North Texas plays Tulane in AAC Tournament

Wed, Mar 13, 2024
NCAAB News (AP)

North Texas plays Tulane in AAC Tournament

Tulane Green Wave (14-16, 5-13 AAC) vs. North Texas Mean Green (17-13, 10-8 AAC)

Fort Worth, Texas; Thursday, 7 p.m. EDT

BOTTOM LINE: North Texas and Tulane play in the AAC Tournament.

The Mean Green are 10-8 against AAC opponents and 7-5 in non-conference play. North Texas has a 2-6 record in games decided by less than 4 points.

The Green Wave's record in AAC games is 5-13. Tulane scores 82.3 points and has outscored opponents by 2.3 points per game.

North Texas' average of 8.2 made 3-pointers per game is 1.1 fewer made shots on average than the 9.3 per game Tulane allows. Tulane has shot at a 47.7% rate from the field this season, 7.0 percentage points greater than the 40.7% shooting opponents of North Texas have averaged.

TOP PERFORMERS: Jason Edwards is shooting 43.3% and averaging 19.2 points for the Mean Green. John Buggs III is averaging 2.3 made 3-pointers over the last 10 games.

Jaylen Forbes is shooting 35.5% from beyond the arc with 2.6 made 3-pointers per game for the Green Wave, while averaging 14.2 points and 1.5 steals. Kevin Cross is averaging 18.2 points, 6.4 rebounds and 4.7 assists over the last 10 games.

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LAST 10 GAMES: Mean Green: 5-5, averaging 70.2 points, 31.2 rebounds, 11.1 assists, 7.2 steals and 2.9 blocks per game while shooting 44.5% from the field. Their opponents have averaged 66.7 points per game.

Green Wave: 2-8, averaging 76.5 points, 33.1 rebounds, 13.4 assists, 6.2 steals and 4.6 blocks per game while shooting 45.6% from the field. Their opponents have averaged 81.5 points.

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The Associated Press created this story using technology provided by Data Skrive and data from Sportradar.

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