Wilson Computer Ratings team analysis
Augsburg (14-7)


Augsburg's opponents in order of rating:
     Team            Rating        Score  Effect  W- L
   ---------------   ------       ------- ------ -----
   Randolph-Macon     556.2 LOSS   49-85         19- 2 Division III
   Gustav Adolphus    553.9 LOSS   88-101        21- 1 Division III
   Cncrdia-Mhd        468.5 LOSS   73-87         16- 6 Division III
   St. John's, Minn.  460.7 LOSS   81-84         12-11 Division III
   Central (Iowa)     457.7 LOSS   73-81         11-10 Division III
   Hamline            440.3 LOSS   56-80         12- 9 Division III
   Carleton           421.5 LOSS   81-85         12-10 Division III
>> Augsburg           457.1 <<                   14- 7 Division III
   St. Olaf           462.4 WIN   101-77    ++   15- 7 Division III
   Hamline            440.3 WIN    77-63    +    12- 9 Division III
   Simpson (IA)       428.0 WIN    80-69    +     7-13 Division III
   Wis.-Stout         426.5 WIN    81-77    +     8-14 Division III
   Bethel, Minn.      407.3 WIN    72-64    +    10-12 Division III
   Marian (WI)        396.2 WIN    70-66    +    12-10 Division III
   Minnesota-Morris   386.4 WIN    78-73    +    11-12 Division III
   Macalester         383.5 WIN   102-70    +     7-15 Division III
   St. Scholastica    382.8 WIN    82-60    +     6-18 Division III
   St. Scholastica    382.8 WIN    95-70    +     6-18 Division III
   Ramapo             370.5 WIN    80-73    +     5-17 Division III
   Martin Luther      361.9 WIN    91-89         10-14 Division III
   Northwestern (MN)  351.5 WIN    87-55          6-15 Division III
   St. Mary's, MN     310.3 WIN    74-61    -     1-20 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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