Positive youth development and observed athlete behavior in recreational sport
Positive youth development and observed athlete behavior in recreational sport
Matthew Vierimaa 0
Mark W. Bruner
Jean CoÃ teÂ
Martinek T, UNITED STATES
0 Department of Kinesiology and Health Science, Utah State University , Logan , Utah, United States of America, 2 Schulich School of Education, Nipissing University , North Bay, Ontario , Canada , 3 School of Kinesiology and Health Studies, Queen's University , Kingston, Ontario , Canada
Competence, confidence, connection, and character are regarded as outcomes of positive youth development (PYD) in sport. However, the specific athlete behaviors associated with different PYD profiles are not well understood. Thus, the purpose of this study was to investigate the relationship between athletes' observed behavior during sport competitions and their perceptions of PYD outcomes.
Data Availability Statement: We can confirm that
the analyses can be replicated using the minimal
data present within the paper. If requested,
additional anonymized data could be made
available from the corresponding author or the
Queen's University General Research Ethics Board.
Due to the identifiable nature of video-recorded
observational data, full data cannot be made
publicly available. Anonymous partial data may be
requested from the corresponding author
() or the Queen's
University General Research Ethics Board (chair.
Cross-sectional study with systematic behavioral observation.
Sixty-seven youth athletes were observed during basketball games near the end of their
season, and the content of their behavior was systematically coded. Athletes also
completed measures of the 4 Cs (competence, confidence connection, and character). A
person-centered analysis approach was used to examine the relationship between PYD
profiles and observed behavior.
A cluster analysis identified two homogenous groups of athletes characterized by relatively
high and low perceptions of confidence, connection, and character. A MANCOVA revealed
that after controlling for gender and years of playing experience, the high Cs group engaged
in more frequent sport communication with their coaches.
Results re-affirm the critical role that coaches play in the developmental experiences of
young athletes, and highlight the importance of contextual factors of the youth sport
Funding: Funding for this project was provided by
a Joseph-Armand Bombardier CGS Doctoral
Scholarship (#767-2013-2642) from the Social
Sciences and Humanities Research Council of
Canada (SSHRC: www.sshrc-crsh.gc.ca) to MV,
and a SSHRC Insight Grant (#435-2014-0038) to
JC. The funding agency played no role whatsoever
in study design, data collection and analysis,
decision to publish, or preparation of the
manuscript for this study.
Positive youth development (PYD) is a strength-based perspective that views youth as
resources to be developed, rather than problems to be solved [
]. Essentially, the PYD
perspective contends that all youth have personal strengths that can flourish and be promoted (e.g.,
]). The PYD approach began in developmental psychology approximately 20 years ago, and
the majority of studies have investigated how youth's participation in various forms of
extracurricular activities can influence important developmental outcomes (e.g., [
have suggested that effective PYD programs tend to be characterized by the provision of
leadership opportunities, emphasis on the development of personal and life skills, sustained and
caring youth-adult relationships, and a supportive and empowering environment [4±5]. Some
have argued that organized sport may be a particularly fruitful context for the development of
PYD [6±7]. As a result, the PYD approach has gained considerable popularity among sport
researchers over the past decade (see [8±9] for reviews), leading to a proliferation of research
across sport contexts using different conceptual frameworks.
One of the most dominant PYD frameworks across both developmental and sport
psychology is the 5 Cs, popularized by Lerner and colleagues [
]. Lerner et al. posit that PYD occurs
when youth exhibit growth in five distinct areas: Competence, confidence, connection,
character, and caring. As youth develop in these five key areas over time, this can ultimately lead to a
sixth CÐcontribution, whereby youth become thriving members of society who contribute to
themselves, their families, and communities [
]. Following a review of the sport literature,
CoÃteÂ and colleagues [
] advocated for combining character and caring when studying PYD
in a sport context, due to a lack of differentiation among these constructs in the extant sport
literature. The resultant 4 Cs mirror the framework's original conceptualization [
was expanded by Lerner and colleagues [
] using a similar review process to that of CoÃteÂ and
]. Using this sport-specific 4 Cs framework, Vierimaa and colleagues [
conducted a subsequent review of literature and proposed a measurement toolkit using existing
instruments, which assess the manifestation of the 4 Cs within a sport context. Based upon this
], each of the 4 Cs can be defined as follows: Competence reflects athletes' skill
level or ability in a given sport; confidence refers to athletes' belief in their abilities to be
successful in a given sport; connection is an umbrella term which comprises quality relationships
among the social actors in a sport environment (e.g., coaches, teammates, etc.); finally,
character refers to respect, responsibility, and ultimately engaging in prosocial behaviors and
avoiding antisocial behaviors.
Recent studies have begun to apply this 4 Cs toolkit in sport research, demonstrating its
utility to measure changes in PYD outcomes over time. Specifically, these studies have
investigated the link between these PYD outcomes and observed coach behavior using systematic
observation. For example, Allan and CoÃteÂ [
] studied the relationship between the emotional
tone of coaches' behavior and athletes' perceptions of the 4 Cs. The results of their study found
that athletes of coaches who were calm and inquisitive reported more frequent prosocial
behavior and less antisocial behavior toward opponents than athletes of coaches who conveyed
a more negative and intense emotional tone. Erickson and CoÃteÂ [
] adopted a longitudinal
approach in their investigation of the intervention tone of coaches' behavior in relation to
athletes' developmental trajectories over the course of a season. Interestingly, Erickson and CoÃteÂ
found that coaches interacted most often with athletes who scored the lowest on the 4 Cs.
These studies provide critical insight into the important role of coaches' on PYD in sport.
However, we also know that youth's sport experiences and development are shaped by the
differential effects of multiple social agents (e.g., [
]), rather than the coach alone. Thus, there is
2 / 14
a need to better understand how the full spectrum of athletes' social interactions are linked
with PYD outcomes.
The research on observed athlete behavior, specifically, is scant in comparison to the
sizeable number of studies on coach behavior. However, there exists great potential in applying
systematic observation to the study of athlete behavior in youth sport [
]. Several studies have
examined observed athlete behavior in relation to performance outcomes (e.g., [18±19]), while
others have recently begun to explore how observed athlete behavior is associated with PYD
outcomes in different sport contexts. In their study on social status (i.e., connection) and
athlete behavior among competitive adolescent volleyball players, Vierimaa and CoÃteÂ [
that lower status athletes less frequently engaged in interactions with their teammates and
coaches than their higher status peers. Erickson and CoÃteÂ [
] studied interpersonal
interactions in an informal sport play setting (i.e., recreational drop-in basketball games) and found
that athletes with greater perceptions of competence tended to take on a leadership role and
spent more time engaged with their peers in organizational behaviors. Overall, these two
studies highlight the utility of using systematic observation to uncover the behavioral manifestation
of PYD in sport. However, one must also remember that social interactions are constrained by
the nature of the sport activity and environment in which they take place. Erickson and CoÃteÂ
] focused on peer interactions exclusively due to the nature of informal sport play, while
Vierimaa and CoÃteÂ [
] examined athletes' interactions with both coaches and peers during
highly structured competitive volleyball training sessions. Organized competition represents
an important middle ground between these two contexts, as it is organized and includes the
presence of many key social agents (e.g., coaches, teammates, opponents), but it can be more
unpredictable than training sessions, and thus researchers may be more likely to observe
salient social interactions that unfold in the heat of the moment that may not otherwise occur
Thus, the purpose of this exploratory cross-sectional study was to investigate the
relationship between athletes' observed behavior during sport competitions and perceptions of PYD
outcomes (i.e., the 4 Cs). Specifically, we aimed to uncover differential PYD profiles based on
athletes' responses on measures of the 4 Cs, and subsequently examine observed behavioral
differences across these groups, in essence investigating the behavioral manifestation of PYD
during sport competitions. Given the exploratory nature of this study and limited existing
empirical evidence, no specific hypotheses were put forth.
Participants for the present study were 67 athletes and 20 head coaches from 20 teams in a
single recreational basketball league in Ontario, Canada. Athletes ranged in age from 11±15
(Mean, M = 12.42; Standard Deviation, SD = 1.29), were predominantly male (68.7%), and had
between 1±9 years of previous basketball playing experience (M = 2.73; SD = 1.96). Athletes
were spread across three divisions: girls aged 11±14 (k = 7; n = 21); boys aged 11±12 (k = 8;
n = 25); and boys aged 13±15 (k = 5; n = 21). Nine of the head coaches were female and 11
were male. The head coaches were between 24±59 years of age (M = 35.31; SD = 13.70) and
had between 1±35 years of coaching experience (M = 8.46; SD = 11.38). Apart from two female
coaches in the boys' 11±12 year old division, all other coaches coached same sex athletes. All
study participants and their parents provided active written consent prior to data collection.
The study procedures were approved by the general research ethics review board at Queen's
3 / 14
The basketball league is recreational in nature, and aside from a single practice at the
beginning of the season, participants' involvement is entirely made up of weekly games. Despite the
competitive nature (e.g., scores are kept) of these weekly competitions, no long-term
competitive elements are emphasized (e.g., standings, playoffs). Rather, all players receive equal playing
time and the league strives to ensure that all players have fun, regardless of ability level.
Additionally, the league is entirely volunteer-run and attracts a diverse mix of local youth by virtue
of its low cost ($10 registration fee).
All of the participants' teams were observed at two time points during the last month of their
season in February and March of 2015. At each time point, all of the participants' teams were
audio and video recorded using two high-definition video cameras and a parabolic
microphone. One camera was set up on a tripod with a static wide-angle perspective to capture both
team benches. The other camera was located on the sidelines at center court and actively
tracked the on-court action during play. The parabolic microphone was used to supplement
the cameras' built-in microphones to aid in capturing athletes' verbalizations. The first time
point served as pilot data and to acclimate the participants and coaches to the presence of the
research team and equipment, while audio and video recorded during the second time point
was retained for analysis [
]. Immediately following the second time point, all of the
participating athletes completed a battery of questionnaires that measured the 4 Cs (i.e.,
competence, confidence, connection, and character).
4 Cs. Athlete outcomes were measured using the 4 Cs toolkit, which is comprised of
instruments that assess each of the 4 Cs: competence, confidence, connection, and character
]. This toolkit was developed through a review of the sport literature and represents a
collection of previously validated instruments that measure youths' perceptions of the 4 Cs within
a sport context. Participants were instructed to base their responses on their present team
environment. As a whole, the toolkit has been applied in past research with youth soccer [
volleyball participants [
]. For further discussion of the selection of these individual
instruments and their psychometric properties, see [
Competence. Athletes' perceptions of their competence in sport was measured using the
Sport Competence Inventory (SCI; [
]), which expanded upon a single-item measure
originally developed by Causgrove Dunn, Dunn, and Bayduza [
]. The SCI measures athletes'
selfperceptions of their competence in sport using three items that assess technical, tactical, and
physical skills. Athletes rate their own competence in these areas based on a 5-point scale
ranging from ªnot at all competentº to ªextremely competentº and a composite score is calculated
from their responses. The present sample demonstrated adequate internal reliability
(Cronbach's α = .82).
Confidence. The self-confidence subscale of the Revised Competitive State Anxiety-2
]) was used to assess athletes' confidence in sport. This measure is composed of
five items that are rated on a 4-point scale ranging from ªnot at allº to ªvery much soº. The
question stem was modified to target trait sport confidence instead of state sport confidence
(i.e., indicate how you generally feel; [
]). Previous research has established factorial validity
for this measure [
], which has also been used with youth populations (e.g., [
]). In the
present sample, Cronbach's α was .86.
Connection with coach. In the present study, the connection dimension intended to
assess athletes' relationships with both their coaches and teammates. The direct perspective of
4 / 14
the athlete response scale from Jowett and Ntoumanis' [
] Coach-Athlete Relationship
Questionnaire (CART-Q) was used as a measure of athletes' connection with their head coach (e.g.,
ªI am close to my coach). The CART-Q is made up of 11 items that assess coach-athlete
relationship quality using a 9-point scale ranging from ªnot at allº to ªextremelyº, and has been
previously been shown to have strong psychometric properties [
]. While the CART-Q
originally measured three subscales (i.e., closeness, commitment, and complementarity), these
were collapsed to provide an overall measure of coach-athlete relationship quality. The
CART-Q demonstrated adequate internal consistency in the present sample (Cronbach's
α = .96).
Connection with teammates. The Youth Sport Environment Questionnaire (YSEQ; [
was administered as a measure of athletes' connection with their teammates; specifically, it
assessed athletes' perceptions of team cohesion. This instrument contains 18-items which
assess athletes' perceptions of task and social cohesion based on a 9-point scale ranging from
ªstrongly disagreeº to ªstrongly agreeº. Factorial validity for this measure has been previously
established with a large sample of youth athletes [
]. In the present sample, Cronbach's α
ranged from .89 (task cohesion) to .91 (social cohesion).
Character. The Prosocial and Antisocial Behavior Scale for Sport (PABSS; [
]) was used
as a measure of character. The PABSS is a 20-item scale which measures the frequency in
which participants engage in various types of moral behavior using a 5-point scale ranging
from ªneverº to ªvery oftenº. This measure has shown strong psychometric properties in
previous studies [27±28]. In the present study, composite measures of prosocial behavior (α = .78)
and antisocial behavior (α = .82) were calculated and each demonstrated adequate reliability.
The antisocial behavior items were reverse-coded such that higher scores implied less frequent
Observational data. An adapted version of the Athlete Behavior Coding System (ABCS;
]) and Observer XT software [
] were used to code the video-recorded observational data.
The ABCS was originally designed to code athlete behavior in youth volleyball training
sessions and intended to provide an exhaustive categorization of athlete behavior in that
particular context (see [
] for additional detail on its development). The ABCS is comprised of eight
main content categories: Prosocial communication, sport communication, directive
communication, general communication, engaged, non-cooperative/disruptive, antisocial
communication, and uncodable. The ABCS is a continuous coding system, meaning that second of
athletes' behavior during practice or competition are coded using these eight content
categories. To pair with each content category, the ABCS also captures the target of each interactive
behavior (e.g., coach or teammate) as well as a set of contextual codes which describe different
aspects of a volleyball training session. Due to the inherent differences between volleyball
training sessions and basketball competitions, some changes were made to the coding system.
First, the social context dimension was replaced with a location dimension, which codes
whether an athlete was on the court, on the bench, or out of view at a specific point in time.
Second, minor modifications were made to the content dimension, which involved combining
directive communication with its parent sport communication category, as well as refining the
definitions and examples of each category to more accurately reflect the sport setting in the
present study. Finally, a ball possession dimension was added to measure the frequency and
duration in which each athlete has possession of the basketball during play. Due to the detailed
nature of the coding process with the ABCS, a one-hour video segment for a single athlete
requires 2±3 hours of coding. Thus, coding all 67 athletes in the present study required
approximately 140 total hours of coding.
Using the ABCS, several measures of athlete behavior were derived for the present study
(Table 1). Even though the coding process allows for the measurement of both frequency and
5 / 14
Athlete is clearly in possession of the basketball.
Communication that is clearly positive in nature, and can be in
response to a desirable event.
Communication that is related to the sport, and can be
organization, technical, or tactical in nature
Communication that is unrelated to the sport.
An athlete is dribbling the basketball up the court.
Verbal (e.g., ªgreat job!º) and/or non-verbal (e.g., high
fiving a teammate) in nature
A coach and athlete discussing technical feedback
during a time-out.
Two teammates talking about something that
happened at school.
duration, the present study focused solely on the frequency in which specific categories were
activated over the course of a 40-minute game. Specifically, seven measures were the focus of
analysis, which included the ball possession dimension and six specific combinations of
content and target codes: Prosocial communication with coaches, prosocial communication with
teammates, sport communication with coaches, sport communication with teammates,
general communication with coaches, and general communication with teammates. Each measure
is comprised of a content category (e.g., prosocial communication) and a target (e.g., coach)
with whom that specific interaction is shared. For example, ªsport communication with
coachesº describes specific, individualized communication between an athlete and his/her
coach. Collectively, these measures comprise the most common interactive behavior states
observed across all athletes. While other content categories (e.g., antisocial communication),
targets (e.g., referees), and combinations of both were coded, they were observed infrequently
across a small subsample of participants, and were therefore excluded from analysis.
Coder training and reliability
Two trained research assistants (RAs) aided the primary researcher in the adaptation of the
coding system for the present study. Following an initial introduction and review of the coding
system and Observer XT software, the research team engaged in several rounds of test coding
whereby each individual would independently code a specific segment of video and then the
RAs and primary researcher would meet to discuss any questions and compare performance.
