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Predictions for week 16 of the NFL, 2014

By Frank Brank 1 Comment

NFL_Rankings_Week_16Though it’s late in the season, Ed and I have teamed up to provide some NFL previews for the remaining games. I am the owner of cheapseatanalytics.com where I provide analytical sports information and betting systems. I major in baseball but also cover the NFL and NHL.

In this segment, I will be providing a weekly view on some important games to watch from an analytical and betting perspective. You can follow along with me on Twitter @realFrankBrank and check out my betting systems and sports analytical models at cheapseatanalytics.com.

Eagles @ Redskins

Fresh off two losses and dropping from their top spot in the NFC East, the Eagles get the privilege of traveling to Washington and taking on the helpless Redskins.

The Redskins have only failed themselves. The owner has failed the coach who has failed the players who have failed each other.

On the other side, the Eagles first ran into a revived Seahawks defense two weeks ago. This past week, their defense got torn apart by Tony Romo and Dez Bryant while sprinkling in some Cole Beasley and Jason Witten.

It wasn’t a good look for this popular Eagles team. Their uptempo offense has struggled for long periods of time throughout the previous two games.

Mark Sanchez may have caught the Chip Kelly hype, but he hasn’t been much more than an average quarterback when you look at his 6.9 yards per pass attempt (includes sacks but not adjusted for competition) and 61% completion rate. Sure, the high pace offense and large amounts of points are great. The rate stats tell a different story.

The defense, particularly the secondary, hasn’t played well all year, ranking 18th in adjusted yards per attempt against. The largest edge the Eagles will have against the Redskins is their second-best 8.4% sack rate.

Washington QB Robert Griffin has struggled to elude pressure. He looks slower, indecisive, and has been sacked twenty-eight times in seven games (five starts) for a ridiculous 15.7% of drop backs. That’s about one sack for every six drop backs for RG3. Sacks play a huge factor in the outcomes in NFL games and a 15.7% sack rate is impossible to overcome no matter the quarterback.

However, when Griffin is able to throw the ball, he’s performed at a high level by completing a 69% of his passes with a mere 2% interception rate. This Eagles secondary may be just what Griffin needs to have a decent game. I don’t think Washington can win this game. I do think this 8.5 point line is too much and the game will play much closer. (Ed note: The line is now 7.5 in most places.)

The typical three point edge to home teams suggests this game would be lined at 14.5 (or more depending on where this line finishes) if it were played in Philadelphia. That’s too many points to bet on for a bad defense. The Power Rank’s team rankings based on margin of victory says Eagles by seven, and I can agree with that. When this line finishes at or over ten points, it’ll be worth grabbing the Redskins.

Chiefs @ Steelers

The Steelers are the hardest team to project this season. They’ve blown out some of the better NFL teams like the Colts, Ravens, and Bengals. They’ve also lost to the Jets, Bucs, and Saints.

The Chiefs aren’t too much different. They’ve beaten the Patriots, Chargers, and Seahawks while losing to the Raiders, 49ers, and Titans. This type of variance from game to make makes projecting teams difficult.

There’s one thing easy to find in this one: the Steelers play great at home. To go along with that, the Chiefs haven’t been great on the road. Most recently, they’ve lost to the not-so-good Cardinals, the Raiders, and skated by the Bills in a game in which they lost in every aspect besides the final score.

A quick look at the Steelers home scoring tells the whole story. They’ve scored 30, 24, 30, 51, 43, and 32 points at home for an average of 35 points. There aren’t many defenses that can stop them from scoring, particularly at home.

The Chiefs, who still don’t have a touchdown pass to a wide receiver this season, seem to be the exact opposite. They have a pedestrian, risk adverse offense that tries to win on defense and check downs to running backs and tight ends.

No matter who Dick LeBeau is running out on defense, he can game plan against this offense to keep everything in front of them. The Steelers losses have come from the secondary getting exposed, putting them into a hole early. They give up an average of 12.7 yards per catch and 7.3 adjusted yards per pass attempt, third worst in the NFL.

However, the Chiefs offense can’t expose this Steelers weakness. The Chiefs offense gains just 10.9 yards per catch, ahead of teams like the Jets, Bills, Jaguars, and Vikings.

I expect the Steelers offense to get a lot of possessions and score a lot of points again. The Chiefs can’t keep up in this one.

The betting line is at three, which basically says these two teams are equal on a neutral field. When I initially saw the line, I expected a ton of Steelers backers. However, 60% of the public has come in on the Chiefs so far.

The Power Rank has picked the Chiefs to win. I just see match up problems for the Chiefs this week. Pittsburgh wins big.

Falcons @ Saints

The NFC South is putrid. It’s a shame, really, that one of these teams will make the playoffs.

After Monday night’s blowout of the Bears, the Saints have taken the lead in the division with a 6-8 record. One of the Seahawks, Lions, Packers, Eagles, or Cowboys aren’t going to make the playoffs because the Panthers, Falcons, or Saints are guaranteed a playoff spot.

Let’s hope the Saints, the best NFC South team by The Power Rank’s ensemble rankings, can win out to get to 8-8. That may be harder than it seems.

The Saints usually have a large home field advantage, but that has not been the case this season. They’ve been blown out by marginal teams like Carolina and Cincinnati while also losing to Baltimore and San Francisco.

Both of these teams have had issues stopping opposing quarterbacks, and I expect the same this week. New Orleans and Atlanta have the 29th and 32nd ranked pass defense by yards per play adjusted for schedule respectively. These pass defenses will struggle against Drew Brees and Matt Ryan, who both lead above average pass offenses.

A standard three point edge to the home team for an evenly matched game gives the Saints the edge by a field goal. When you consider how great the Saints have been at home, you could probably assume a 4.5 to 5 point edge. Interestingly, The Power Rank gives the Saints exactly that, a win by 4.8 points.

Vegas has booked this line at Saints -6.5. With a strong performance on prime time Monday Night Football, I’d expect the fan favorite Saints to steal a majority of the public bets.

Colts @ Cowboys

This is the game of the week. Coming off four straight prime time games, the Cowboys need to win out to secure a playoff spot. There are other ways to get in, but they would need some external help from some bad teams. Considering the Cowboys play the Redskins next week, this game against the Colts could determine their playoff fate.

The Cowboys are small favorites in this game but betting lines can be misleading. There’s not a more polarizing team in the NFL when it comes to public perception than the Dallas Cowboys.

A sportsbook’s lines are hypothetically made so that game ends up on either side of the line 50% of the time. In actuality, the lines are made to persuade the public to bet 50-50 to reduce risk in the books losing out. With the Cowboys coming off a big prime time win and all things being equal, one could assume Cowboys -3 is a bit of an inflated line.

The Cowboys have been a bad home team. Most dome teams have a sizable advantage at home (see Saints, Colts, Falcons, etc.). It has an opposite effect for Dallas.

Dez Bryant is obviously a huge threat to any defense, but their strength is dominating with the offensive line and running the ball with DeMarco Murray. Now that Murray has had surgery on his broken hand, he could see a reduced role or maybe even sit this one out. I don’t see any issue with Joseph Randle and Lance Dunbar being able to pick up the slack behind this offensive line.

It’s no secret this Cowboys defense, especially the secondary, is bad. Are they better than we thought they’d be? Definitely. However, they rank 28th in adjusted yards per pass attempt.

The Colts also have looked pretty vulnerable the last two weeks. Andrew Luck has surrendered a few touchdowns to opposing defenses while barely sneaking by the quarterback-troubled Browns and Texans. They also haven’t been a great road team. They’ve held serve to this point by skimming past the Browns in Cleveland and Texans in Houston. However, Indianapolis went down big in Denver and was blown out in Pittsburgh.

Both of these defenses has their shortcomings while both offenses can really move the ball. The Power Rank has this one as a virtual tie (Cowboys by 0.5). I can agree with that. The Colts struggle on the road, the Cowboys struggle at home.

It looks like last possession wins with two lights out kickers. Don’t forget about the kickers!

Additional leans:

Jaguars -3, Lions -5, Panthers -3.5, Bengals +3.5

Thanks for reading. You can follow me on Twitter @realFrankBrank and check out my betting systems and sports analytical models at cheapseatanalytics.com.

Filed Under: Football Analytics, National Football League, Sports Wagering

How to predict interceptions in the NFL, backed by surprising science

By Dr. Ed Feng 27 Comments

photoTurnovers play a critical role in football.

A tipped pass for an interception or crushing hit for a fumble can decide a close game. No coach emerges from a press conference without touting the importance of winning the turnover battle.

However, not all turnovers are created equal. In the 2013 NFL regular season, teams with more interceptions than their opponent won the game 80% of the time. Teams that forced and recovered more fumbles than their opponents won the game 70% of the time.

Interceptions have a bigger impact because the defender is most likely on his feet after the takeaway. This can lead to a big swing in field position or even a score. Defenders that recover fumbles tend to fall on the ball.

What factors affect interceptions in the NFL? Here, we’ll look at the surprising analytics behind interceptions.

You can do better than guessing that each team will throw picks on 2.9% of pass attempts, the NFL average. And it doesn’t involve an arcane statistic that comes from charting games. The critical numbers are in the box score, although it might not be the numbers you expect.

We’ll also look at how this analysis changes the predicted point spread for a game.

How pass rush affects interceptions

Seattle cornerback Richard Sherman led the NFL in interceptions in 2013. Despite all of his public claims about being the best cornerback in the league, Sherman credits his front seven for much of his success.

Pass rush is an obvious candidate to affect interceptions. The more often a defense applies pressure on the quarterback, the more often he throws an errant pass. Or perhaps the defender strikes the quarterback’s arm, causing a wobbly pass to fall into the hands of the defense.

To study this, we need to measure the strength of the pass rush. To start, let’s look at sacks, a number that requires proper context. A defense might rack up more sacks by facing more pass attempts. To account for this, let’s use sack rate, or sacks divided by the sum of pass attempts and sacks, as a measure of pass rush.

To determine whether pass rush causes interceptions, consider NFL defenses in the regular season from 2003 through 2013. While I expected defenses with a better sack rate to have a higher interception rate, there’s no correlation between these two quantities for these 352 defenses.

For those with a technical inclination, sack rate explains less than 1% of the variance in interception rate. For everyone else, check out the left panel of the visual in the next section.

Richard Sherman might be a great cornerback because of Seattle’s pass rush. However, his pass rush doesn’t explain his high interception total in 2013.

How pass protection affects interceptions

If pass rush has no effect on a defense’s interceptions, what about pass protection on offense? An offensive line that keeps pass rushers away from the quarterback might result in fewer interceptions.

Over the same 11 regular seasons, the sack rate allowed by an offense explains 6% of the variance in the interception rate. While this correlation is stronger than on defense, I still do not recommend using sacks to predict interceptions. The right panel of the visual shows why.

nfl_sack_pick_corr

We can dig even deeper into pass protection. Over the last 5 seasons, the NFL has tracked QB hits, or the number of times the quarterback gets hit after releasing the ball. We can now calculate the rate at which an offensive line allows the hits on the quarterback (the sum of QB hits and sacks divided by the sum of pass attempts and sacks).

This QB hit rate gives a better perspective on pass protection. An offensive line might look good because of a low sack rate. For example, Indianapolis gave up sacks on 5.2% of pass attempts in 2013, 5th best in the NFL.

However, this same offensive line allowed a hit rate of 23%, 26th worst in the NFL. Andrew Luck’s ability to get rid of the ball in the face of pressure played a big role in their low sack rate. The lack of protection probably also contributed to Luck’s below average completion percentage of 60% in 2013.

