USC at UCLA Week 13 College Football Matchup USC at UCLA Matchup - Week 13
Sat, Nov 28 2026 · Week 13 · 🏟 Rose Bowl Pasadena, CA · Turf · 92,542 cap
Away
VS
Home
Preseason projection — This game has not yet been played and 2026 in-season data is not yet available. Edges are based on 2025 full-season performance. Confidence will increase once in-season games are logged.
📊 Punt & Rally Projection
USC
32
UCLA
23
P&R Line USC -8.5
P&R Total O/U 55
Confidence 69 Good
Matchup Prediction
USC has the edge in this matchup
Both Momentum Control (CSS) and Game Control metrics favor USC entering this game.
Momentum Control
73.7%
USC wins
Solid
Game Control
75.9%
USC wins
Solid
Advanced Stats
All 4 factors agree → USC · 83.1% ATS historically when all four align
↓ See full breakdown
USC 2026 Schedule
USC's 2026 Schedule
DateMatchupSpreadTotalResultO/UCover
Sat 8/29USC vs San José State-31.5
Sat 9/5USC vs Fresno State-17.5
Sat 9/12USC vs Louisiana-26.5
Sat 9/19USC at Rutgers-15
Sat 9/26USC vs Oregon+5.5
Sat 10/3USC vs Washington-4.5
Sat 10/10USC at Penn State-1
— Bye Week —
Sat 10/24USC at Wisconsin-16.5
Sat 10/31USC vs Ohio State+9
— Bye Week —
Sat 11/14USC at Indiana+14.5
Sat 11/21USC vs Maryland-17
Sat 11/28USC at UCLA-8.5
UCLA 2026 Schedule
UCLA's 2026 Schedule
DateMatchupSpreadTotalResultO/UCover
Sat 9/5UCLA at California+3.553.5
Sat 9/12UCLA vs San Diego State-3.5
Sat 9/19UCLA vs Purdue-13.5
Sat 9/26UCLA at Maryland-1
— Bye Week —
Sat 10/10UCLA at Oregon+21.5
Sat 10/17UCLA vs Wisconsin-10.5
Sat 10/24UCLA vs Michigan State-11
Sat 10/31UCLA vs Nevada-26
Sat 11/7UCLA at Minnesota+0
Sat 11/14UCLA vs Illinois+2
Sat 11/21UCLA at Michigan+11.5
Sat 11/28UCLA vs USC+8.5
Advanced Stats
Advanced Analytics Matchup
Matchup-adjusted (offense vs opponent defense) · 2025 season (prior year)
USC PPA Edge
Agreement Signals — When All Metrics Agree
Elite · 83.1% ATS
PPA + PPO + SR + Havoc
All 4 Agree
→ USC
Elite · 82.4% ATS
PPA + PPO + Havoc
3 Agree
→ USC
Elite · 73.9% ATS
PPA + Success Rate
Both Agree
→ USC
Individual Factors — Ranked by Predictive Strength
PPA Overall
Points added per play · Elite predictor
USC #7
+0.582
UCLA #96
+0.280
USC Edge
PPA Passing
Pass efficiency edge · Strong predictor
USC #4
+0.852
UCLA #126
+0.279
USC Edge
Havoc Total
Def. disruption rate · Strong predictor
USC #63
0.159
UCLA #130
0.120
TFLs, sacks, PBUs, forced fumbles — higher is better
USC Edge
Points Per Opp
Drive-finishing edge · Strong predictor
USC #10
+9.264
UCLA #124
+6.514
USC Edge
Success Rate
Play consistency edge · Solid predictor
USC #11
+0.992
UCLA #75
+0.873
USC Edge
Field Position
Avg start (lower=better) · Solid predictor
USC #120
72.8
UCLA #129
73.6
Avg yards from own endzone to average start — lower is better · longer bar = better field position
USC Edge
Advanced stats sourced from CFBD · 2025 season (prior year — 2026 data not yet available) · Edges are matchup-adjusted (offense vs opponent defense)
Power Ratings
Team Power Ratings
Overall · Offense · Defense ratings · Updated as season progresses
USC Rated Higher
Overall Power Rating
USC #13
17.0
UCLA #34
6.6
Offense Rating
USC #9
26.2
UCLA #26
19.6
Defense Rating (lower = better defense)
USC #21
9.1
UCLA #44
12.9
Power ratings updated throughout the season as results accumulate
Momentum Control (CSS)
Consecutive Scoring Sequences Who builds scoring momentum? USC Edge
Avg sequences created per game
USC #11
2.00
UCLA #89
0.67
Avg sequences allowed per game (lower is better)
USC #7
0.31
UCLA #119
2.08
USC +1.33
CSS Edge (season-to-date)
Teams with this edge win 73.7% of games historically
Based on 2025 full season · preseason estimate
Game Control (GC)
Win Probability Dominance Who controls games start to finish? USC Edge
Avg GC score per game (offense)
USC #39
53.5
UCLA #88
23.4
Avg GC score allowed per game (lower is better)
USC #41
31.3
UCLA #132
65.6
USC +30.1
GC Edge (season-to-date)
Teams with this edge win 75.9% of games historically
Based on 2025 full season · preseason estimate
Coaching Matchup
USC
Lincoln Riley #15
36–17 (68%) · Yr 5 at school
OC Luke Huard Yr 2 #40
DC Gary Patterson Yr 1 #34
Staff Rating
3.46 #20
UCLA
Bob Chesney #20
0–0 (0%) · Yr 1 at school
OC Dean Kennedy Yr 1 #21
DC Colin Hitschler Yr 1 #36
Staff Rating
3.53 #17
About these metrics
Advanced Stats shows matchup-adjusted factor edges (offense vs opponent defense). Combination signals — when PPA, PPO, Success Rate, and Havoc all point the same direction — have historically predicted the SU winner in 95–97% of games and the ATS winner in 82–83% of games (2021–2025, FBS vs FBS, regular season).
Impact: Advanced Stats are the best performance based metric used to predict the outcome of games.

Momentum Control (CSS) measures consecutive scoring sequences — when a team scores, holds the opponent scoreless, then scores again. Teams entering a game with a CSS edge of +1.0 or more have won 71–78% of games historically (2021–2025, FBS vs FBS).
Impact: CSS is not a predictive ATS advantage, data shows this is already considered when lines are set.

Game Control (GC) measures win probability dominance — how thoroughly a team controlled the game from start to finish. Teams with a GC edge of +12 or more have won 67–76% of games historically. When both metrics agree, combined confidence is higher. When they split, treat as a lean at best.
Impact: GS is not a predictive ATS advantage, data shows this is already considered when lines are set.

Power Ratings are a custom-built composite of a Teams Talent, Experience & Production, Coaching & Performance Metrics. These are updated constantly with roster changes, performance once the games start for the 2026 season, injuries the team is dealing with and scheduling situations.
Impact: There are a wide range of power ratings available, we think ours is the best, you can decide for yourself