Minor refinements were made to the coding system as necessary, and this process was repeated
with randomized video segments until no new issues arose. At this point, reliability testing was
conducted whereby each RA was required to meet a minimum of 80% agreement on a
tenminute video segment when compared to a ªgold standardº of coding completed by the
primary researcher [
]. The ten-minute video included 273 individual coding events, of
which 218 needed to be coded correctly to reach the 80% agreement threshold. Each RA
successfully reached the reliability threshold after approximately 60 hours of training, at which
point one was selected based on availability to aid the primary researcher in coding videos for
This study incorporated a person-centered data analysis approach, as it aimed to uncover
groups of athletes with relatively homogenous developmental experiences, and then investigate
potential group differences in regard to their observed behavior during competition. As such,
data analysis was comprised of two main phases: 1) A cluster analysis using measures of the 4
Cs, and 2) a multivariate analysis of covariance comparing the clusters from phase 1 on
measures of observed athlete behavior. All analyses were performed using SPSS version 21.
6 / 14
Following initial data screening, all of the questionnaires were re-scaled to a 5-point scale,
which was necessary to ensure that each construct (i.e., competence, confidence, connection,
and character) received equal weighting in the subsequent cluster analysis [
the YSEQ (i.e., task and social cohesion) and PABSS (i.e., prosocial and antisocial behavior)
were each standardized to 2.5-point scales so that the latent constructs of connection and
character were weighted similarly to the other Cs. A k-means cluster analysis was then conducted
using these 4 Cs measures in order to identify naturally occurring groups of participants. In
other words, the cluster analysis grouped athletes in a way that would maximize within-group
similarity and between-groups differences. A range of cluster solutions were examined and the
optimal solution was determined based on their silhouette coefficients, which is used as a
measure of clustering validity [
]. Follow-up independent samples t-tests were conducted to
analyze specific differences in the 4 Cs across these clusters.
In the second phase of data analysis, the clusters of athletes were compared based on their
observed behavior. After data screening, a MANCOVA was performed to assess potential
group differences on each of the seven measures of observed behavior. A covariate analysis
was conducted to control for the effects of gender and years of playing experience. In the event
of a significant MANCOVA, follow-up tests would be conducted to determine specific group
differences using a Bonferonni-corrected alpha value to adjust for multiple comparisons.
Descriptive statistics and bivariate correlations
Means and standard deviations for all variables, in addition to bivariate Pearson correlations
between all variables are shown in Table 2. Statistically significant small (r = +/- .3-.5) to
p < .01;
p < .05;
Playing exp. = playing experience; C-A rel. quality = coach-athlete relationship quality; Prosoc. behavior = perceived prosocial behavior; Antisoc. behavior = perceived
antisocial behavior; Prosoc. coach = prosocial communication with coach; Prosoc. team = prosocial communication with teammates; Sport coach = sport-related
communication with coach; Sport team = sport-related communication with teammates; Gen. coach = general communication with coach; Gen. team = general
communication with teammates.
7 / 14
medium strength correlations (r = +/- .5-.7) exist between several variables. In general, small
to medium positive correlations were observed between confidence, coach-athlete relationship
quality, task cohesion, and prosocial behavior. Coach-athlete relationship quality was also
positively correlated with social cohesion. Among the observational variables (measures 10±16),
ball possession was moderately and positively correlated with playing experience, competence,
and antisocial behavior. Prosocial communication with coaches was negatively correlated with
prosocial communication with teammates and positively correlated with sport communication
with coaches. Prosocial communication with teammates was also positively correlated with
both sport and general communication with teammates. Sport communication with coaches
was also positively correlated with both sport communication with teammates and general
communication with coaches. General communication with coaches and teammates were
moderately, positively correlated with one another. Finally, years of playing experience was
positively correlated with confidence, coach-athlete relationship quality, ball possession, and
sport communication with coaches and teammates.
