Data and statistics play a significant role in sports betting — it’s simple: previous data often predicts future outcomes. That’s why you hear punters say a team had 55 points in a quarter or a player had the most rebounds in a season.
The same data sets are also necessary when we play NCAA basketball in simulation mode. Some numbers are more consequential, and they determine how a simulated game might unfold.
NCAA basketball simulation involves using a website or software that predicts the outcome of a simulated NCAA match. This bet type involves bets on college basketball teams that belong to the National Collegiate Athletic Association (NCAA).
The basketball teams are divided into three divisions, and each vies for individual national championships. These programs take into account existing data, such as team statistics, home court advantage, and other relevant metrics. All you have to do is select the two teams you want to match up, and the algorithm will use historical data to predict the simulated game outcome.
This article dives deeper into the NCAA basketball statistics that carry the most weight in simulated game outcomes. So, when looking at the stat sheet for an NCAA game simulation, here are the top five stats to check out.
Also known as the “Adjusted offensive and defensive efficiency,” the team efficiency rate measures a game’s pace of play. For players, the efficiency rate gives better insight into a game than the score outline because it shows the efficiency in offense (OffEff) and defense (DefEff).
So, when checking the data, the offensive efficiency (points per 100 possessions) and defensive efficiency (points allowed per 100 possessions) show the difference in playing patterns between fast-paced and methodical teams.
Usually, the team with the higher turnover ratio or turnover percentage wins the game. That’s why another essential data to look at is the turnover differential. Take a look at how many assists your team had compared to its total turnovers recorded. Also, consider the estimated number of turnovers per 100 possessions.
If your team records twice as many assists as its turnovers, they moved the ball and got good shots rather than throwing the ball away. In other words, teams that keep the ball well are simulated to have more scoring chances and fewer fast breaks compared to their opponents.
On the other hand, a higher turnover percentage indicates that a player is losing ball possession more frequently compared to their overall usage in possession.
As a bettor, you can also use this simulated data for NCAA basketball games to inform real-money sports betting predictions or fantasy basketball projections. Many punters rely on simulation models to anticipate game flow, player usage, and potential upsets, especially in a competitive landscape like college basketball, where data-driven insights offer a real edge.
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The rebound margin between offense and defense shows how well teams play when in possession and without possession. This data aligns more with game dynamics because a high offensive rebound percentage (ORB%) suggests a team is more likely to generate more second-chance points that could change the game’s outcome.
Conversely, a high defensive rebound rate shows how strongly a team prevents its opponents from getting extra possession.
The assist percentage shows how well your team (or a particular player) moves the ball around to find open players who can score. It estimates the percentage of teammate field goals assisted by a player while on the floor.
Since it’s tempo-free, the stat gives insights into player comparison. It also helps determine the biggest playmakers who are likely to turn the game in their teams’ favor by a combination of their own output and that of the teammates they set up to score.
The free-throw rate (FTR) represents a team’s ratio of free throws attempted versus its field goal attempts. On the other hand, the free-throw differential is the difference between a team’s free-throw rate compared to their opponent’s.
Both stats work hand-in-hand, but a FTR determines how often a team gets in line, especially in tight games, while the differential compares the FTR of either team. Ultimately, you can tell the more aggressive team on the offensive by how much they go to the line compared to the team looking for more free throw attempts.
Here are some things to bear in mind when simulating NCAA basketball games: