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  CECAFA Cup 2019 @ Uganda

Group A

# Team GP W T L GF GA Diff Pts Pts/G W% ØGF ØGA
1. Uganda 4 4 0 0 10 2 +8 12 3.00 100% 2.50 0.50
2. Eritrea 4 2 1 1 4 2 +2 7 1.75 50% 1.00 0.50
3. Somalia 4 1 2 1 1 2 -1 5 1.25 25% 0.25 0.50
4. Djibouti 4 1 1 2 3 8 -5 4 1.00 25% 0.75 2.00
5. Burundi 4 0 0 4 2 6 -4 0 0.00 0% 0.50 1.50

Group B
# Team GP W T L GF GA Diff Pts Pts/G W% ØGF ØGA
1. Kenya 3 3 0 0 4 1 +3 9 3.00 100% 1.33 0.33
2. Tanzania 3 1 1 1 1 1 0 4 1.33 33% 0.33 0.33
3. Sudan 3 0 2 1 2 3 -1 2 0.67 0% 0.67 1.00
4. Zanzibar 3 0 1 2 1 3 -2 1 0.33 0% 0.33 1.00


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Mouseover percentages (%) to see value odds

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Thursday 19. December 2019
   
CECAFA Cup - Playoffs - Finals2019 Odds 1x2
Uganda    3 - 0    Eritrea1.225.0210.99
CECAFA Cup - Playoffs - Bronze2019 Odds 1x2
Kenya    2 - 1    Tanzania1.863.363.65
   
Tuesday 17. December 2019
   
CECAFA Cup - Playoffs - 1/2 Finals2019 Odds 1x2
Uganda    1 - 0    Tanzania1.663.434.71
Kenya    1 - 4    Eritrea1.324.398.11
   
Sunday 15. December 2019
   
CECAFA Cup - Group A2019 Odds 1x2
Uganda    4 - 1    Djibouti1.255.108.76
Somalia    0 - 0    Eritrea3.583.151.96
   
Saturday 14. December 2019
   
CECAFA Cup - Group B2019 Odds 1x2
Sudan    0 - 0    Tanzania3.312.982.14
Kenya    1 - 0    Zanzibar1.743.344.43
   
Friday 13. December 2019
   
CECAFA Cup - Group A2019 Odds 1x2
Burundi    0 - 1    Somalia2.653.332.32
Djibouti    0 - 3    Eritrea2.073.093.37
   
Wednesday 11. December 2019
   
Eritrea    0 - 2    Uganda
Burundi    1 - 2    Djibouti1.813.284.02
   
Tuesday 10. December 2019
   
CECAFA Cup - Group B2019 Odds 1x2
Tanzania   1 - 0   Zanzibar1.773.224.39
Sudan    1 - 2    Kenya3.483.102.03
   
Monday 9. December 2019
   
CECAFA Cup - Group A2019 Odds 1x2
Somalia    0 - 2    Uganda11.707.901.12
Burundi    0 - 1    Eritrea1.344.317.59
   
Sunday 8. December 2019
   
CECAFA Cup - Group B2019 Odds 1x2
Kenya    1 - 0    Tanzania
Zanzibar    1 - 1    Sudan3.503.331.92
   
Saturday 7. December 2019
   
CECAFA Cup - Group A2019 Odds 1x2
Uganda    2 - 1    Burundi1.185.6212.69
Djibouti    0 - 0    Somalia2.493.042.66

More Results


December 2019

Burundi
Djibouti
Eritrea
Kenya
Somalia
Sudan
Tanzania
Uganda
Zanzibar


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# Team GP W T L GF GA Diff Pts Pts/G W% ØGF ØGA
1. Uganda 6 6 0 0 14 2 +12 18 3.00 100% 2.33 0.33
2. Kenya 5 4 0 1 7 6 +1 12 2.40 80% 1.40 1.20
3. Eritrea 6 3 1 2 8 6 +2 10 1.67 50% 1.33 1.00
4. Somalia 4 1 2 1 1 2 -1 5 1.25 25% 0.25 0.50
5. Tanzania 5 1 1 3 2 4 -2 4 0.80 20% 0.40 0.80
6. Djibouti 4 1 1 2 3 8 -5 4 1.00 25% 0.75 2.00
7. Sudan 3 0 2 1 2 3 -1 2 0.67 0% 0.67 1.00
8. Zanzibar 3 0 1 2 1 3 -2 1 0.33 0% 0.33 1.00
9. Burundi 4 0 0 4 2 6 -4 0 0.00 0% 0.50 1.50

