"For the Article provided : "
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male counterparts at creating cohesion and at facilitating cooperative learning and participative 
communication.
Hence,
Hypothesis 1: As functional diversity increases, female-led teams will report (a) more cohesion, 
(b) more cooperative
learning, and (c) more participative communication as compared with male-led teams.
Larger and geographically dispersed teams are also likely to benefit more from female leaders than 
from male
leaders in developing communal team outcomes (e.g., cohesion, cooperative learning, and 
participative communication),
because of the tendency for women to have more of a relational self-concept than men. Creating team 
and
mutually empowering members—which are critical relational activities (Fletcher, 1998)—should help 
larger and
geographically dispersed teams overcome the communication, cooperation, and coordination challenges 
that larger
and geographically dispersed teams tend to encounter. In their study of over 7000 scientific teams 
in the biotech industry
Tzabbar and Vestal (In press) suggest that trust, familiarity, and shared understanding help reduce 
coordination and
cooperation costs associated with team dispersion. Leaders on globally dispersed teams who develop 
high quality
relationships with their subordinates and also communicate with them frequently enable a higher 
level of member
participation in team decisions (Gajendran & Joshi, 2012). When team members feel known, they 
report a higher
level of interpersonal trust, which, in turn, is associated with higher levels of personal learning 
(Purvanova, 2013).
And, inspirational leaders of geographically dispersed teams, because their communications focus on 
the collective
(rather than on themselves), appear especially apt at eliciting team trust and commitment, both of 
which facilitate
effective group functioning (Joshi, Lazarova, & Liao, 2009). Because female leaders are more likely 
than men to
practice relational leadership (due to the higher frequency of relational self-construal among 
women relative to
men), I argue that female leaders may, therefore, also be more successful in mitigating the 
coordination requirements
that larger and geographically dispersed teams pose to the quality of the relationships between 
team members and the
team and to team interaction norms. Thus, as illustrated in Figure 1, I anticipate that larger 
teams and geographically
dispersed teams will report more cohesion, cooperative learning, and participative communication 
when they are led
by women as compared with when they are led by men. Hence,
Hypothesis 2: As team size increases, female-led teams will report (a) more cohesion, (b) more 
cooperative learning,
and (c) more participative communication as compared with male-led teams.
Figure 1. Hypothesized relationship with statistically significant results in bold
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Hypothesis 3: Among geographically dispersed teams, female-led teams will report (a) more cohesion, 
(b) more
cooperative learning, and (c) more participative communication as compared with male-led teams.
Method
Sample and procedure
The study’s data collection was initiated through a research alliance with the Industrial Research 
Institute (IRI), a
prominent professional association of industrial R&D executives representing over 200 major 
industrial firms. Member
companies of the IRI participated in a study about diversity and innovation by volunteering teams 
to complete an
online survey. A committee of senior IRI scientists and engineers provided input into the 
development of the survey
instrument to ensure that it would not compromise the sensitive nature of the work being carried 
out. In addition, a
pilot study with 28 teams was conducted to identify the most reliable survey items for inclusion in 
the final survey to
ensure that the time required to take the survey did not exceed the 30-min time limit that 
participating organizations
had requested for the survey. The teams that participated in the survey were tasked with product, 
service, or process
innovation, were cross-functional, had spent at least three months together, and were either still 
operating or had
disbanded no more than 60 days prior to the study. In total, 86 cross-functional innovation teams 
representing
837 individuals from 29 organizations participated in the study. To ensure the highest level of 
reliability in the aggregated
data, I excluded teams from the study (i) if fewer than 70% of their members responded to the 
survey or (ii)
if leaders’ gender was not identifiable. This resulted in the loss of four teams. Thus, the final 
sample comprises 82
teams. Approximately 30% of the teams had female leaders. The average number of functions 
represented on a team
was 3.7, the average team size was 11 members, and the average tenure was one to two years. 
Twenty-seven percent
of the teams were geographically dispersed. For each team, all members were asked to complete a 30
-min online
survey that provided information for the study. On average, per team, 93 percent of team members 
responded to
the survey. Unless otherwise indicated, the response range is 1 = “Strongly disagree.” to 7 = 
“Strongly agree.”
Measures
Dependent variables
Because participating organizations imposed strict limitations on the survey length, in many cases, 
it was impractical
to include intact scales developed in peer-reviewed work. Personal judgment and results from a 
pilot study guided
the selection of the items for the survey. Consistent with Bollen and Hoyle’s (1990) 
conceptualization of the social
dimension of cohesion as both a feeling of belonging to a particular group and a feeling of morale 
associated with
group membership, the measure of cohesion consists of two items from Bollen and Hoyle’s (1990) 
scale, one from
each the two dimensions of their construct: “I feel a sense of belonging to [this team]” and “I am 
enthusiastic about
being a member of [this team].” Factor analysis at the team member level showed a single-factor 
structure with a
Cronbach alpha of 0.76. Hence, I averaged the items into an individual level measure of cohesion. 
The measure
of cooperative learning was derived with items adapted from the two dimensions of Janz and 
Prasarnphanisch’s
(2003) scale of cooperative learning that best capture the relational aspect of team learning: 
promotive interactions
and positive interdependence. My factor analysis of pilot survey data identified two items 
pertaining to promotive
interactions and one item related to positive interdependence as providing the most parsimonious 
and reliable
measure of cooperative learning. The three items loaded onto one factor and were averaged into a 
scale of cooperative
learning (Cronbach a = .86). Given the lack of a previously established measure of participative 
communication,
Jassawalla and Sashittal’s (2002, 2006) conceptual work informed the development of the 
participative
communication measure. Twelve items relating to participative communication derived from Jassawalla 
and
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Sashittal (2002, 2006) and also drawn from Carson et al. (2007) were used in a pilot survey, 
conducted in conjunction
with the present survey, with responses from 308 individuals representing 28 teams. I conducted 
factor analyses
of the pilot survey data, and they suggested a more parsimonious set of items for the present 
study, which also
helped address the survey length concerns of participating organizations. Thus, the measure of 
participative communication
used for the entire sample consists of five items. Two items from Carson et al.’s (2007) voice 
scale capture
participation and input: “People on this team are encouraged to speak up and test assumptions about 
issues under
discussion,” and “This team encourages everyone to actively participate in decision making.” The 
remaining three
items are derived from Jassawalla and Sashital’s (2002, 2006) conceptual work to capture 
transparency (“Team
members actively share their special knowledge and expertise with one another;” “Team members have 
access to
all information available to the team.”) and mindfulness (“Team members are listened to and taken 
seriously.”).
All items loaded onto a single factor (Cronbach a = 0.81) and I averaged them into an individual 
level scale.
To gain greater confidence in my measures, I took several steps. First, I conducted a confirmatory 
factor analysis
on all ten items constituting the three dependent variable measures. This validated the three 
factor structure and
showed good fit with the data (comparative fit index = .97, root mean square error of approximation 
= .06 (Hu &
Bentler, 1999), relative chi square index = 4.187 (Schumacker & Lomax, 2004), standardized root 
mean square
residual = .035, and GFI = .965.) Second, I assessed the correlation among the three dependent 
variable measures.
At the level of the team members, the correlations among the three dependent variables ranged from 
0.45 to 0.65,
suggesting positive, but moderate relationships between the measures.
To determine if team-level aggregation of each dependent variables was empirically justifiable, I 
took two precautions.
First, I evaluated within-group agreement to determine the amount of consensus among team members 
in their
evaluations of the team environment (Klein, Conn, Smith, & Sorra, 2001; Kozlowski & Hattrup, 1992). 
