This chart is not as sophisticated as TMH's chart, but I found the results as interesting. Based upon this raw data, I struggle to understand the rationale that there is a 72% chance of a WSU upset. Particularly notice the shooting percentages.
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72% chance we lose 1st rd
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Originally posted by SpanglerFan316 View PostThey would probably beat you up if you tried. And that's just the female graduate students. :p :D
The males probably have set up an impenetrable perimeter with lasers beams and ray shields. I'd have to go Flash Gordon on them."When life hands you lemons, make lemonade." Better have some sugar and water too, or else your lemonade will suck!
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Originally posted by ShockerPrez View PostNo way would I take on the female students!!
The males probably have set up an impenetrable perimeter with lasers beams and ray shields. I'd have to go Flash Gordon on them.Some posts are not visible to me. :peaceful:
Don't worry too much about it. Just do all you can do and let the rough end drag.
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Originally posted by SB Shock View PostActually reading from the modeler blog he has warned that vcu result us a big outlier and may not do as well as predicted - nice waffling. Basically he saying "even though I predict them to win they might very well lose". :)
Keep in mind that's what this guys whole model is about: identifying UPSETS. Not in predicting win/loss in general. The model may or may not suck, but until its results for picking UPSETS are compared side-by-side to the other models results for picking UPSETS, posting general win/loss prediction success rates is comparing apples to oranges. As for the models success rate, there's a difference between false positives and false negatives. The latter is much higher and the former (relatively) low/lower. That is, of the teams identified within this model's framework, those teams are pretty likely to pull an upset with varying distributional chances of doing so. The model doesn't though do as well with identifying the broader pool of teams likely to off the upset and therefore failed to identify several teams that did so leading to the higher aggregate error rate. Clearly then there's a covariate he hasn't accounted for. Maybe its lady luck, maybe its offensive efficiency including pacing. Who knows. Anyway I hope this helps. I'm not saying VCU is actually a favorite to win. Far from it. You guys are, all around, the far better team (our coach has voted for you guys in the regular season poll several times). Just trying to point out what this model does and does not attempt to do.
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Originally posted by Jeffrey Korchek View PostAnd Nate Silver says we have a 74% chance of WINNING the first game: http://www.nytimes.com/interactive/2...h-madness.htmlKansas is Flat. The Earth is Not!!
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He uses a composite of Sagarin, Pomeroy et al's computer ratings combined with pre-season AP and USA Today votes. I'm not knocking Nates stat skills and this seems like a good model that will generally outperform Kenpom etc because it accounts for other factors such as location and injuries/other roster problems(see Cuse for instance). Again though this is a general/win loss probability forecasting model and not an attempt to isolate upsets specifically. You might find this, which Nate linked to in that piece, to be interesting as well: http://fivethirtyeight.blogs.nytimes.com/2011/03/11/in-n-c-a-a-tournament-overachievers-often-disappoint/
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Originally posted by thegalen View PostThat's with respect to its value as an upset pick. That is, coming off a final four VCU will be a trendy upset pick.
Keep in mind that's what this guys whole model is about: identifying UPSETS. Not in predicting win/loss in general.
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Originally posted by SB Shock View PostActually it is not. If you look at his model Turnover Margin is heavily weighted. He called VCU an "outlier" because VCU leads the NCAA in turnover margin. I suspect VCU was ran against the whole field, they would have a good chance from this model to upset most teams.
46% is less than flipping coin, so there is not much value of his model unless you don't have a coin.
That's pretty black and white. As for the 46% part, again, that's aggregate error rate including false negatives. This models worth, if there is any, is not in running simulations of random team x against random team y for standard win-loss forecasting. For what it's worth, the performance of identified teams or those picked to upset was 15/21, or 71% which mirrors almost exactly kenpom et als predictive success for general win-loss forecasting based on composite performance rankings. The R2 value isn't through the roof though so that's something to consider. Anyway, not trying to flame. The suspense is just killing me and I have nothing better to do than obsess over numbers until Thursday! :)
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There is a 100% chance the world won't come to an end on December 21st, 2012. However, the History Channel did have an intruiging show on that topic, speaking of prognosticaters through the Centuries that thought so on this day that draweth nigh. I thought Harvard was going to beat Georgetown during the 'Ewing Era' many moons ago, but they faced very unsupportive whistles until the cows came home and they finally lost.Shocker basketball will forever be my favorite team in all of sports.
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Originally posted by ABC View PostThat was Princeton.
This is the first time since 1946 that Harvard has been in the tourney.
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