Affinity and affiliation: the dual-carriage way to team identification.
Pritchard, Mark P. ; Stinson, Jeffrey ; Patton, Elizabeth 等
Affinity and Affiliation: The Dual-Carriage Way to Team
Identification
The most visible thing in Portland, OR, is probably the Portland
Trail Blazers on a national basis. This doesn't do our community
any service. We're embarrassed. And we've got to work harder
and do a better job. This needs to stop.--Trail Blazers team President
Bob Whitsett after four Trail Blazer players were arrested in four days
in 2002 (McAllister, 2002).
From Day One, the plan was to change the type of players we brought
in. We were going to look at, not only talent, but also the character of
the players. What a player could do off the floor was just as important
as what he could do on the floor. We had to change on the floor, but we
also had to get out into the community and allow them (fans) to get to
know us.--Trail Blazers coach Nate McMillan on the team's response
to rebuilding after the "Jail Blazer" years (Kelley, 2009).
Such quotes about rebuilding the image of the National Basketball
Association's (NBA) Portland Trail Blazers underscore how important
a team's public persona is to management. In this case,
management's goal was to generate a positive impression of their
product rather than have negative associations dominate their
marketplace. When a team's personality or identity becomes tainted by ethical breaches as they did during the "Jail Blazers"
years, fans tend to distance themselves from clubs. Other than a loss to
an organization's morale, the downside of public embarrassment and
negative publicity is that fans and sponsors want to dissociate and
desert, cut their support and attend fewer games (Funk & Pritchard,
2006). In Portland, the Trail Blazers were forced to concentrate on
rebuilding their public image so that they could reconnect with their
fan base. Although research has explored how sport organizations might
avoid or respond strategically to public relations "bombshells" like this (Burton & Howard, 2000, p. 44),
questions still remain over the psychology of attachment and the
attributes that enable fans to identify and continue with teams.
Identification
As a rule, individuals derive "strength and a sense of
identity" from their connections to social groups (Kelman, 1961).
Public connections or associations with certain brand images or sport
teams are often used for the purpose of self-presentation (Cialdini
& De Nicholas, 1989). When sport teams portray strength, teamwork,
success or other desirable qualities, fans attracted to these attributes
often attach themselves psychologically and identify with those teams
(Fisher & Wakefield, 1998). Consumers who become attached to
products for symbolic reasons use this purchase behavior as a vehicle
for self-representation (Baumeister, 1982). Consumption here ultimately
rests not so much on what a product is but on what its acquisition means
as a subjective symbol to the consumer (Solomon, 1983).
The last 20 years has seen a significant amount of management
inquiry focus on how people identify with organizations (Ashforth &
Mael, 1989). A parallel vein of research in sports has stemmed primarily
from the belief that highly identified dedicated fans directly impact
the economic success of teams and leagues (Foster & Hyatt, 2007).
Other benefits prioritize this characteristic as a desirable goal for
practitioners. Strong levels of identification reportedly reduce levels
of price sensitivity (Sutton et al., 1997), increase longevity of the
fan's relationship and lifetime value to the organization (McDonald
& Milne, 1997), decrease switching behavior (Harada & Matsuoka,
1999), foster resistance to negative press (Funk & Pritchard, 2006),
and increase team-related consumptive behavior in fans (Trail, Fink,
& Anderson, 2003). From a strategic standpoint, positive outcomes
like these clearly emphasize how important it is that sport
organizations understand the inner workings or DNA of identification in
their fan base.
One early definition of the disposition describes identification as
"the personal commitment and emotional involvement customers have
with a sports organization" (Sutton et al., 1997, p. 15). Work
since has gone beyond simply noting the construct in terms of its
attitudinal correlates (Bhattacharya, Rao, & Glynn, 1995). Bergami
and Bagozzi (2000, p. 557) attempted to isolate identification from both
its emotional consequences and its underlying processes, by defining it
as "a cognitive state of self-categorization." This paper
adopts the same stance. Sport fans who identify should be able to
self-categorize whether they hold a sense of "oneness or
belongingness" with the team (Ashforth & Mael, 1989, p. 23).
