construct are
related to each other. Discriminant validity is the degree to which
measures of a construct are not related to measures of other constructs.
However, reflective and formative measures should be treated differently
(Hulland, 1999). Formative items are considered to form or cause the
construct to be measured. Thus, these items are not expected to
correlate or show internal consistency, unlike items for reflective
constructs (Chin, 1998). For this reason, the item weights for formative
measures have been used to test the relevance of the items to the
constructs (Barclay et al., 1995; Wixom and Watson, 2001). On the other
hand, the item loadings for reflective measures are used to test the
validity of the items for the constructs. Table 2 shows the relationship
between the constructs and the items in this study.
RESULTS
MEASUREMENT MODEL
Although formative and reflective constructs are treated
differently, the loadings are used for interpretive purposes and for the
calculation of reliabilities. Although it has been suggested that an
absolute value of factor loadings of 0.30 is considered to meet the
minimal level, loadings of 0.40 are considered more significant, and
loadings of 0.50 or greater are considered very significant (Hair et.
al., 1998). Average variance extracted (AVE) of 0.50 or above has also
been used to support the convergent validity of the constructs (Fornell
& Larcker, 1981).
Table 3 shows individual item loadings and associated weights for
the related construct. All of the Cronbach's alphas exceed the 0.70
minimum level suggested by Nunnally (1978). For the reflective
constructs (Satisfaction with Grant and Satisfaction with Grant Agent),
all of the loadings are 0.89 or above, which is considered very strong.
Cronbach's alphas for all constructs are 0.88 or above, which
indicates strong reliabilities for the items in measuring their
constructs. Also, the AVEs for all constructs are well above the
acceptance level of 0.50 (see Table 4). Based on these results, the
convergent validity for the measurement items can be considered
acceptable.
Discriminant validity is adequate when the average variance
extracted from the construct is greater than the variance shared between
the construct and other constructs. Table 5 shows correlations between
constructs and square root of AVEs (bold faced) for the reflective
constructs. The square root of AVE for SG is greater than the
correlations with other constructs. Similarly, the square root of AVE
for SA is greater than the correlations with other constructs. Also, the
cross loadings in Table 6 show that items for SG and SA are loaded
higher on their constructs than on other constructs. This also indicates
some evidence for discriminant validity.
For the formative constructs, some of the items show negative
weights. Formative items are considered to form or contribute to the
construct. The negative weights indicate a contradiction to the original
expectation suggested by justice theory literature. The results show two
items with negative weights (PJ1 and IJ4).
STRUCTURAL MODEL
In order to improve the validity of the results, the items with
negative weights were removed when the structural model was tested. As a
result, PJ1 and IJ4 were dropped to estimate the structural model.
Figure 2 shows the significance and the strength of the relationships
between the constructs and [R.sup.2], which indicates the explanatory
power of the model. Procedural justice is not a significant factor, as
shown by path coefficients of -0.03 and -0.05 for satisfaction with
grant and satisfaction with grant agency respectively. Interactional
justice shows the highest path coefficients on both dependent variables,
with values of 0.58 and 0.69. And distributive justice shows somewhat
weak but significant impacts on both dependent variables, with path
coefficients of 0.31 on satisfaction with grant and 0.24, on
satisfaction with grant agency. Sixty-seven percent of the variance of
satisfaction with grant and 75% of the variance of satisfaction with
grant agency was explained by the proposed model. Table 7 summarizes the
results of the hypotheses tests in this study.
[FIGURE 2 OMITTED]
CONCLUSIONS
This study investigated the effects of fairness perception on small
business owners' satisfaction with government grants and grant
agencies. The results show that the main issue in applicant satisfaction
is not the procedure required to win the grant: rather, the results
suggest that both interpersonal treatment and the way grants are awarded
are instrumental in increasing the level of applicant satisfaction. In
other words, it is more about how the small business owners are treated
by the granting agency during the grant application process than about
procedural issues of applying for the grants that improve small business
owners' satisfaction. These findings suggest that the grant agents
should properly treat the business owners with trustfulness, kindness,
justification, respect, etc. in order to achieve higher satisfaction
levels for the applicants. This conclusion can be used to improve
government grant process outcomes when another natural disaster strikes
the United States. While government representatives should be trained in
all aspects of the aid to be given, they should also be trained to show
kindness, respect, trust, and justification for their actions to grant
applicants from the small business sector. It may be concluded that
proper interpersonal treatment becomes especially important if granting
agencies want to establish a long-term relationship with small business
owners and stimulate the economy through government grants.
As with most studies in the justice literature, these results
should be interpreted with some caution. For example, items used to
measure each of the dimensions of justice may differ, depending on the
context. The questionnaire used for this study was based on previous
studies where measurement items were validated in different contexts.
Thus, the questionnaire can be refined for subsequent studies to improve
the validity of the results in government grants for the small business
context. Also, the respondents for the study are from New Orleans
metropolitan area only, which can be characterized by the unique
situation created by the natural disaster and the subsequent economic
recovery efforts.
Appendix A: List of Items
Construct Item Description
Distributive DJ1 Grant was allocated fairly based on
small business owner's time and
effort spent during the grant
application process.
Justice DJ2 Grant was allocated fairly based on
small business owner's need.
DJ3 Grant was are allocated fairly to
all small business owners
regardless of their effort and
need.
Interactional IJ1 The granting agent considered your
view point.
Justice IJ2 The granting agent was able to
avoid any personal bias.
IJ3 The granting agent provided you
with timely feedback about the
decision and its implications.
IJ4 The granting agent treated you with
kindness and consideration.
IJ5 The granting agent showed concern
for your rights as a small business
owner.
IJ6 The granting agent took steps to
deal with you as a small business
owner in a truthful manner.
Procedural PJ1 The process for grant award is
designed to collect accurate
information necessary for making
decisions.
Justice PJ2 The process for grant award is
designed to provide opportunities
to appeal or challenge the decision
made.
PJ3 The process for grant award promote
standards so that decisions can be
made with consistency.
PJ4 The process for grant award is
designed to hear the concerns of
all those affected by the decision.
PJ5 The process for grant award is
designed to provide useful feedback
regarding the decision and its
implementation.
PJ6 The process for award is designed
to allow for requests for
clarification or additional
information about the decision.
Satisfaction SA1 How would you rate the grant
agent's knowledge about small
businesses?
With Agency SA2 How would you rate the grant
agent's understanding of small
business needs?
SA3 How would you rate the grant
agent's communication and
interpersonal skills?
SA4 How would you rate the quality of
supporting service from the grant
agent?
SA5 How would you rate the attitude of
the grant agent?
Satisfaction SG1 How would you rate the grant
amount?
with Grant SG2 How would rate the timeliness of
the grant?