However, even a better statistic like QB hit rate doesn’t correlate with interceptions. Hit rate explains 4% of the variance in interception rate, a weaker correlation than shown in the right panel of the visual.

The data does not support the belief that pass rush affects interceptions. I would guess this comes from the ability of NFL quarterbacks to not let pressure to affect their accuracy. Of the thousands that play in high school and hundreds that make it to college, only 32 can play in the pros. These quarterbacks do not fold under pressure.

However, these 32 quarterback do vary in their accuracy, and that might impact interceptions.

How throwing accuracy affects interceptions

Despite the wobbles of the his balls, Peyton Manning has shown incredible precision with his throws. Over his career, he has completed 65.5% of his passes. Of active players, only Drew Brees and Aaron Rodgers have a better career completion percentage.

However, Peyton has gotten even better after having multiple neck surgeries. In his last two seasons with Denver, his completion percentage has increased to 68.4%.

Do more accurate quarterbacks throw fewer interceptions? Any fan would rather have Manning and Rodgers leading their offense than Derek Anderson or Brady Quinn. But are fewer interceptions a consequence of a better quarterback?

To answer this question, consider the career statistics for NFL quarterbacks in 2013 with at least 500 career pass attempts. The visual of these 52 players shows the negative correlation between completion percentage and interception rate.

nfl_qb

Peyton Manning is the third point from the right, and he has thrown picks at a higher rate than this regression analysis predicts. Aaron Rodgers has the lowest interception rate of the 3 quarterbacks with better than 65% completion rate.

The outlier with the lowest interception rate is Nick Foles, the second year quarterback with Philadelphia. As much potential as he has shown, he will not continue to throw interceptions on 1.2% of his pass attempts. The same applies to San Francisco’s Colin Kaepernick, the point with the second lowest interception rate (1.7%).

This correlation does not imply that better accuracy causes fewer interceptions. But this conclusion does seem logical. The quarterback has control over where he throws the ball. The more control he shows, the less likely the ball hits the hands of a defender. There are better ways to look at this causation, but they will have to wait for another day.

For these quarterbacks, completion percentage explains 32% of the variance in interception rate. In the noisy world of football statistics, that’s as strong a relationship as you will see between two statistics. In addition, the correlation also exists for the regular season statistics of offenses from 2003 through 2013. Here, completion percentage explains 20% of the variance in interception rate.

With this strong relationship between accuracy and interceptions, how can we modify a point spread prediction for a game?

How interceptions affect the point spread

To use these results to adjust a prediction, let’s look back at the Super Bowl between Seattle and Denver at the end of the 2013 season. Before the game, the team rankings at The Power Rank predicted Seattle by 1.3 points, which implied a 46% chance for Denver to win.

Denver had a lower likelihood to throw a pick based on Peyton Manning’s accuracy. On average, NFL quarterbacks throw interceptions on 2.9% of pass attempts. With Peyton’s 65.5% career completion percentage, the regression model predicted he would throw interceptions on 2.56% of pass attempts. For a league average 35 pass attempts, this meant 0.14 fewer interceptions for the game.

While such a small fraction of picks might seem inconsequential, the impact of such a turnover makes it matter. From the relationship between interceptions and points in NFL games, the average interception is worth about 5 points. This changed the predicted point spread by 0.7 points in Denver’s favor. Seattle’s predicted margin of victory dropped from 1.3 to 0.6, which increased Denver’s win probably from 46% to 48%.

The game didn’t go Denver’s way. Seattle’s defenders knew what mouthwash Manning used before the game since they spent the entire game in the backfield.

The outcome of interceptions in the Super Bowl

Manning thew 2 interceptions. The first was an errant pass that landed in the hands of Cam Chancellor, a play in which Manning wasn’t pressured that heavily. The second pick came when a defender hit his arm on a throw. The football wobbled into the hands of Malcolm Smith, who ran for a Seattle touchdown.

For the game, Manning thew 49 passes, so the two picks implied a 4.1% interception rate. Even with this small sample size, that is not an outrageous rate. If not for the bad luck on the pick in which his arm got hit, Manning would have had a 2% rate.