The central tenant of identity construction in person-team
relationships involves a cognitive evaluation. This "occurs through
consumer comparison, ranging from an atomistic attribute-by-attribute
process to a holistic match with their own defining characteristics
(personality traits, values, etc.)" (Bhattacharya & Sen, 2003,
p. 77). Thus, fans that recognize traits or characteristics of a team as
similar to their own will self-categorize their proximity (i.e., shared
similarities) and identify more closely. Other theorists attempt to
explain process in terms of a cognitive comparison. Citing
organizational research, Foster and Hyatt (2007, p. 197) sum up this
fan-team connection as an "alignment of an individual's
cognitive schema" (image map of the self) with the schema (internal
images) they hold of the organization. This means the closer the
alignment between self and team schemas, the stronger the fan's
identification with an organization becomes. In essence we believe two
principle domains operate in a fan's evaluation of congruency, the
proximity of the team's personality and image and whether the
club's values match their own. These two tracks to identification
have been labeled by others as affinity and affiliation.
A Dual Carriageway
While the "how" of identification involves self
comparison and categorization, the "what" side of the judgment
(i.e., factors operating in that process) also needs specification.
Several investigators assert that identification with organizations
develops along two basic paths. Foster and Hyatt (2007) believe
identification evolves from two similar yet distinct antecedent processes: affinity and a sense of affiliation with the sport
organization. Reports from brand personality research show how consumers
develop a sense of personal affinity with brands whose images and
personality are congruent with their own sense of self (Aaker, 1997;
Sirgy & Samli, 1986). In essence, fans identify when they see images
of themselves (actual-self) or qualities they aspire to (social-self)
mirrored in a team. Although symbolic association is a powerful process,
it does not work alone. In conjunction with it a second similar yet
distinct effect (a desire to affiliate) operates when consumers believe
an organization "emulates" or shares similar principles or
values to their own (Foster & Hyatt, 2007, p. 197). O'Reilly
and Chatman (1986, p. 493) detected that shared values led a person to a
state of "internalization" and a desire to affiliate that
ultimately prompts identification with an organization.
The goal of this study is to test if affinity and affiliation
really do act as dual antecedents in a fan's identification with a
team. Whether or not both paths alter the degree of attachment holds
some practical significance. For example, a dual carriageway can
describe how identification weakens yet does not dissolve when fans
develop mixed impressions of a team and its management. Negative
publicity about players, for instance, may cause some fans to reject any
sense of affinity with the team. Conversely, some fans may also develop
a sense of affiliation with the organization by sharing the values
expressed in the franchise's response to the crisis. In different
situations alternate mixes of affinity and affiliation can occur. One
franchise's relocation in the National Hockey League resulted in a
reverse (strong/weak) mix in the carriageway. Some fans maintained a
degree of affinity with the team yet refused to affiliate as they
"despised" the organization's lack of loyalty in moving
(Foster & Hyatt, 2007, p. 194).
Bhattacharya and Sen (2003, p. 78) insist identity is
"conveyed to consumers through a variety of communicators"
(e.g., products, employees, management initiatives, and policies). In
professional sport two primary communicators or "points of
attachment" (Trail, Robinson, Dick, & Gillentine, 2003, p.
218), to the organization and team itself, are involved in the cognitive
comparison that triggers identification. Our inquiry examines these
proposed dual routes (see Figure 1) by testing whether affinity with a
team and affiliation with its sponsoring organization activate
identification in college students.
Hypothesis 1: The dual routes, team affinity and organizational
affiliation, should have a significant effect on team identification.
Strategically, leveraging a team's positive attributes
(creating affinity) and communicating strong organizational values
(building affiliation) should not only prompt identification, but lead
to increases in attendance. Figure 1 includes this causal link as
several studies report significant ties between identification and
behavioral outcomes like attendance (Fisher & Wakefield, 1998;
Laverie & Arnett, 2000; O'Reilly & Chatman, 1986). Kahle,
Kambara, and Rose (1996) for example, observed a capacity for college
football attendance to be motivated by underlying desires for
self-expression. Further discussion of identification's dual
processes follows.