I assessed
within-group agreement using Klein et al. (2001) rwg(J) procedure. To further evaluate whether 
aggregation of the
dependent variables to the team level was empirically justifiable, I performed the ICC(1) intra-
class correlation
coefficients test (Raudenbush & Bryk, 2002), which provides an indication of the amount of variance 
attributed
to group membership (Bliese, 2000). Although no absolute standard cut-off values for rwg(J) or ICCs 
have been
established, aggregation is deemed warranted for rwg(J) values at or above 0.70 and ICC(1) values 
above .05 (Bliese,
2000). The median rwg(2) for cohesion across teams is .83, with a range from .07 to .97. For nine 
of the teams, the rwg
(2) fell below .70, necessitating robustness checks. For cohesion, the ICC(1) value of 0.09, F
(82,738) = 2.01 and
p<0.001 shows sufficient between-group variance. The median rwg(3) for cooperative learning across 
teams is
.82, with a range from .36 to .99. For seven of the teams, the rwg(3) fell below .70, necessitating 
robustness checks.
For cooperative learning, the ICC(1) value of 0.05, F(82,723) = 1.62 and p<0.001 shows sufficient 
between-group
variance (Bliese, 2000). The median rwg(5) for participative communication across teams is .90, 
with a range from
.19 to .99. For three of the teams, the rwg(5) fell below .70, necessitating robustness checks. The 
ICC(1) value for
participative communication was 0.07, F(82,754) = 2.36 and p<0.001. Based on these indicators, I 
aggregated
the individual-level dependent variable measures into team-level variables (Bliese, 2000).
Leader gender
Participating organizations provided team member lists that identified the formal team leaders. I 
ascertained leader
gender using the first name of the identified leaders (if unambiguous) or their survey response to 
the question about
their gender. The leader gender dummy variable is equal to 1 for teams with female leaders, and 
zero otherwise.
Functional diversity
Team members self-reported their functional area by selecting from a predetermined list the 
function that best
matched their primary job responsibility. These functions included accounting, auditing and 
finance; general management
and human resources; computer and information services; engineering; marketing, sales, and customer
service; production, manufacturing, and supply chain; basic and applied research; development; 
legal; and others.
Drawing on Harrison and Klein’s (2007) diversity typology, I conceived of functional diversity as 
indicative of
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variety and computed it with a Blau’s index (1977). Because functional area includes 10 categories 
and because
teams in the sample differ in size (with some having fewer than 10 members), there is a risk of 
bias in the Blau’s
index because “maximum possible variety increases with unit size” (Harrison & Klein, 2007: 12). 
Therefore, following
established procedures, I standardized the Blau’s index by dividing it, for each team, by its 
theoretical maximum
(Biemann & Kearney, 2010; Harrison & Klein, 2007). Among the teams in this study, the mean score of 
functional
diversity was 0.69 with a range from 0 to 1.
Team size
Team size is the number of members on each team. To measure team size, I counted the number of 
members on team
lists supplied by participating organizations.
Geographic dispersion
Geographic dispersion is a dummy variable that captures whether a team is located in one area or in 
multiple geographic
areas. For each team, individual members responded to the question: “Which country best describes 
your current
workplace location?” by selecting from a predetermined list of 193 countries, the one that best 
matched their
current work location. When a team had members whose current workplaces were located in two or more 
countries,
I coded that team as geographically dispersed. To ensure the reliability of this measure, I checked 
team members’ selfreported
work location against information about geographic team dispersion provided by the participating 
organizations.
The geographic dispersion dummy variable is equal to 1 for geographically dispersed teams and zero 
otherwise.
Control variables
All analyses controlled for team tenure (i.e., the average team member tenure) to account for 
positive performance
outcomes associated with the length of time that members spend working together (Hackman, 2002). 
Team tenure
was assessed by asking respondents to indicate how long they had been part of their team. Six 
response options were
provided: “less than three months” (1), “three to six months” (2), “six to twelve months” (3), “one 
to two years” (4),
“two to four years” (5), and “less than four years” (6). For each team, I averaged the tenure 
responses into a measure
of team tenure. All analyses controlled for gender diversity using a Blau’s index (1977) to account 
for the previous
findings that leader effectiveness may be contingent on team gender composition (Eagly et al., 
1995). Because
gender has only two categories and because all teams have at least two members, the Blau’s index 
for gender does
not require standardization (Biemann & Kearney, 2010; Harrison & Klein, 2007). The maximum range 
for a Blau’s
index when there are only two categories is from 0 to 0.5 (Harrison & Klein, 2007). Among the teams 
in this study,
the mean score of gender diversity was 0.26 with a range from 0 to 1.