-
Season Games 1 x 2  ¦  1 2  ¦  Over 2.5 Under 2.5 Over 1.5 Under 1.5 Home Advantage
2019Group Stage16 31.3% 25.0% 43.8%  ¦  41.7% 58.3%  ¦  31.3% 68.8% 50.0% 50.0% -16.7%
2019Playoffs4 75.0% 0.0% 25.0%  ¦  75.0% 25.0%  ¦  75.0% 25.0% 75.0% 25.0% 50.0%
2017Group Stage16 43.8% 43.8% 12.5%  ¦  77.8% 22.2%  ¦  37.5% 62.5% 50.0% 50.0% 55.6%
2017Playoffs4 0.0% 50.0% 50.0%  ¦  50.0% 50.0%  ¦  50.0% 50.0% 75.0% 25.0% 0.0%
2015Group Stage18 44.4% 16.7% 38.9%  ¦  53.3% 46.7%  ¦  44.4% 55.6% 77.8% 22.2% 6.7%
2015Playoffs8 25.0% 75.0% 0.0%  ¦  62.5% 37.5%  ¦  0.0% 100.0% 37.5% 62.5% 25.0%
2013Group Stage18 61.1% 11.1% 27.8%  ¦  68.8% 31.3%  ¦  33.3% 66.7% 55.6% 44.4% 37.5%
2013Playoffs8 25.0% 50.0% 25.0%  ¦  37.5% 62.5%  ¦  12.5% 87.5% 50.0% 50.0% -25.0%
1999-2000Regular Season15 60.0% 40.0% 0.0%  ¦  100.0% 0.0%  ¦  26.7% 73.3% 46.7% 53.3% 100.0%
1996Regular Season6 50.0% 33.3% 16.7%  ¦  75.0% 25.0%  ¦  33.3% 66.7% 83.3% 16.7% 50.0%
1995Regular Season11 36.4% 36.4% 27.3%  ¦  57.1% 42.9%  ¦  45.5% 54.5% 63.6% 36.4% 14.3%
1994Regular Season13 69.2% 15.4% 15.4%  ¦  81.8% 18.2%  ¦  46.2% 53.8% 53.8% 46.2% 63.6%
1992Regular Season14 50.0% 21.4% 28.6%  ¦  63.6% 36.4%  ¦  64.3% 35.7% 78.6% 21.4% 27.3%
1991Regular Season13 46.2% 15.4% 38.5%  ¦  54.5% 45.5%  ¦  46.2% 53.8% 69.2% 30.8% 9.1%
1990Regular Season13 23.1% 38.5% 38.5%  ¦  37.5% 62.5%  ¦  38.5% 61.5% 61.5% 38.5% -25.0%
1989Regular Season1 100.0% 0.0% 0.0%  ¦  100.0% 0.0%  ¦  100.0% 0.0% 100.0% 0.0% 100.0%
1988Regular Season16 37.5% 31.3% 31.3%  ¦  54.5% 45.5%  ¦  31.3% 68.8% 56.3% 43.8% 9.1%
1987Regular Season14 35.7% 50.0% 14.3%  ¦  71.4% 28.6%  ¦  35.7% 64.3% 64.3% 35.7% 42.9%
1985Regular Season10 60.0% 30.0% 10.0%  ¦  85.7% 14.3%  ¦  40.0% 60.0% 60.0% 40.0% 71.4%
1984Regular Season16 62.5% 25.0% 12.5%  ¦  83.3% 16.7%  ¦  37.5% 62.5% 68.8% 31.3% 66.7%
1983Regular Season20 65.0% 20.0% 15.0%  ¦  81.3% 18.8%  ¦  40.0% 60.0% 70.0% 30.0% 62.5%
1982Regular Season13 61.5% 30.8% 7.7%  ¦  88.9% 11.1%  ¦  46.2% 53.8% 84.6% 15.4% 77.8%
1981Regular Season14 50.0% 28.6% 21.4%  ¦  70.0% 30.0%  ¦  50.0% 50.0% 64.3% 35.7% 40.0%
1980Regular Season13 53.8% 15.4% 30.8%  ¦  63.6% 36.4%  ¦  30.8% 69.2% 46.2% 53.8% 27.3%
1979Regular Season12 50.0% 33.3% 16.7%  ¦  75.0% 25.0%  ¦  75.0% 25.0% 91.7% 8.3% 50.0%
1978Regular Season14 71.4% 7.1% 21.4%  ¦  76.9% 23.1%  ¦  57.1% 42.9% 78.6% 21.4% 53.8%
1977Regular Season12 58.3% 25.0% 16.7%  ¦  77.8% 22.2%  ¦  41.7% 58.3% 41.7% 58.3% 55.6%
1976Regular Season12 66.7% 25.0% 8.3%  ¦  88.9% 11.1%  ¦  50.0% 50.0% 83.3% 16.7% 77.8%
1975Regular Season10 50.0% 20.0% 30.0%  ¦  62.5% 37.5%  ¦  60.0% 40.0% 70.0% 30.0% 25.0%
1974Regular Season5 40.0% 60.0% 0.0%  ¦  100.0% 0.0%  ¦  20.0% 80.0% 60.0% 40.0% 100.0%
1973Regular Season8 62.5% 12.5% 25.0%  ¦  71.4% 28.6%  ¦  62.5% 37.5% 87.5% 12.5% 42.9%
1969Regular Season12 75.0% 0.0% 25.0%  ¦  75.0% 25.0%  ¦  83.3% 16.7% 83.3% 16.7% 50.0%
1967Regular Season6 100.0% 0.0% 0.0%  ¦  100.0% 0.0%  ¦  83.3% 16.7% 100.0% 0.0% 100.0%

Click on any column to sort table
Mouseover percentages (%) to see value odds

AnnaBet Power Ratings

Updated 2025-04-19 11:58:51
#Team Rating
1. Uganda 1087
2. Zanzibar 1087
3. Sudan 1028
4. Tanzania 989
5. Kenya 952
6. Eritrea 873
7. Burundi 831
8. Djibouti 623
9. Somalia 581


Our ratings are currently calculated from games played after 1.1.2000

In football our ratings are similar to World Football Elo Ratings but we have tuned up the formula. For example when goal difference is low or game is tied and we have shots on goal statistics available for the game, we’ll then analyze the shots ratio to have some effect on the ratings. For example if a game was tied 1-1 but home team outshoot away team by 10-2 you might say the home team was the better team despite the result.

In ice hockey the ratings are similar but we have taken account the higher number of goals scored and “home” team (first mentioned team) line change advantage. For example if ice hockey game Sweden – Finland was played at Finland but Sweden had the line change advantage it is then taken account when calculating ratings.

Some examples how ratings are adjusted after each game

In the beginning each team has starting rating of 1000 points. After each game played the sum of points change is 0: if home team gets +20 points then away team gets -20 pts deducted. Amount is always based on the weight/importance of the tournament: in friendlies teams get much less points than in World Cup finals.

Two equal teams meet: winner gets some decent points and loser looses the same amount. Example +20 / -20.
Heavy favorite (much higher rating) wins by few goals: gets only few points because it was very expected result. Your points rises very slowly by beating much poorer teams than you. Example +3 / -3.
Heavy favorite ties a game: favorite loses small amount of points because it was expected that the team should win, the opponent get some points. Example -3 / +3 points.
Heavy favorite loses a game: loses lots of rating points, winner gets lots of points. Example -40 / +40.

Sample Winning Expectancies

Difference
in Ratings
Higher
Rated
Lower
Rated
0 0.500 0.500
10 0.514 0.486
20 0.529 0.471
30 0.543 0.457
40 0.557 0.443
50 0.571 0.429
60 0.585 0.415
70 0.599 0.401
80 0.613 0.387
90 0.627 0.373
100 0.640 0.360
110 0.653 0.347
120 0.666 0.334
130 0.679 0.321
140 0.691 0.309
150 0.703 0.297
160 0.715 0.285
170 0.727 0.273
180 0.738 0.262
190 0.749 0.251
200 0.760 0.240

Table by Eloratings.net

Why are Power Ratings better than winning percentage or league table?

Let’s say we have 2 teams whose performance we are analyzing: Finland and Sweden. Both teams have played 8 games and Finland has 6 wins and 2 losses, Sweden 5 wins and 3 losses. You might say Finland is the better team based on that info? What if Finland has won 4 games against poor teams, 2 against mediocre and lost 2 against better teams. Sweden on the other hand had win 3 games against better teams, 2 against mediocre and then 3 narrow losses against mediocre teams. Putting it that way, you might not believe Finland should be a favorite here after all. Would our Power Ratings tell you the exactly same thing:

Finland starting rating 1000:

1. game 4-0 win against poor team +10 pts (1010)
2. game 3-1 win against poor team +6 pts (1016)
3. game 0-2 loss against better team -10 pts (1006)
4. game 4-3 win against mediocre team +15 pts (1021)
5. game 5-3 win against mediocre team +18 pts (1039)
6. game 3-5 loss against better team -10 pts (1029)
7. game 2-0 win against poor team +6 pts (1035)
8. game 5-2 win against poor team +8 pts (1043)
Current rating 1043

Sweden starting rating 1000:

1. game 3-2 win against better team +25 pts (1025)
2. game 2-3 loss against mediocre team -12 pts (1013)
3. game 4-2 win against better team +30 pts (1043)
4. game 3-0 win against mediocre team +20 pts (1063)
5. game 3-5 loss against mediocre team -15 pts (1048)
6. game 3-4 loss against mediocre team -12 pts (1036)
7. game 4-1 win against better team +35 pts (1071)
8. game 3-1 win against mediocre team +16 pts (1087)
Current rating 1087

These are just rough examples for you to get the idea.

Finland vs Sweden Power Ratings: 1043 – 1087, ratings difference 44 and by looking at the table above you can see that this game should be about Finland 46% winning chance and Sweden 54%. Note that home advantage is usually about 100 points so 46%-54% would be only at neutral venue.

It is not always about how many games you have won but rather which teams and by how many goals that tells more about your true Power. But still remember these are only computer calculated estimations and does not take account real world situations like injuries, weather etc. Also note Power Ratings being much less accurate when teams have a big difference between number of games played and/or quality/diversity of tournaments where they have played.

For example in ice hockey USA and Canada plays only few friendly matches before major tournaments and European teams plays a lots of smaller tournaments - and also playing many games against couple of selected opponents only. Smaller tournaments and friendly matches makes of course smaller changes to Power Ratings than major tournaments but when you play a lot of smaller games it can add up.