Hypothesis 2: Team identification will strengthen fan intentions to
attend games.
[FIGURE 1 OMITTED]
Affinity
According to Foster and Hyatt (2007, p. 197), "affinity occurs
when individuals find that they are associating and identifying with a
[team] because it is similar to the individual in a particular
way." However, to be more explicit congruity between a team's
image and the fan's self-image is affinity's core process.
Consumer researchers term this type of evaluation
"self-congruity," and argue that it assesses the degree of
similarity between "an individual's comparison of the image of
themselves and ... the image of a brand" (Helgeson &
Supphellen, 2004, p. 208). In retail settings, Sirgy, Grewal, and
Mangleburg (2000) proposed patrons prefer to visit outlets whose image
matches their own view of themselves. In participant sports, Kang (2002)
examined self-image congruency and reported its connection to attitude
toward and participation at a health club.
Hypothesis 3: In spectator sports, fans perceiving a match between
team image and self-image should be more likely to develop strong levels
of fan identification.
Much of the research examining self-congruity in consumer contexts
has investigated congruity with brand personality (Phau & Lau,
2001). In her widely cited work on brand personality, Aaker (1997)
identified five dimensions behind a brand's personality: sincerity,
excitement, competence, sophistication, and ruggedness. Each personality
trait was made-up of several attributes (see Figure 2). Adapting this
framework to assess self-congruity with a team would involve using all
five dimensions to compare and contrast fan perceptions of the
team's traits against their own personality (Sirgy et al., 2000).
The more congruent each dimension is, the greater the consumer's
affinity with the team would be. Potential does exist for team
management to build a brand personality, through market communications
or player recruitment, so that appeals to a team's fan base.
Alternatively, management could take a more customer-centered approach
and use its understanding of the perceived personality of their fans to
create a similar image for the team (Rust, Zeithaml, & Lemon, 2004).
Both strategies are apparent in professional sports.
For example, many teams use market communications to strategically
reinforce certain important brand personality (image) elements they feel
are important. The case of the Portland Trail Blazers touched on at the
outset of this article suggests management intervention must come when a
team's brand personality no longer appeals or is congruent with the
team's fan base. This situation and the necessity of putting an
attractive product on the floor led that franchise to reposition, hire,
and re-align the team's image with the character and performance of
new incoming players.
We believe understanding and developing self-congruity and team
affinity in the marketplace requires a customer-centered approach. The
Seattle Sounders, a 2009 expansion team in Major League Soccer (MLS),
proactively developed a strong affinity for their team by conducting
research on which brand personality traits were attractive and congruent
with their fan base (Sounders, 2009). Based on fan input the franchise
went on to launch and anchor its description of the team to four traits
"passion, community, courage and excellence," the heart of
what they felt their Seattle fans were about. Further alignment with
fans occurred when they were allowed to select the team name (voting in
the Sounders even though it was not on the original list of names
submitted to fans by the team), and participate in team charitable
activities throughout the community. The end result was over 20,000
season tickets sold (more season tickets than any other MLS team in the
league's 13-year history) before the team even played its inaugural
game.
[FIGURE 2 OMITTED]
Affiliation
A second antecedent process in team identification is affiliation.
In sport, the need to affiliate and "include oneself in a
particular group" has long been considered a motive for fandom
(Pons, Mourali, & Nyeck, 2006, p. 278). Many of the social motives
reported in fan behavior describe how fan attachment with social groups
or sport organizations develops (Trail, Robinson et al., 2003; Wann,
1995). In fact, the desire to affiliate and become attached reportedly
"reflects the degree to which an individual internalizes or adopts
characteristics or perspectives of the organization" (O'Reilly
& Chatman 1986, p. 493). Foster and Hyatt (2007) believe fans
affiliate with sport organizations that emulate the same values they
hold. We believe a sense of shared values between the person and the
organization acts by building identification with the
organization's principle "communicator," the team. In
consumer contexts, this sequence would depict affiliation's sense
of shared values with the company cultivating a willingness to identify
with the company's primary product (Bhattacharya & Sen, 2003).
