๐ŸŽ‚ Birthday Paradox ยท Sports
โ† All sports

Olympic Football (Football)

Team

429 team lists ยท 7,160 player entries ยท avg team size 16.7

Read this sport as a comparison between raw coincidence and what team size alone predicts. Here, the real rate is +6.3 points above the birthday-paradox baseline.

Real team lists
36.8%
teams with shared birthdays
Why it matters: This is the headline rate, but it should never be read without team size.
Expected from size
30.5%
from avg team size
Why it matters: This is the fair baseline: what same-size random teams would do.
Gap from expected
+6.3 points
real โˆ’ expected
Why it matters: Positive means the sport has more birthday matches than size alone predicts.
Team lists
429
teams analysed
Why it matters: Enough team lists for a useful sport-level read.
What to notice: The best question on a sport page is not "is the real rate high?" but "is it high after accounting for team size?" That is what the gap card is answering.

Country comparison

Countries with the most team lists for Olympic Football (Football), charted by the share of teams with at least one shared birthday.

What to compare: This view is best for spotting sample-shape differences inside a sport. Among the highest-sample countries, JPN has the highest observed rate, with an average team size of 25.0.

Gender split inside this sport

Real and expected rates for labelled team lists in this sport.

Why it matters: The gender gap is mostly a team-size story. Women have the larger average team size here (24.4 athletes), so their birthday-match rate naturally rises.

By country

Top 40 countries by team-list count.

CountryTeam listsAvg playersReal
USA1818.244.4%
SWE1617.150.0%
FRA1515.046.7%
ITA1516.320.0%
BRA1523.853.3%
MEX1216.925.0%
GER1218.533.3%
ESP1117.145.5%
GBR1116.336.4%
JPN1125.063.6%
KOR1116.363.6%
YUG1114.927.3%
DEN1014.530.0%
EGY913.811.1%
HUN915.022.2%
NED915.344.4%
ARG918.255.6%
AUS922.933.3%
NOR814.825.0%
NGR820.937.5%
CHN817.525.0%
POL715.014.3%
CAN717.028.6%
MAR614.050.0%
URS617.083.3%
GHA615.750.0%
COL619.566.7%
LUX612.016.7%
BEL514.00.0%
TCH516.420.0%
BUL514.020.0%
CHI514.860.0%
TUR57.420.0%
IRQ516.080.0%
HON518.00.0%
TUN416.050.0%
CMR416.325.0%
FIN412.875.0%
IND48.80.0%
POR416.350.0%
What to notice: Countries with larger average teams will naturally show more shared birthdays. The country list is most useful for finding which samples are driving this sport's overall rate.

By gender

Where the dataset records it.

GenderTeam listsRealExpectedGap
Women6956.5%52.0%+4.5 points
Men36033.1%26.4%+6.6 points

Sample team lists

Largest teams in the dataset.

TeamSeasonPlayersRepeatsExpected chance
BRA Football (Football) (2020 Summer) ยท BRA2020 Summer44493.3%
AUS Football (Football) (2020 Summer) ยท AUS2020 Summer41490.3%
NZL Football (Football) (2020 Summer) ยท NZL2020 Summer40389.1%
JPN Football (Football) (2004 Summer) ยท JPN2004 Summer37284.9%
BRA Football (Football) (2016 Summer) ยท BRA2016 Summer36383.2%
NZL Football (Football) (2012 Summer) ยท NZL2012 Summer36483.2%
BRA Football (Football) (2000 Summer) ยท BRA2000 Summer35281.4%
BRA Football (Football) (2008 Summer) ยท BRA2008 Summer35181.4%
JPN Football (Football) (2008 Summer) ยท JPN2008 Summer35281.4%
CHN Football (Football) (2008 Summer) ยท CHN2008 Summer35381.4%
What to notice: The sample team lists show the mechanics: once the player count gets large, the expected chance climbs quickly, and each repeat is another player landing on a date already present.