Results
The descriptive team-level statistics and inter-correlations presented in Table 1 indicates that 
teams led by women
are larger (r = .24, p<.01) and more gender-diverse (r = .39, p<.01). Teams with longer tenure tend 
to be more
cohesive (r = .29, p<.01). More functionally, diverse teams tend to be less cohesive (r =.23, 
p<.01). Team
cohesion is positively associated with evaluations of cooperative learning (r = .55, p<.01) and of 
participative communication
(r = .62, p<.01); and cooperative learning and participative communication are also positively
associated (r = .74, p<.01).
Because, in several cases, multiple teams from a single organization participated in the study, I 
computed
intraclass correlations to evaluate the extent to which teams are more similar within, as compared 
with across, organizations
(Snijders & Bosker, 2012). Organizations accounted for 9.4 percent of inter-team differences in 
cohesion
and for 7.3% of inter-team differences in participative communication and did not seem to account 
for variation in
cooperative learning across teams. When organizations account for non-trivial variation in team 
differences (as they
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do here for two of the dependent variables), “the hierarchical linear model is a better method of 
analysis than OLS
regression analysis because the standard errors of the estimated coefficients produced by ordinary 
regression analysis
are not to be trusted” (Snijders & Bosker, 2012: 52).
I, therefore, tested all the hypotheses with hierarchical linear modeling (HLM) (Raudenbush, Bryk, 
& Congdon,
2000). HLM allows proper modeling of non-independent data by partitioning variability in the 
dependent variables
between the organizational and team-level variables. Because the team-level phenomenon is the focus 
of this study,
a random intercept model with level-1 covariates only was constructed for each dependent variable, 
with team-level
variables centered around the grand mean (Raudenbush & Bryk, 2002; Snijders & Bosker, 2012). For 
each dependent
variable, the main effect model includes the controls and the main effects of team tenure, gender 
diversity, functional
diversity, team size, geographic dispersion, and leader gender. Models 1, 2, and 3, respectively, 
test the
hypothesized interaction effects of gender with functional diversity, team size, and geographic 
dispersion. Because
the relatively small sample size limits the statistical power in the analyses, I tested each 
interaction effect with
separate HLM models (Aguinis, Beaty, Boik, & Pearce, 2005). Finally, to ensure that the 
interactions I observed
were not spurious, I included the three interaction terms together in model 4. To test the 
significance of the moderator
effect, I computed the difference between the deviance score of the main effect model (without the 
interaction
term) and the deviance score of the model with the interaction term. The deviance score difference 
is a test statistic
following a chi-squared distribution with a single degree of freedom (Snijders & Bosker, 2012). A 
statistically significant
deviance score indicates that the slope difference between men and women is significantly 
different, from a
statistical perspective.
The proportional reduction in mean squared predictor error provides a meaningful way to express R2 
for multilevel
models (Snijders & Bosker, 2012). Following Snijders and Bosker (2012), I calculated this pseudo 
level-1
(i.e., team-level) R2 for the main effect models by calculating the proportional reduction in the 
value of the level
1 (team-level) and level 2 (organization-level) variance components after introducing the control 
and main effects,
compared with the null model. For each interaction model, I calculated the pseudo level-1 R2 by 
calculating the
proportional reduction in the value of the level 1 and level 2 variance components after 
introducing the interaction
term, compared with the null model. The HLM results are summarized by dependent variable in Table 2 
for
cohesion, in Table 3 for cooperative learning, and in Table 4 for participative communication.