For example, a patron in Seattle who shares the civic values
Starbucks' displays in their community would be more willing to
affiliate with the company and identify themselves as fans of the brand.
Hypothesis 4: In spectator sports, fans that affiliate with a sport
organization by sharing the same values will hold stronger levels of
identification with that organization's team.
Community relations activities undertaken by franchises in their
local area and the organization's mission statements on their
websites are some of the many ways companies convey their primary
values. As with the management of brand image, the development of
organizational attachment and affiliation in patrons is also partly
under the purview of the brand manager. Strategies designed to align
organizational values with fan priorities can increase the fan
base's involvement in the organization. For example, some colleges
and universities have developed "clubs" that provide special
perks designed to strengthen the affiliation of fans with the athletic
department (Howard & Crompton, 2003). In professional settings some
franchises have engineered events and activities that allow fans to
affiliate and become attached to the organization. For example,
borrowing a strategy from European football teams, the Seattle Sounders
of the MLS created a club for all season ticket holders. The club has
the ability to vote the general manager out, giving the fan a degree of
ownership in the team. Further to this, the club is actively developing
youth and community soccer leagues, thereby allowing fans to increase
their involvement and attachment to the organization. The purpose of the
current study is to examine the role team affinity and organizational
affiliation play in team identification. A description of the sample and
the method used to test Figure 1's four links follows.
Methodology
A stratified random selection of classes at a large, public
university in the Southwest was used to collect the data for this study.
Three freshman, three sophomore, four junior, five senior, and five
graduate classes were randomly chosen during the fall semester. Of the
430 respondents who completed the survey, 51% were female and 33.2%
freshmen. Almost one-third (32.3%) of the respondents were student
ticket holders for the football season, but over half (57.7%) did not
attend football game during the season. Table 1 provides a fuller
description of the student sample used for addressing the study
hypotheses.
Respondents completed a six-page self-administered questionnaire
that was divided into four sections: demographics; game attendance;
attitude statements about the university and its football team; and
perceptions of self-image. Measures of organizational affiliation,
identification, behavioral intentions, and brand personality were all
adapted from previous studies (see Appendix A). Eight items from
O'Reilly and Chatman's (1986) scale of attachment were used to
assess student affiliation with the university. Six items developed to
measure the organizational identification of alumni were adapted to
assess student dispositions toward the institution's football team
(Mael & Ashforth, 1992). Finally, a purchase behavior scale was
adjusted to judge student intentions to attend games (Grewel, Monroe,
& Krishnan, 1998). Each of the statements representing
organizational affiliation (OA) and team identification (ID) were
attached to 5-point Likert scales that ranged from strongly agree (1) to
strongly disagree (5). Whereas 7-point bi-polar scales, ranging from
"Very Low" (1) to "Very High" (7), were attached to
each of the three behavioral likelihood statements of game attendance
(GA).
To assess team affinity (TA) subjects were first asked to rate
themselves and later in the questionnaire the team on the 20 personality
traits noted in Figure 2. Each attribute was attached to a 7-point
bipolar response scale ranging from "extremely descriptive"
(1) to "not at all descriptive" (7). The personality
attributes, adapted directly from Aaker's (1997) brand personality
scale, first determined the fan's self-perception of their own
personality and then assessed the fan's perception of the
team's personality. According to theorists, the type of comparative
evaluation that comprises affinity is known as a self-congruity estimate
(Helgeson & Supphellen, 2004). As explained earlier, this estimate
assesses similarity between an individual's comparison of the image
of themselves and the image of a brand, or in this case the team. A
traditional method using "discrepancy scores" was adopted from
Sirgy et al. (1997, p. 229) to determine image congruence. Their formula
scores team and self-image congruity in the following manner:
Ti - Si, where
Ti = rating of team image along image attribute i, and
Si = rating of self-image along image attribute i.
Ti - Si difference scores were created by taking the absolute value
of an individual's self-image attribute rating and subtracted from
the team rating for that attribute. Incorporating all the personality
attributes shown in Figure 2 created 20 difference scores. These data
were then submitted for further analysis, generating a summary scale to
represent the degree of affinity fans expressed toward the team.