4 Cs data: Cluster analysis
Data were initially screened for violations of normality, heterogeneity of variance, and the
presence of outliers. Missing data were addressed using pairwise deletion, which is an
acceptable approach in cluster analyses [
]. A set of k-means cluster analyses were conducted using
the 4 Cs measures of competence, confidence, connection (i.e., coach-athlete relationship
quality and task and social cohesion), and character (i.e., prosocial and antisocial behavior). Two,
three, and four cluster solutions were run, and a two cluster solution emerged as optimal
because it produced the highest silhouette coefficients (m = .31), which indicates the best fit in
terms of tightness within each cluster and separation between clusters [
descriptive analysis of each cluster solution also suggested that the two cluster solution
presented the most theoretically interpretable solution. Screening of the data grouped by cluster
revealed four potential univariate outliers. The two cluster solution was run both with and
without the outliers (removed pairwise). Removal of the outliers had no effect on the cluster
membership of the four outlier participants, and as such the outliers were retained.
Demographic information for participants in each of the two clusters is presented in Table 3.
The resultant two cluster solution was further validated using follow-up independent
samples t-tests for each 4 Cs measure entered into the cluster analysis, with a Bonferonni-corrected
alpha value of .007. Descriptive statistics for each cluster on the 4 Cs are presented in Table 4.
The results of the t-tests showed significant differences in the scores for confidence (t(63) =
4.00, p < .001), coach-athlete relationship quality (t(60) = 12.62, p < .001), task cohesion
(t(65) = 4.19, p < .001), and prosocial behavior (t(59) = 3.04, p = .004). Based on these
differences, clusters 1 and 2 are hereafter labelled ªhigh Csº and ªlow Csº respectively.
(n = 46)
(n = 21)
8 / 14
Basketball games ranged in length from 40 to 50 minutes due to variation in stoppages in play.
To maintain consistency across observations, behavior measures were standardized to a 40
minute basketball game. Ball possession scores were also adjusted according to the amount of
time each athlete spent on the court over the course of a 40 minute game. Initial data screening
detected three univariate outliers which were greater than 3.29 standard deviations from the
mean (sport communication with coaches, sport communication with teammates, and general
communication with teammates). As such, a log(x+1) transformation was applied to all
behavior variables, at which point all of the variables fell within an acceptable range. The
transformed variables were used in all subsequent analyses; however, raw descriptives are presented
in Table 3 for ease of interpretation. No multivariate outliers were detected using Mahalanobis
A MANCOVA was conducted to examine differences between high and low Cs groups on
the seven behavioral measures, while controlling for the effects of gender and playing
experience. Both gender (Wilks' λ = .44, F(7,57) = 10.51, p = .000, partial η2 = .56) and playing
experience (Wilks' λ = .58, F(7,57) = 5.89, p = .000, partial η2 = .42) showed significant main effects.
There was also a significant main multivariate effect of cluster group on behavior after
controlling for both gender and playing experience (Wilks' λ = .74, F(7,57) = 2.81, p = .014, partial η2
= .26). Upon visual inspection of the descriptive data in Table 3, the high Cs group scored
higher than the low Cs on all observed behavioral categories except prosocial communication
with coaches. Follow-up analyses of variance indicated a significant difference for sport
communication with coaches (F(1,63) = 10., p = .004, partial η2 = .14), while no other significant
differences were observed for ball possession (F(1,63) = .18, p = .68, partial η2 = .00), prosocial
communication with coaches (F(1,63) = .38, p = .54, partial η2 = .01), prosocial
communication with teammates (F(1,63) = 2.24, p = .14, partial η2 = .03), sport communication with
9 / 14
teammates (F(1,63) = 1.63, p = .21, partial η2 = .03), general communication with coaches
(F(1,63) = .43, p = .52, partial η2 = .01), and general communication with teammates (F(1,63) =
.57, p = .46, partial η2 = .01).
The present study explored the relationship between youth athletes' perceptions of the 4 Cs
and their observed behavior during recreational basketball games. A cluster analysis revealed
two homogenous groups of athletes (i.e., high and low Cs) based on relatively high and low
perceptions of confidence, coach-athlete relationship quality, task cohesion, and prosocial
behavior. The findings suggested that the high Cs more frequently engaged in sport-related
communication with their coaches than the low Cs. The results of this study present numerous
implications for both coaching and youth development through sport, which are discussed
below and broadly relate to the unique context in which the study took place.