Hypothesis 1 predicted that, as functional diversity increases, female-led teams report more (H1a) 
cohesion,
(H1b) cooperative learning, and (H1c) participative communication than teams led by men. The 
results suggest
that as functional diversity increases, female-led teams report more cohesion than male-led teams 
(? = 1.79,
p = .001), as shown in Table 2, model 1, thus supporting Hypothesis 1a. To assess the robustness of 
these
results, I conducted the HLM analysis with the reduced set of teams for which the team rwg(J) for 
cohesion,
cooperative learning, and participative communication were above 0.70. The robustness analyses show 
a similar
pattern of results, with female-led teams reporting more cohesion than male-led teams (? = 1.68, p 
= .01) as
Table 1. Means, standard deviations, and bi-variate correlations among team-level variables.
Mean SD (1) (2) (3) (4) (5) (6) (7) (8)
(1) Team tenure 3.83 0.864
(2) Gender diversity 0.29 0.180 .06
(3) Functional diversity 0.69 0.209 .11 .02
(4) Team size 10.82 6.388 .03 .21 .04
(5) Geographic dispersion 0.27 0.445 .14 .04 .07 .07
(6) Leader gender (1 = female) 0.30 0.463 .13 .39** .11 .24* .08
(7) Cohesion 5.71 0.494 .29** .13 .23* .01 .04 .04
(8) Cooperative learning 4.98 0.486 .03 .00 .20 .10 .02 .06 .55**
(9) Participative communication 5.55 0.448 .18 .04 .20 .20 .04 .01 .62** .74**
*Correlation is significant at the 0.05 level (two-tailed).
**Correlation is significant at the 0.01 level (two-tailed).
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functional diversity increases. The results fail to support Hypothesis 1b and c, as the coefficient 
correlates for the
interaction terms between leader gender and team size are not statistically significant in 
explaining team variance
in cooperative learning (? =.09, p>.10), and cooperative participation (? = 0.23, p>.10) as shown 
in Table 3
(model 1) and Table 4 (model 1), respectively.
To further examine the interaction between leader gender and functional diversity as it relates to 
cohesion, I plotted
the relationship between leader gender and cohesion at high and low values of functional diversity 
(one standard
Table 2. Random intercept model of cohesion, with level-1 covariates.
Main effect model Model 1 Model 2 Model 3 Model 4
ßs ßs ßs ßs ßs
Intercept 5.73*** 5.71*** 5.71*** 5.74*** 5.71***
Team tenure 0.18*** 0.17*** 0.17** 0.18*** 0.17†
Gender diversity 0.34 0.20 0.43 0.39 0.33
Functional diversity 0.43† 0.76*** 0.45† 0.41 0.77***
Team size 0.00 0.00 0.02† 0.00 0.02†
Geographic dispersion 0.10 0.08 0.09 0.17 0.13
Leader gender (1 = female) 0.07 0.04 0.05 0.00 0.04
Leader gender * functional diversity 1.79*** 1.82***
Leader gender * team size 0.03* 0.03**
Leader gender * geographic dispersion 0.22 0.18
?2 25.0 28.2 23.9 23.6 25.8
Model deviance 100.9 92.4 98.1 100.0 88.1
Decrease in deviance 13.8* a 8.5** b 2.8† b 0.9b 12.8** b
Pseudo level-1 R2 0.16 0.10 0.03 0.01 0.14
Note: for teams, n = 82, for organizations, n = 29. Entries corresponding to the predicting 
variables are estimations of fixed effects.
***p<0.001. **p<.01. *p<.05. †p<0.1.
aDecrease in deviance in comparison to null model.
bDecrease in deviance in comparison to main effect model.
Table 3. Random intercept model of cooperative learning, with level-1 covariates.