Analysis
Developing and Refining the Measures
The discrepancy scores used to represent team affinity were
submitted to Principle Axis Factoring with an oblique rotation. As
proposed in Figure 2, five factors (eigen values > 1.0) emerged from
responses to the image attributes, explaining 68.66% of the variance in
the scores (see Table 2). The personality trait "Sincerity"
was the dominant factor in perceptions of image congruity between the
team and the students (eigen value = 3.773). Consistent item-factor
loadings and sound internal validity coefficients for each of the five
dimensions allowed factor scores to act as team affinity indicators in
subsequent analyses (loadings > .50; [alpha]'s > .70).
Gerbing and Anderson's (1988, p. 191) "two-step"
recommendation calls for unidimensional scale refinement prior to any
structural analysis. Consequently, a confirmatory factor analysis (CFA)
was conducted with affinity's five factor scores and the three
other constructs. Results from the four-factor 22-item measurement model
were encouraging ([chi square] = 689.7, df= 203); see significant
individual item loadings and reliability coefficients shown in Appendix
A. The CFA's Squared Root Mean Residual (SRMR=.05) and Root Mean
Squared Error of Approximation (RMSEA=.07) gave a paired-index test of
"close fit" (Hu & Bentler, 1999, p. 1). However, there was
some room for improving the measures. This involved simplifying
organizational affiliation and team identity scales with a procedure
that reduces the number of scale items by creating paired "parallel
indicators of the construct" (c.f. Mathieu & Farr, 1991, p.
128). The advantage of refining established measures this way is that
the estimate does not eliminate data (i.e., weaker indicators) but
retains the whole tool; combining and condensing all of the scale's
original items according to their factor loadings (see Appendix A).
Significant factor correlations in Table 3 show positive links
between all four constructs. Concerns over the discrete nature of the
four constructs were alleviated by a model testing procedure that fixes
covariance estimates between each of the construct pairs to 1.0 (cf.
Hightower, Brady, & Barker, 2002). Support was determined if the fix
significantly reduced the fit reported in the baseline CFA (i.e.,
[DELTA][chi square] > 3.84, p < .05). Shown above the diagonal in
Table 3, the smallest chi-square difference observed from this procedure
([DELTA][chi square] = 36.5, df= 1) showed significantly diminished fit,
providing strong evidence of each construct's discriminant
validity. Contrasting each construct's PVE estimate (i.e., < .50
benchmark) against the square of its respective correlations with other
factors (on and below diagonal in Table 3) lends further support to
claims that valid and distinct scales were indeed in hand (Pons et al.,
2006).
Testing the Dual Carriageway Model
With valid and reliable measures in hand, a structural test of
Figure 1 was conducted. Responses from respondents to each construct
were submitted to a path analysis program (Arbuckle, 1994). Several
diagnostic indicators noted the integrity of the model ([X.sup.2] =
191.6, df = 86, p < .01). The Goodness of Fit (GFI = .94) and
Adjusted Goodness of Fit Indices (AGFI = .92) both provided evidence
that the data fit the specified parameters effectively (i.e. > .90
benchmark). Each item loaded significantly, contributing to reliable
estimates of their respective constructs ([alpha]'s > .80). A
paired-index test recommend by Hu and Bentler (1999) also supported
model acceptance (SRMR=.05; RMSEA=.05). Overall justification of Figure
1 addresses the first hypothesis on the presence of dual routes, as both
affinity and affiliation processes were related (r = .43, p<.001)
psychological mechanisms in ID's formation (see results in Table
4).
The second hypothesis was also supported by the positive link
between team identification and game attendance ([beta] = .58), reported
in Table 4. ID explained a significant proportion of this behavior in
fans ([R.sup.2] = .34). Standardized regression coefficients also
significantly linked both organizational affiliation (p = .62) and team
affinity ([beta] = .17) to the explanation of team identification
([R.sup.2] = .50). This supports the third and fourth hypotheses, as
both elements in the dual carriageway played strong but not equal roles
in ID. A sense of affiliation with the university proved to be the
dominant process at work in this particular sample's ID; whether or
not this would be so in non-collegiate settings (e.g., professional
football) remains to be seen.