Common sense says that pass rush and throwing accuracy affect interceptions. However, the NFL data only shows a link with one of these factors. If you want to predict interceptions, stay away from pass rush statistics and look at completion percentage.

Filed Under: Denver Broncos, Football Analytics, National Football League, Seattle Seahawks, Sports Data Visualization, Sports Wagering

7 bowl games with value from analytics; the Betting Dork podcast part II

By Dr. Ed Feng 1 Comment

In part I of the Betting Dork podcast on bowl games, my strength of schedule adjustments liked Pac-12 teams to cover over their Mountain West opponents.

USC and Oregon State played quite well, easily covering against Fresno State and Boise State respectively.

Washington State also looked good until 2 late fumbles allowed Colorado State to win. At least San Diego State came through with a nice win over Buffalo, a pick I made based on turnover margin.

Part II of the Betting Dork college football bowl season handicapping special is now available. I went even deeper into the numbers on this one, trying to find answers to these 5 questions.

  • Does the sudden departure of Texas Tech QB Baker Mayfield matter? A look at his numbers versus fellow freshman Davis Webb.
  • Texas A&M’s defense is bad, but did they improve over the second half of the season?
  • Michigan State’s offense was even worse than Texas A&M’s defense, but how much did they improve?
  • Can Clemson still be overrated?
  • How much better was Auburn the second half of the season?

Overall, the numbers suggest 7 games with value in the second set of 18 bowl games we cover in this podcast. In the end, I was a bit shocked at which bowl game I thought had the most value.

To listen, click here or download the podcast on iTunes.

Filed Under: College Football, College Football 2013, College Football Analytics, Sports Wagering

How to bet on bowl games; the Betting Dork podcast part I

By Dr. Ed Feng 1 Comment

You’re looking for insight into bowl games. Anything to get an edge in the chaos of college football.

Teams will leave the snuggly confines of their own conference and take on foes from throughout the country. Analytics that can accurately account for strength of schedule becomes an indispensable tool to evaluate these games.

I had the pleasure of talking about my predictions on Betting Dork, the podcast hosted by Gill Alexander. To listen to the first part in which we discuss the first 17 bowl games, click here or download the podcast from Betting Dork on iTunes.

Gill does an amazing job preparing for each of his podcasts. When he first interviewed me before March Madness this year, he dug out every bit of information on the internet about me, even an quote from a video.

In addition, Gill doesn’t just call up his guests and plop the result of iTunes. He spends hours editing each show, making it run smooth. If I bumble my way through a sentence, I just say “Gill, edit that out, please”.

3 insights into bowl games from numbers

The first half of the Bowl podcast is awesome. Here are 3 reasons to listen.

  • 3 games with value that come from misjudging conference strength. Hint: the conference of my Ph.D. institution Stanford might be the undervalued one.
  • My doubts about the greatness of Chris Petersen as a coach.
  • A team in which I doubt my yards per play adjusted for strength of schedule.

Dave Essler, a handicapper with pregame.com, is the other guest, and he provides a different angle based on motivation and other intangible factors.

To listen to the podcast, click here or download it from Betting Dork on iTunes.

Filed Under: College Football, College Football 2013, College Football Analytics, Sports Wagering

Finding value in win totals for college football teams in 2013

By Dr. Ed Feng 1 Comment

The Power Rank's preseason rankings give win totalsHow many games will your team win this season?

That’s a crazy question to ask before the season starts. So many factors, from Johnny Manziel’s legal problems to the emergence of a freshman running back, can impact how a season turns out for a team.

There is no way to predict whether the left tackle’s knee with go out 4 games into the season. Or whether the 5 star recruit makes an impact on the defensive line.

But we’re going to ask about win totals anyways. Besides, sports books offer odds on it.

Analytics reduces the uncertainty in college football

The Power Rank’s preseason college football rankings let us estimate win totals. Based on a regression model that considers past team performance, returning starters and turnovers, these preseason rankings have correctly predicted the winner of 70.5% of games since 2005.