Main effect model Model 1 Model 2 Model 3 Model 4
ßs p-value ßs p-value ßs p-value ßs p-value ßs p-value
Intercept 4.94*** 4.94*** 4.92*** 4.98*** 4.96***
Team tenure 0.01 0.01 0.01 0.01 0.01
Gender diversity 0.04 0.04 0.08 0.06 0.18
Functional diversity 0.50† 0.49† 0.53* 0.47 0.49*
Team size 0.01* 0.01* 0.03** 0.01* 0.03**
Geographic dispersion 0.01 0.01 0.01 0.16 0.14
Leader gender (1 = female) 0.13 0.13 0.10 0.02 0.04
Leader gender * functional diversity 0.09 0.06
Leader gender * team size 0.04* 0.04*
Leader gender * geographic dispersion 0.44* 0.42*
?2 20.1 20.1 19.0 19.2 16.7
Model deviance 108.6 108.6 103.7 105.6 100.7
Decrease in deviance 5.2a 0.0b 4.9* b 3.0† b 7.9* b
Pseudo level-1 R2 0.06 0.00 0.06 0.04 0.09
Note: for teams, n = 82, for organizations, n = 29. Entries corresponding to the predicting 
variables are estimations of fixed effects.
***p<0.001. **p<.01. *p<.05. †p<0.1.
aDecrease in deviance in comparison to null model.
bDecrease in deviance in comparison to main effect model.
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deviation above and below the mean), following the procedures described by Preacher and colleagues 
(2003). As
shown in Figure 2, among more functionally diverse teams (as compared with more homogeneous teams), 
those
led by women report more cohesion than those led by men.
Hypothesis 2 predicted that as team size increases, female-led teams report more (H2a) cohesion, 
(H2b) cooperative
learning, and (H2c) participative communication than teams led by men. Supporting Hypothesis 2a, b, 
and
c, the results indicate that among larger teams (as compared with smaller ones), women-led teams 
report more
cohesion (? = .03, p = .05), more cooperative learning (? = .04, p = .05), and more participative 
communication
(? = .03, p = .05) than men-led teams, as shown in the model 2 columns of Tables 2–4, respectively. 
To evaluate
the robustness of these results, I conducted the HLM analysis with the reduced set of teams for 
which the rwg(J) for
cohesion, cooperative learning, and participative communication were above 0.70. The robustness 
analyses show
a similar pattern of results, with female-led teams reporting more cohesion (? = .03, p = .01), 
cooperative learning
(? = .05, p = .01), and participative communication (? = .04, p = .001) than male-led teams as team 
size increases,
thus strengthening the support for Hypothesis 2a, b, and c. To further examine the interaction 
between leader
Table 4. Random intercept model of participative communication, with level-1 covariates.
Main effect model Model 1 Model 2 Model 3 Model 4
ßs ßs ßs ßs ßs
Intercept 5.54 *** 5.54*** 5.52*** 5.60*** 5.58***
Team tenure 0.08 0.08 0.08 0.09† 0.09†
Gender diversity 0.10 0.12 0.02 0.10 0.15
Functional diversity 0.46** 0.51** 0.47** 0.35* 0.40*
Team size 0.02** 0.02* 0.03*** 0.01* 0.03**
Geographic dispersion 0.06 0.05 0.05 0.26* 0.25†
Leader gender (1 = female) 0.07 0.07 0.05 0.12 0.14
Leader gender * functional diversity 0.23 0.18
Leader gender * team size 0.03* 0.02*
Leader gender * geographic dispersion 0.63** 0.62**
?2 36.0 36.6 37.5 27.3 26.9
Model deviance 90.3 90.1 87.5 82.9 80.5
Decrease in deviance 10.4† a 0.2b 2.8† b 7.4** b 9.8* b
Pseudo level-1 R2 0.11 0.01 0.03 0.10 0.12
Note: for teams, n = 82, for organizations, n = 29. Entries corresponding to the predicting 
variables are estimations of fixed effects.
***p<0.001. **p<.01. *p<.05. †p<0.1.
aDecrease in deviance in comparison to null model.
bDecrease in deviance in comparison to main effect model.
Figure 2. Leader gender differences in mean team cohesion as function of team functional diversity
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gender and team size, I plotted the relationships between leader gender and cohesion, cooperative 
learning, and
participative communication at high and low values of team size (Preacher, Curran, & Bauer, 2003). 