Discussion
The study re-affirmed that a dual carriage-way operates in
identification with a sports team. Both affiliation and affinity
processes demonstrated a significant influence on the formation of ID.
This finding is wholly consistent with previous research (e.g., Foster
et al., 2007). In this case, however, the affiliation process, measured
by shared values and organizational attachment to the university was the
strongest contributor. Situational influences may dictate which of the
affiliation or affinity processes are most relevant to the formation of
ID. In the current study, students have a multi-faceted relationship
with the focal organization, of which the football program is only one
potential "communicator" and point of connection (Bhattacharya
& Sen, 2003, p. 78). Thus, sharing the values and sense of mission
as a student with the university is closely related to the ability to
connect and identify with the institution's football team. Quite
possibly in other contexts organizational affiliation may prove weaker
and affinity processes dominant. One possible application would be ID
with professional sports teams. Many professional sports fans may not
have strong, multi-faceted connections to the organization or franchise
managing the team. In the absence of strong organizational connections,
affinity may be a stronger contributor to fan identification.
Weak connections with professional sport organizations and a
diminished desire to affiliate can originate for a variety of reasons.
Foster and Hyatt (2007) relate one such scenario, where team relocation
in the NHL generated disavowal of the franchise's management.
Connections with other franchises can suffer from a lack of
communication and awareness in the fan base of who they are and what
they stand for (i.e., their core values and mission). The Seattle
Seahawks are one organization in the NFL that communicates a basis for
affiliation by clearly publicizing its mission (Seahawks, 2009).
Employee vision there is dedicated to a culture of service that values
Passion (Football is our passion), Character (Character is our
commitment), 12th Man (The 12th Man is our focus), and Excellence
(Excellence is our goal). Other clubs use the presence of strong
leadership to transmit a basis for affiliation with the franchise. A
good example of this is Mark Cuban's leadership at the helm of the
NBA's Dallas Mavericks. Strong leadership values in this
organization are evident both from the owner's on-court behavior
and his direction of the club's community relations activities
(e.g., Mavs Foundation; Cuban's Fallen Patriot Fund). Of course not
all leaders in sport organizations inspire a desire in fans to affiliate
with their organization. In fact, some fans may develop negative views
of an owner's management that repel any notion of affiliation or
ID.
Implications for Strategy
Understanding if weak points of attachment exist in a fan base is
crucial to the management of ID (Trail, Robinson et al., 2003; Woo et
al., 2009). Some teams may significantly benefit by developing
strategies that cultivate stronger organizational connections in their
fans. For example, some franchises may benefit from pursuing club models
more commonly found in European leagues. Many teams on the other side of
the Atlantic build attachment and community by sponsoring competition at
various levels (youth, recreational), instead of focusing solely on
elite performance. Broadening the relationship fans have with an
organization (supporter and recreational participant) may fuel ID and
increase patronage (e.g., attendance, purchase behavior).
Strategically, the dual route finding is consistent with the
thinking of brand tacticians, that the right mix of brand image and
organizational values builds brand equity. Still, devising the correct
formula entails undertaking customer-centered research that avoids
"blind spots" and "statistically links customer equity
drivers to customer lifetime value" (Rust et al., 2004, p. 116).
The study's connection between ID and fan behavior gives credence
to this and corroborates prior ties reported between strong attitude and
spectator consumption (Trail, Fink, & Anderson, 2003). Importantly,
the attractiveness of a team's image or the desire to identify is
not solely determined by team performance or win/loss records (Fisher
& Wakefield, 1998). This implies that a host of marketing schemes
well within the realm of a sport marketer's control (uniforms,
logos, advertising, corporate PR, community relations, etc.) can be used
to appeal and leverage ID into ongoing patronage.
Conclusion
Although the current study has made some progress toward describing
the formation of ID, a lot remains to be done. Confirming the role of
affinity and affiliation, and Figure 1 for that matter, in other
spectator contexts is essential to establishing external validity (Winer, 1999). In our minds, conducting a similar study in the context
of a professional football team (e.g., an NFL or MLS team) would
constitute an important next step in this direction. Another area worth
focusing on are the "variety of communicators" said to cue the
potential development of identification (e.g., Bhattacharya et al.,
2003). What was encouraging from our findings was that our two
antecedent processes did in fact explain a significant portion of ID.
Yet, this explanation was not complete, suggesting that other factors
are unaccounted for in the model. Several variables come to mind for
future inquiry; two of them, on-field performance and in-park service
(Fisher et al., 1998; Hightower et al., 2002), have the potential to
diminish or improve the spectator experience and perhaps their
willingness to identify. Using research to understand ID and take stock
of its potential correlates (Bhattacharya et al., 1995) will help the
sports marketer diagnose what may be best for their organization in
their particular market. While our study indicates there are some common
processes at work, just assuming that attachment develops in the same
manner each time may not be wise.
Appendix A
Confirmatory Factor Analysis (CFA) Results: Scale Items & Standardized
Loadings(b's)
Organizational Affiliation (OA): 8 Items ([alpha] = .87) (a) [beta]'s
1. Since enrolling at--, I have come to share many of .78
the school's values.
2. The reason I prefer--to other universities is .78
because of what it stands for, its values.
3. My attachment to--is primarily based on similarity .79
of my values and those represented by--.
4. What--stands for is important to me. .73
5. Rather than just being a student, I feel a sense of .68
ownership with--.
6. If the values of--were different, I would not be as .53
attached to this school.
7. I am proud to tell others that I am a student at--. .57
8. I talk up the university to my friends as a great school .57
to attend.
Team Identification (ID): 6 Items ([alpha] = .88) (b)
1. When someone criticizes--football, it feels like a .75
personal insult.
2. I am interested in what others think about the-- .74
football team.
3. The--football team's successes are my successes. .77
4. When someone praises the--football team, it feels .79
like a personal compliment.
5. I would be upset if a story in the media criticized the-- .76
football team.
6. When I talk about the--football team, I usually .67
say we rather than they.
Game Attendance (GA): 3 Items ( = .90) (c)
1. All things being equal, the probability that I would .81
attend--football games is ...
2. The likelihood that I would attend an--football .92
game over another event is ...
3. The probability of my purchasing--football tickets .87
rather than tickets to another event is ...
Source: (a) O'Reilly & Chatman (1986), (b) Mael & Ashforth
(1992), (c) Grewal, Monroe, & Krishnan (1998).
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Authors' Note
Data used in this manuscript were collected as part of Elizabeth
Patton's master's thesis at Arizona State University.
Mark P. Pritchard, PhD, is a professor and director of the
Northwest Centre for Sport Business at Central Washington University.
His research interests include consumer attachment and branding in
sport. Jeffrey Stinson, PhD, is an assistant professor and associate
director of the Northwest Centre for Sport Business at Central
Washington University. His research interests include charitable giving,
intercollegiate athletics, and sport branding. Elizabeth Patton received
her master's degree from Arizona State University.
Table 1.