The preseason rankings assign each team a rating, which gives an expected margin of victory against an average FBS team. Since 2005, a team’s preseason rating has been within 7 points of its final rating 72% of the time. Depending on your mood, that’s either a reason to jump for joy or sulk at the futility of trying to predict college football. I’ll let you decide.

The ratings from the preseason rankings also give a win probability for each game this season. Adding up these probabilities for a team gives an expected number of wins.

Alabama and Oregon have the most expected wins this season at 10.1. This should not surprise anyone, as these two teams are rated more than 6 points better than any other team in the preseason rankings.

At the other end, Georgia State is expected to win 1.7 games. Poor Panthers. Even though they play in the Sun Belt, it’s going to be a rough first year as an FBS school.

Let’s look at 3 teams whose expected wins in The Power Rank differ from the odds makers at Bovada. Only regular season games count towards these win totals.

Georgia

The Power Rank: 8.0 wins. Odds makers: 9.5 wins.

Georgia has 9 starters back on an offense that finished 3rd in the nation in adjusted yards per play. They should be best offense in the nation. However, the Bulldogs have only returning 3 starters on a defense that finished 20th in the nation. This unit might regress towards average.

No one should dispute Georgia as a top 10. My preseason rankings have them at 6th. However, win totals depend strongly on schedule. Georgia opens the season at Clemson (19th in preseason rankings). The odds say that Georgia has a 52% chance of escaping week 1 with a win.

Then South Carolina comes to town the next week, followed by LSU two weeks later. Along with their annual neutral site game with Florida, Georgia has only slightly better than even odds to win each game. Expect two losses in these 4 games.

Georgia also travels to Tennessee, Auburn, Vanderbilt and Georgia Tech this season. While the Bulldogs have greater than a 60% chance to win each of these games, a young defense could cost them one of these games. This puts them at 9 wins on the season.

Boise State

The Power Rank: 8.0 wins. Odds makers: 10 wins.

After an incredible run to national prominence led by QB Kellen Moore, the Broncos are in year two of their rebuilding project. My preseason rankings have them 27th, good but not great.

Their schedule is brutal since they play their best opponents on the road. My predictions give Boise State less than a 50% chance when traveling to Washington, BYU, Fresno State and Utah State. The Broncos only have a 53% chance of winning at San Diego State.

These five games alone should put the Broncos below 10 wins.

Florida Atlantic

The Power Rank: 4.7 wins. Odds makers: 3.5 wins.

You probably haven’t put much thought into the prospects of Florida Atlantic this season. And in terms of team strength, you should not expect much from Carl Pellini’s team. The Owls are 111th in my preseason rankings and must replace their QB and most of the offensive line.

But the schedule is favorable for Florida Atlantic. It starts with a home game against New Mexico State they should win. Then in conference, Florida International, Tulane and Marshall all travel to Boca Raton this season. Florida Atlantic will be favored in each of these 4 games and can expect to win 2 or 3 of them.

The Owls will also have a greater than 40% chance at Southern Miss, UAB and home against Middle Tennessee. They will benefit from playing in a terrible Conference USA East division in which 4 of 6 teams are ranked 98th or worse.

A terrible team can win 4 games in a division this bad.

Become a member of The Power Rank

With all the noise that comes with the preseason in college football, analytics can help you cut through the uncertainty. The Power Rank’s preseason rankings have correctly predicted the game winners of 70.5% of games since 2005. This general accuracy over all 125 FBS teams can help you find value in the market for win totals.

More of my analysis of win totals are available for members of The Power Rank. The sports books differ from my predictions on 6 more teams for the 2013 season.

Membership also includes access to my interactive team pages which let you instantly evaluate a game. To see how this works, click here.

Filed Under: Boise State Broncos, College Football, College Football 2013, College Football Analytics, Florida Atlantic Owls, Georgia Bulldogs, Sports Wagering

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