Interestingly, the present findings provide mixed support for the previous work of Erickson
and CoÃteÂ [
], who conducted a longitudinal study of athlete development and coach-athlete
interactions. Erickson and CoÃteÂ found that coaches spent more time providing positive
evaluation/encouragement (i.e., prosocial communication) and discussing mental skills with athletes
(i.e., sport communication) who scored lower on the 4 Cs, and more time discussing
nonsport related matters (i.e., general communication) with athletes who scored higher on the 4
Cs. While the ªlowº and ªhighº clusters described by Erickson and CoÃteÂ [
] differ slightly
from those in the present study, the findings from the present study demonstrated that the
high Cs engaged in more frequent sport communication with their coaches. It should also be
noted that in line with Erickson and CoÃteÂ [
], high Cs in the present study also engaged in
more frequent general (non-sport related) communication with their coaches. However, this
was not significant, which may be due to the relative infrequency and wide variability of this
behavior across the sample. These findings may be partly explained by considering the nature
of the sport activities being observed. Erickson and CoÃteÂ [
] observed volleyball training
sessions, while the present study observed basketball games. Thus, while coaches may aim to
provide less skilled players additional encouragement and instruction during training sessions,
this effect may washout during competition when coaches are more focused on the game itself.
Coaching is indeed a context-specific process, and previous research has highlighted
significant differences in coaching behavior across training and competition [
]. The relative
infrequency of general (non-sport related) communication with coaches (compared to sport
communication) in the present study may also be explained by the supposition that during
games, coaches' behavior is primarily task-oriented (e.g., [
]). Together, these studies
reaffirm the important role of the youth sport coach in relation to athlete development, and that
the nature of coach-athlete relationship must be considered in light of the sport activities (e.g.,
training vs. competition) in which these social interactions take place [
The overall finding that high Cs (who are characterized in part by higher perceptions of
their relationship with their coaches) engaged in more frequent sport communication with
their coaches supports previous research in the area of coach-athlete relationships. It is well
known that interpersonal communication is a primary channel for developing coach-athlete
relationships through the transmission of trust, respect, and concern [
]. In this sense,
evidence of coach-athlete interactions can be a behavioral manifestation of a high quality
coachathlete relationship. Indeed, athletes describe close and adaptive coach-athlete relationships in
terms of warm, trusting and positive communication [
], and effective coaches often engage
in frequent, and consistent patterns of behavior with their athletes (e.g., [
]). More broadly,
these findings also provide further support for how coaches' behavior influence PYD outcomes
10 / 14
among athletes (e.g., [
]), as communication with coaches was associated with not only
coach-athlete relationship quality, but a wide range of other PYD outcomes as well.
It is also important to remember that athletes' perceptions and behavior are shaped by the
environment in which their sport takes place. While some of the differences between training
and competition have already been discussed, it is also worth considering the fact that the
present study focused on a unique basketball league that was recreational in nature, but also solely
exposed athletes to competitions rather than training sessions. In contrast, most other
observational studies of coach and athlete behavior have investigated competitive club programs (e.g.,
]) or informal sport play . The basketball league's focus on fun and equal playing
time, and the observed characteristics of the high and low Cs provide support for Visek and
] fun integration theory. In the present study, there were no differences across
clusters in terms of performance-based indicators such as competence and ball possession.
Instead, self-confidence and indicators of perceived and observed social relationships with
coaches and teammates emerged as most salient. These social factors mirror many of the
dimensions that Visek et al. found were most central to fun youth sport experiences (e.g.,
positive coaching, being a good sport, team friendships). This suggests that while the development
of sport skills and competence is important, it is not a requirement for the creation of an
enriching youth sport environment. Instead, sport programs for children and youth should
focus on facilitating quality social relationships among both youth and adults, as social
relationships are considered one of the most influential elements of the youth sport environment
It is also noteworthy that athletes' perceptions of cohesion, and in particular social cohesion,
were relatively low across the entire sample. Recreational sport is generally viewed as a context
for fun, enjoyment and social interaction. However, the nature of the sport environment and
limited contact time may have been detrimental to the development of peer relationships and
perceptions of team cohesion. Even though the present study examined a recreational
basketball league, athletes' limited contact time with teammates was during a performance-oriented
activity, during which they usually arrived immediately before tip-off, and left shortly
afterward. This may have suppressed the development of social cohesion due to fewer opportunities
for non-sport related socialization. Indeed, Donkers, Martin, Paradis, and Anderson [
found that task, but not social cohesion predicted enjoyment and commitment among
recreational children's soccer players. Thus, it is not surprising in the present study that both clusters
showed higher perceptions of task cohesion in the present study given that teams only meet
once a week to engage in a 40-minute basketball competition (a task-oriented activity). Carron
and Brawley [
] posited that in sport teams, task cohesion usually develop first, followed by
social cohesion, which is supported by both the present findings as well as those of Donkers
and colleagues [
]. This yields key implications for youth sport programming, as these
findings highlight the importance of creating opportunities for peer interactions (both task and
social in nature) in order to help facilitate the development of friendships and cohesion.