As shown
in Figure 3, on large teams (as compared with small teams) women-led teams report more cohesion 
(panel A),
cooperative learning (panel B), and participative communication (panel C) than men-led teams.
Hypothesis 3 predicted that among geographically dispersed teams (as compared with co-located 
teams) femaleled
teams report more (H3a) cohesion, (H3b) cooperative learning, and (H3c) participative communication 
than
teams led by men. The results in Table 3 (model 3) and Table 4 (model 3) show that among 
geographically dispersed
Figure 3. Leader gender differences in team outcomes as function of team size. Male and female 
means for cohesion (A), cooperative
learning (B) and participative communication (C)
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teams, those led by women report more cooperative learning (? = .44, p = .05) and more 
participative communication
(? = .63, p = .01), supporting Hypothesis 3b and 3c. The results fail to support Hypothesis 3a, as 
the coefficient
correlate for the interaction between team geographic dispersion and female leadership did not 
explain a statistically
significant amount of variance in cohesion across teams (? = .22, p>.10). To assess the robustness 
of these results, I
conducted the HLM analysis with the reduced set of teams for which the rwg(J) for cohesion, 
cooperative learning,
and participative communication were above 0.70. The robustness analyses show a similar pattern of 
results, with
female-led teams reporting more cooperative learning (? =.51, p= .01) and participative 
communication (? =.64, p= .01)
than male-led teams among geographically dispersed teams. To further examine the interaction 
between leader
gender and team geographic dispersion, I plotted the means, for female-led and male-led teams, in 
cooperative learning
and in participative communication for collocated and geographically dispersed teams (Preacher et 
al., 2003). As shown
in Figure 4, among dispersed teams, those led by women teams report more cooperative learning 
(panel A) and more
participative communication (panel B) than those led by men.
Discussion, Limitations, and Implications
The main purpose of this paper was to understand to what extent and in what contexts female 
leadership may
be advantageous for teams. This study contributes to the debate on the female advantage in 
leadership, not only
Figure 4. Leader gender differences in team outcomes as function of team geographic dispersion. 
Male and female means for
cooperative learning (A) and participative communication (B)
1166 C. POST
Copyright © 2015 John Wiley & Sons, Ltd. J. Organiz. Behav. 36, 1153–1175 (2015)
DOI: 10.1002/job
by identifying characteristics of teams (functional diversity, size, and geographic dispersion) for 
which the
relationship between female leadership and team outcomes is more positive but also by examining the 
quality
of the relationships between team members and their team and team interaction norms (rather than 
team performance)
as outcomes of leader gender. Drawing on the research on gender differences in relational self-
construal
(Cross & Madson, 1997; Eagly & Wood, 1999; Eagly et al., 2000), I proposed that leader gender 
interacts with
team coordination requirements (i.e., functional diversity, size, and geographic dispersion) to 
affect the quality
of the relationship between individual team members and their team and team interaction norms. I 
argued that,
as team coordination requirements increase (e.g., with functional diversity, team size, and when 
members are geographically
dispersed) teams led by women experience more cohesion and report more cooperative learning and
participative communication than those led by men. I reasoned that female leaders, because they are 
more likely
than male leaders, on average, to have a relational self-construal (Cross & Madson, 1997; Eagly & 
Wood, 1999;
Eagly et al., 2000), are therefore more likely to successfully attend to the coordination 
challenges presented by
more functionally diverse teams, larger teams, and teams with geographically dispersed members. 
Results from the
analysis of 82 innovation teams provide support for this contextual model of a female leadership 
advantage: they
show that (i) as functional diversity increases, teams led by women report more cohesion compared 
with similar
teams led by men; (ii) as team size increases, female-led teams report more cohesion, cooperative 
learning, and
participative learning as compared with similar teams led by men; and (iii) geographically 
dispersed teams led by
women report more cooperative learning and participative communication than similarly dispersed 
teams led
by men.