Sample Demographics (n=430)
Gender
48.7% male
51.3% female
Academic Level
33.2% freshman
21.0% sophomores
25.9% juniors
16.1% seniors
3.7% post-graduate
Full or Part-time Student
94% full-time
6% part-time students
Fraternity or Sorority Involvement
15.5% members
84.5% nonmembers
Games attended
57.9% 0 games
11.7% 1 game
7.5% 2 games
6.5% 3 games
16.4% 4+ games
Residential Proximity
28.9% live on campus
15.9% < 1 mile from campus
26.3% 1-5 miles from campus
28.9% > 5 miles from campus
State Resident
20.1% < 1 year
14.5% 1-2 years
9.8% 3-4 years
55.5% > 5 years
Semesters on Campus
47.3% 1-2 semesters
23.1% 3-4 semesters
17.4% 5-6 semesters
12.2% > 7 semesters
Ticket Holder Status
32.3% season ticket holders
67.7% not a ticket holder
Table 2. Assessing Team Affinity: Exploratory Factor Analysis of
Personality (T-S) Difference Scores (a)
5-Factor Solution of Traits
Image Attributes (i) F1 F2 F3
Sincerity Sophistication Competence
Down-to-earth .737 .153 .237
Honest .769 .183 .324
Sincere .796 .127 .265
Wholesome .771 .268 .102
Cheerful .554 .301 -.028
Daring .019 .205 .131
Exciting .160 .253 .242
Spirited .165 .005 .089
Imaginative .384 .354 .241
Up-to-date .378 .370 .254
Reliable .500 .094 .668
Competent .398 .337 .684
Intelligent .250 .410 .695
Successful .246 .454 .585
Upper-class .123 .722 .350
Sophisticated .280 .752 .286
Charming .279 .746 .205
Outdoorsy .231 .472 -.175
Rugged .006 .117 .044
Tough .062 -.071 .114
Eigen Value 3.773 2.984 2.480
Variance Explained % 18.86 14.92 12.40
5-Factor Solution of Traits
Image Attributes (i) F4 F5
Excitement Ruggedness
Down-to-earth .136 .045
Honest .116 .101
Sincere .160 .088
Wholesome .063 .032
Cheerful .467 -.045
Daring .559 .405
Exciting .768 .109
Spirited .815 .121
Imaginative .413 -.018
Up-to-date .347 .008
Reliable .115 .146
Competent .198 .009
Intelligent .189 .069
Successful .287 .007
Upper-class .175 .121
Sophisticated .145 .099
Charming .135 .016
Outdoorsy .122 .497
Rugged .048 .894
Tough .173 .870
Eigen Value 2.425 2.070
Variance Explained % 12.12 10.35
(a) Ti--Si differences, derived from ratings of Ti = team-image and
Si = self-image on attributes (i).
Table 3. Correlations and Chi-Square Difference Results (n = 430) (abc)
TA OA ID GA
TA .51 136.0 109.3 105.7
OA .44 .66 65.8 85.4
ID .43 .72 .70 36.5
GA .27 .40 .57 .75
(a) Percent of Variance Extracted, PVE =
([chi][SIGMA][[lambda].sup.2]) /
(([SIGMA][[lambda].sup.2]) + [SIGMA] errors), in bold on diagonal.
(b) Factor correlations from CFA below the diagonal.
(c) [DELTA][chi square] test from paired unity correlations above the
diagonal.
Table 4.
Path Analysis of the Dual Carriage-Way Model (n=430)
MEASUREMENT
Constructs/Items Mean(a) [lambda]
Org. Affiliation (a=.88)
OA1 2.95 .73
OA2 2.85 .88
OA3 2.70 .84
OA4 2.93 .79
Team ID (a=.88)
ID1 3.11 .84
ID2 3.48 .85
ID3 3.28 .83
Team Affinity (a=.81)
TA1 Sincerity 1.89 .78
TA2 Excitement 1.56 .73
TA3 Competence 2.09 .85
TA4 Sophistication 4.09 .74 Adjusted
TA5 Ruggedness 1.94 .36
Game Attendance (a = .90)
GA1 2.69 .81
GA2 3.04 .91
GA3 3.05 .87
STRUCTURE
[beta] P [less
Path Relationships /r than or
equal to]
Affinity [left and right arrow]
Affiliation .43 .001
Affinity [right arrow]
Identification .17 .001
Affiliation [right arrow]
Identification .62 .001
Identification [right arrow]
Game Attendance .58 .001
Squared Multiple Correlations [R.sup.2] P [less
than or
equal to]
Team Identification .50 .001
Game Attendance .34 .001
Model Fit Diagnostics
[chi square] test = 191.6 (df = 86; p<.01)
Goodness-of-Fit-Index = .94
Goodness-of-Fit-Index = .92
Paired Fit-Test
RMSEA = .05 SRMR = .05
(a) Implied mean estimates shown. In saturated models, a model-implied
item mean is the same as the sample mean. For over-identified models
(one with positive degrees of freedom), the implied mean of a measured
variable can differ from the sample mean. In that situation, if the
model is correct, which is true in the case above, the implied mean
offers a better estimate of the population mean than the sample mean.