The fact that neither perceptions of competence nor ball possession emerged as significantly
different across clusters is also a point worthy of discussion. Indeed, past research has
consistently shown a positive relationship between physical competence and positive peer
relationships, as sport can act as a social currency to facilitate relationships among peers [
]. This is
further supported by recent observational studies linking competence with social status in
competitive youth volleyball [
], and observed peer interactions in informal sport play [
Again, these disparate findings may be explained in relation to the fact that the basketball
league in the present study emphasized equal playing time and enjoyment for all athletes
regardless of ability level. In doing so, they may have suppressed the relative importance of athletes'
competence. While non-significant, the results showed a general overall trend of the high Cs
11 / 14
engaging in more frequent prosocial, sport, and general communication with their teammates,
providing some further support for the earlier suggestion regarding the importance of
facilitating social interactions among teammates.
Given the exploratory nature of this study, there are several limitations and future
directions to consider. First, in this cross-sectional study athletes' perceptions of the 4 Cs were used
as a grouping variable to predict measures of observed behavior. However, the actual
directionality of this relationship remains unclear. For example, do more frequent interactions with
coaches lead to a stronger coach-athlete relationship, or is the opposite true? Ultimately, it is
likely a reciprocal relationship in that individuals' personal traits and sport experiences may
influence their behavior, and their experiences over the course of the season may also shape
their social interactions [
]. Future research should adopt longitudinal designs in order to
attempt to further clarify this relationship. The inclusion of multiple observations in a
longitudinal design could also enhance the validity of the observed behaviors. Second, given the
inherent difficulties in observing athlete behavior in a naturalistic setting on a continuous basis, the
coding system used in this study was relatively simple, focusing on the frequency in which
general content categories were observed. Future studies should move beyond the sole
observation of the content or ªwhatº of athlete behavior, and also consider more nuanced aspects of
such as emotional tone (e.g., [
]) or motivational climate (e.g., [
]). It would also be
advantageous for follow-up studies to take advantage of emerging dynamic systems-based analytical
approaches which allow for the analysis of the patterning and sequencing of observed athlete
Overall, the present study identified two groups of recreational youth athletes who were
characterized by relatively high and low perceptions of confidence, coach-athlete relationship
quality, task cohesion, and prosocial behavior. The high Cs group also engaged in more
frequent sport-related communication with their coaches. Together, these findings re-affirm the
importance of certain features of the coach-athlete relationship in the developmental
experiences of young athletes, and highlight the consideration of the particular setting (e.g., game,
practice, recreational, competitive) in which youth sport takes place.
Conceptualization: Matthew Vierimaa, Mark W. Bruner, Jean CoÃteÂ.
Data curation: Matthew Vierimaa.
Formal analysis: Matthew Vierimaa.
Funding acquisition: Matthew Vierimaa.
Methodology: Matthew Vierimaa, Mark W. Bruner.
Supervision: Mark W. Bruner, Jean CoÃteÂ. Writing ± original draft: Matthew Vierimaa, Mark W. Bruner, Jean CoÃteÂ. Writing ± review & editing: Matthew Vierimaa, Mark W. Bruner, Jean CoÃteÂ.
12 / 14
grade adolescents: Findings from the first wave of the 4-H study of positive youth development. J Early
Adolesc, 2005; 25: 17±71. http://psycnet.apa.org/doi/10.1177/0165025407076439
13 / 14
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