Iowa beat Florida. Anything can happen in March. Just go out there and play for the name on the front of your jersey, and your brothers to your left and right. Win or die trying.
Where does he sign to become an Illini?And for the Frankenstein-like creation of ZvoniMirk
I've thought they will since December.I am beginning to think they can win this damn game.
Brian Barnhart and Deon Thomas streamed and synced using the Varsity Network app is a much better listening experience.
Nebraska has more townie fans than most if not all college fan bases.Nope.
Illinois alumni size: 871,000
Nebraska alumni size: 300,000
Tina has all the boys swooning lol
Well, I like your answer very much. Professionally I use only quantitative and stochastic data and probability. The problem I (and most college basketball teams) have is that Kenpom anyway is too subjective on one side and materially statistically biased on the other.Source?
I agree that sample size and styles of play are important considerations when looking at metrics, but the above does not agree with what I've seen about Torvik and KenPom. It is somewhat true with EvanMiya (because he performs an additional step to evaluate over/under performance as a function of opponent quality), but he has some methods in place to reduce the impact of sample size in that
Also, the fact that the line is relatively close to the metrics (after accounting for a small location advantage) on this kind of makes this argument moot w.r.t. this game
This is just another staple in what will become our greatest season in school history. Led by the all-time Freshman
So this is more a statistical concept than talking about a specific ranking system though it does pertain to them intrinsically. The idea is when you're trying to fit a curve to data your data points closest to the ends are your more extreme points and have a higher intrinsic weight value. One simple way of seeing this is looking at a regression curve for say a linear data set and raising a single point much higher or lower on the line. If you raise a data point in the middle of the set, you'll see the whole line move up slightly but slope won't move much. If you put that on the end however, the line will tilt. Data points at your boundaries are simply intrinsically unstable.Source?
I agree that sample size and styles of play are important considerations when looking at metrics, but the above does not agree with what I've seen about Torvik and KenPom. It is somewhat true with EvanMiya (because he performs an additional step to evaluate over/under performance as a function of opponent quality), but he has some methods in place to reduce the impact of sample size in that
Also, the fact that the line is relatively close to the metrics (after accounting for a small location advantage) on this kind of makes this argument moot w.r.t. this game
Rest assured for those of us in EDT, the Corn Bowl will probably go to 3OT and we'll tip with Houston at 11 p.m.
Apparently the “eye test” of our Penn game says “Illinois not good.” Because, you know, all we did was rebound which is totally out of “luck” and where the ball is bouncing.Yet reading this Board, you’d think we were a 16 playing a 1 seed…
We will beat Houston....for one reason!!!! The next game let down of getting sent home by Iowa/ Nebraska will be of Epic proportions
Really great quotes from Sampson about Illinois: "There's certain teams that you scout them for the first time, I haven't seen Illinois play much this year at all, but scouting 'em and just watching 'em for the first time I found myself being a fan. Just enjoyed watching them."
Couldn't agree more with everything LaTulip says during ~min 35-40
I rewatched both of our games and I actually don’t think we played great in either of them. That’s just how great we can be. When everything is clicking, this team is ELITE. But I loved the intensity and tenacity we played with. That’s what we need to bring against Houston.Apparently the “eye test” of our Penn game says “Illinois not good.” Because, you know, all we did was rebound which is totally out of “luck” and where the ball is bouncing.
Nah. Its the 12 05 game. GMT....
Yet reading this Board, you’d think we were a 16 playing a 1 seed…
All accurate observations... at the same time its (1) a human correction, (2) Theses teams do not play the same schedule and (3) based on the adjustment factor, the more times you play highly ranked opponents (where there is human adjustment to several factors), the more statistically biased the output.So this is more a statistical concept than talking about a specific ranking system though it does pertain to them intrinsically. The idea is when you're trying to fit a curve to data your data points closest to the ends are your more extreme points and have a higher intrinsic weight value. One simple way of seeing this is looking at a regression curve for say a linear data set and raising a single point much higher or lower on the line. If you raise a data point in the middle of the set, you'll see the whole line move up slightly but slope won't move much. If you put that on the end however, the line will tilt. Data points at your boundaries are simply intrinsically unstable.
Now both Kenpom and Torvik have ways built in to mitigate score effects such that in Kenpom for example a 60pt victory means only negligibly better than say a 35pt victory, and I'm not saying otherwise. In fact there is some extremely good discussion on what those score effects should be and how they should be calculated in an ideal world. But that's a separate issue than the one I was stating which is simply that the mere consideration of these points en masse in it of itself causes instability and that it does skew the data more towardsthe end points. Hence this is a systemic analytical issue regarding the sample data you're making your population assessments on, not an isolated individual system one. More plainly, if you think about it instead from an error bar or confidence interval perspective, teams having a lot of these points bakes in larger error and more noise. There's just no way around it. So a 1pt difference between teams metrics wise is fairly insignificant. Looking at weight adjusted metrics might be of more significance here.
As for the how this would show up say in metrics differential vs betting line, they're not 1 to 1 but they are fairly ballpark. For example it's rare to see a game where say Kenpom vs opening line is off by >2pts. And in that respect what I'm saying is indeed moot for that argument. What I'm saying instead is that there's enough uncertainty that a 1pt differential in metrics is fairly insignificant. That doesn't mean Vegas will open as a pick 'em or that they'll be greatly off from the metrics. They utilize their own collection of systems and formulas. Just that noise is noise and your output is only as good as your input.
Do you want to phone a friend?I... do I... do I like this? I don't know if I can.
Never been any reasonHadnt listened to Head East in many years, but blasted it before the VCU game, and look what happened. We got this!
Sure, but KenPom and Tovik ratings don't try to fit a curve vs opponent quality- they're both just calculating season-long averages for adjusted off, def, and tempo, so there's no line/curve to tilt (well, you could say there is a curve depending on your frame of reference, but its slope/shape is constrained). Whether a team's games against Q4 opponents tell you anything about their future results against Q1 opponents is a good question, and I like that Torvik allows you to re-rank after performing filters on that. Sample sizes get pretty small though.The idea is when you're trying to fit a curve to data your data points closest to the ends are your more extreme points and have a higher intrinsic weight value. One simple way of seeing this is looking at a regression curve for say a linear data set and raising a single point much higher or lower on the line. If you raise a data point in the middle of the set, you'll see the whole line move up slightly but slope won't move much. If you put that on the end however, the line will tilt. Data points at your boundaries are simply intrinsically unstable.
I agree that 1pt is fairly insignificant. Not sure what you mean by weight-adjusted metrics (edit: but KenPom does employ game weights since he's determined that certain types of games are better indicators of team quality).So a 1pt difference between teams metrics wise is fairly insignificant. Looking at weight adjusted metrics might be of more significance here.
Ugh… I had erased that moment from my memory bank.We cut it to 6 with 3 minutes left and that’s when the guy banked in the 35 foot heave that shouldn’t have even counted because they didn’t reset the shot clock