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Obyung Kwun, Southern University at New Orleans
Louis C. Mancuso, Southern University at New Orleans
Ghasem S. Alijani, Southern University at New Orleans
David W. Nickels, University of North Alabama
Table 1: Characteristics of the Sample
Sample Characteristics N=200 %
Gender
Male 100 50.0
Female 97 48.5
Not responding 3 1.5
Familiarity with Grants
Very High 5 2.5
High 55 27.5
Average 83 41.5
Low 30 15.0
Very Low 10 5.0
Not responding 17 8.5
Type of Business
Manufacturing 9 4.5
Service 127 63.5
Merchandising 58 29.0
Other 0 0
Not responding 6 3.0
Number of Employees
Less than 5 43 21.5
5-10 55 27.5
11-50 93 46.5
More than 50 3 1.5
Not responding 6 3.0
Grant would help business
Strongly Agree 113 56.5
Agree 55 27.5
Neutral 21 10.5
Disagree 6 3.0
Strongly Disagree 3 1.5
Not responding 2 1.0
Have Applied for Grant
Yes 120 60.0
No 80 40.0
Have Received Grant
Yes 72 36.0
No 128 64.0
Table 2. Measurement Model
Constructs Relationship
Procedural Justice (PJ) Formative
Interactional Justice (IJ) Formative
Distributive Justice (DJ) Formative
Satisfaction with Grant (SG) Reflective
Satisfaction with Grant Agent (SA) Reflective
Table 3. Weights and Loadings
Variables Weights Loadings
Distributive Cronbach's Alpha = 0.94
Justice (DJ)
DJ1 0.40 0.94
DJ2 0.09 0.90
DJ3 0.56 0.97
Interactional Cronbach's Alpha = 0.88
Justice (IJ)
IJ1 0.19 0.78
IJ2 0.06 0.77
IJ3 0.11 0.79
IJ4 -0.03 0.31
IJ5 0.48 0.95
IJ6 0.29 0.93
Procedural Cronbach's Alpha = 0.90
Justice (PJ)
PJ1 -0.09 0.67
PJ2 0.69 0.96
PJ3 0.25 0.87
PJ4 0.08 0.74
PJ5 0.08 0.70
PJ6 0.11 0.60
Satisfaction Cronbach's Alpha = 0.95
with Agent (SA)
SA1 0.22 0.89
SA2 0.22 0.92
SA3 0.21 0.93
SA4 0.23 0.91
SA5 0.21 0.92
Satisfaction Cronbach's Alpha = 0.95
with Grant (SG)
SG1 0.52 0.98
SG2 0.51 0.98
Table 4. Average Variance Extracted
DJ IJ PJ SA SG
Average Variance 0.87 0.61 0.59 0.84 0.95
Extracted
Table 5. Correlations and Square Root of AVEs
DJ IJ PJ SA SG
SA 0.75 0.85 0.52 0.92
SG 0.73 0.80 0.51 0.85 0.98
Table 6. Cross Loadings
DJ IJ PJ SA SG
DJ1 0.94 0.73 0.51 0.72 0.66
DJ2 0.90 0.72 0.56 0.65 0.68
DJ3 0.97 0.72 0.56 0.71 0.72
IJ1 0.73 0.78 0.56 0.65 0.63
IJ2 0.70 0.77 0.46 0.68 0.58
IJ3 0.65 0.79 0.61 0.63 0.67
IJ4 0.40 0.31 0.25 0.35 0.16
IJ5 0.66 0.95 0.53 0.82 0.74
IJ6 0.71 0.93 0.58 0.79 0.74
PJ1 0.42 0.51 0.67 0.39 0.30
PJ2 0.50 0.58 0.96 0.50 0.49
PJ3 0.51 0.57 0.87 0.46 0.44
PJ4 0.52 0.54 0.74 0.39 0.37
PJ5 0.46 0.39 0.70 0.41 0.32
PJ6 0.47 0.40 0.60 0.31 0.30
SA1 0.65 0.78 0.48 0.89 0.73
SA2 0.69 0.77 0.54 0.92 0.76
SA3 0.67 0.78 0.44 0.93 0.79
SA4 0.79 0.76 0.52 0.91 0.82
SA5 0.60 0.79 0.42 0.92 0.79
SG1 0.75 0.77 0.50 0.84 0.98
SG2 0.68 0.79 0.50 0.82 0.98
Table 7. Hypotheses Tests
Hypotheses t-Statistic Results
H1: Procedural Justice has a 0.32 Not Supported
positive effect on satisfaction
with government grants for small
businesses.
H2: Procedural Justice has a 0.43 Not Supported
positive effect on satisfaction
with grant agencies for small
business.
H3: Interactional Justice has a 4.39 Supported
positive effect on satisfaction
with government grants for small
businesses.
H4: Interactional Justice has a 4.99 Supported
positive effect on satisfaction
with grant agencies for small
businesses.
H5: Distributive Justice has a 2.46 Supported
positive effect on satisfaction
with government grants for small
businesses.
H6: Distributive Justice has a 2.01 Supported
positive effect on satisfaction
with grant agencies for small
businesses.