Welcome to Beyond the Basics!
My name is Zack Capozzi, and I run LacrosseReference.com, which focuses on developing and sharing new statistics and models for the sport.
The folks at USA Lacrosse Magazine offered me a chance to share some of my observations in a weekly column, and I jumped at the chance. Come back every Tuesday to go beyond the box score in both men’s and women’s lacrosse.
The gap between the best and worst teams is larger in Division I women’s lacrosse than it is for the men. It’s not often that you see a team with a greater than 90 percent estimated win probability heading into a contest, but it is much more common in the women’s game. To be exact, this year, 19.7 percent of women’s games started with the favorite having a win probability above this mark. For the men, it happens just 7.5 percent of the time.
That is actually down from the pre-COVID years. In 2019, 24.4 percent of women’s games featured these types of heavy favorites. But still, the gap between the contenders and the pretenders is wide. You might call it a chasm.
I was having a conversation last week about stats in women’s lacrosse and the question came up with respect to the top of Division I and the rest of Division I. What is the difference, statistically, between a top 20 team and the teams that are working to get into that group? To be honest, I haven’t given too much thought to this type of grouping before, but the question piqued my interest.
So, let’s answer it. Let’s see which statistical characteristics most separate the top 20 from the other 100 teams in Division I women’s lacrosse. (For this article, we are using the LaxElo ratings to identify who is included in the top 20.)
OFFENSE IS THE KEY
My first question was: what is more important, offense or defense? Put another way, is the gap between the best teams and the rest larger for offensive metrics or defensive metrics? In theory, if the gap is larger for defense, then if you were forced to pick, you’d rather make strides on defense than on offense. And this matters because teams have limited resources, namely time, to put toward any given area. Knowing where you get the most bang-for-the-buck is important.
But it’s actually offense that appears to be the key. To support this analysis, I looked at the average rating for all top 20 teams, and the average rating for all other teams across a range of metrics. As an example, let’s look at offensive efficiency (goals divided by possessions).
In 2022, the average top 20 team has an efficiency rating of 34.2 percent (they have scored a little over 34 goals for every 100 offensive possessions). The non-top 20 teams have an efficiency rating of 27.7 percent. A 27.7 percent efficiency rating would be the 67th-best mark in Division I women’s lacrosse. A 34.2 percent mark would be 19th. That means that for offensive efficiency, in terms of spots, the gap between the top 20 teams and the rest is 48 spots. Putting it in terms of spots will allow us to determine how big the gap between the best and the rest is for each metric.
And to answer the initial question about offense-v-defense, this is a useful way to do it. We simply take the average gap (in spots) between the top 20 teams and the other teams for every offensive metric and every defensive metric. (I’m including shooting percentage, SOG rate, turnover rate, assist rate and saved shot rate.)
Across those categories, the average gap between the good teams and the not-so-good-teams is 38 positions for the offensive metrics and 28 positions for the defensive metrics. In terms of national rankings, you get more bang-for-the-buck from improvements on offense than improvements on defense.
OFFENSIVE SAVED SHOT RATE IS THE LARGEST GAP
That’s on average, but what about specifics? Which stat has the biggest gap between good teams and the other teams? The short answer is saved-shot rate.
A quick digression. Saved-shot rate is the inverse of save percentage for goalies. It’s the percentage of the shots you put on cage that are saved. Think about the universe of shots. Any shot can be missed (and likely backed up), a pipe or blocked (50/50 ground ball), a goal, or a save (virtually a turnover). A team’s shooting percentage is just the number of goals divided by the number of total shots, but not all missed shots are equal.
I find it useful to calculate a saved-shot rate because it separates out the missed shots (which typically result in a continuation of the possession) with the shots that typically end up going the other way. It’s a very underrated stat in my opinion. Case in point: saved-shot rate is the offensive metric with the largest gap between the top 20 teams and the rest.
For shots that are on-cage, the average top 20 offense sees the goalie make a save on 36.9 percent of the possessions (22nd). The average for non-top 20 teams is 43.8 percent (72nd). Compare that to SOG rate, where the average top 20 offense puts 78 percent (66th) of their shots on cage, versus 76.9 percent (44th) for the rest. So yes, good teams have higher SOG rate, but the gap is not nearly as wide.
The takeaway here is that the elite teams are finding the right balance between getting shots on cage, avoiding saves and scoring goals. The amateur economist in me is always interested when there are trade-offs to be managed. Saves are the most damaging outcome of any shot, and you could avoid saved shots entirely by never putting a shot on cage, but then you’d never score. You can’t score if you don’t put shots on cage, but too much focus on SOG rate leads to more saves (assuming shots-on-cage is something a team focuses on). The golden road is maximizing goals while minimizing saved shots. Also known as aiming for corners.