Wilson Computer Ratings team analysis
Oberlin (10-11)


Oberlin's opponents in order of rating:
     Team            Rating        Score  Effect  W- L
   ---------------   ------       ------- ------ -----
   John Carroll       512.6 LOSS   69-86         17- 5 Division III
   Denison            501.6 LOSS   55-63         14- 7 Division III
   Denison            501.6 LOSS   68-81         14- 7 Division III
   DePauw             500.2 LOSS   66-75         15- 7 Division III
   Wabash             491.4 LOSS   78-82         14- 7 Division III
   Cal Lutheran       454.5 LOSS   51-57         11-11 Division III
   Kenyon             444.2 LOSS   72-78         10-12 Division III
   Ohio Weslyn        425.4 LOSS   69-75          6-17 Division III
   Wooster            424.6 LOSS   58-72          7-15 Division III
   Wooster            424.6 LOSS   66-74          7-15 Division III
   Adrian             362.0 LOSS   57-63          4-18 Division III
>> Oberlin            428.0 <<                   10-11 Division III
   DePauw             500.2 WIN    72-64    ++   15- 7 Division III
   Wittenberg         489.7 WIN    54-45    ++   15- 6 Division III
   Wilmington (OH)    430.8 WIN    83-75    ++    9-12 Division III
   Ohio Weslyn        425.4 WIN    69-57    +     6-17 Division III
   Allegheny          407.6 WIN    72-60    +     9-13 Division III
   Sarah Lawr.        380.7 WIN    72-62    +    13- 9 Division III
   Waynesburg         379.7 WIN   108-69    +     7-16 Division III
   Kalamazoo          351.3 WIN    79-56    +     3-18 Division III
   Beloit             349.3 WIN    57-43    +     5-17 Division III
   Medgar Evers       193.1 WIN    91-72    --    0-22 Division III

Games against teams within about 100 rating points are often the best indicators of a team's actual strength.

"Effect" ranges from "---", a game that caused a large decrease in the team rating, to "+++", a game that produced a large increase in rating.

Note that wins over very weak teams may actually hurt a team's rating (the opposite is true for losses to very good teams).

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