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Introducing Absolute Deal Score

11 点作者 ericwaller将近 13 年前

4 条评论

majormajor将近 13 年前
"For example, if you compare a 93 deal score for a November 2012 Knicks game against a 85 deal score for a different game at MSG 3 months later, you'll know that the November ticket is without question a better value--a distinction that couldn't previously be made."<p>Does this take stuff like opponent or day of week into account? It doesn't mention it, but opponent alone makes a pretty huge difference: if most people would rather see a team like the Lakers come to town than a team low in the standings, the prices are going to be higher.<p>I can see this being really useful for something like a Broadway show, but sports are rather unique in this regard, and a lot of times you pick which game you want to go to for factors other than it being the best deal. Granted, for that use case, the system still functions the same as before, it's only the scale of the numbers that are different, but that might make your customers feel like they're getting a worse deal than previously.
rdudekul将近 13 年前
"Deal Score is a rating of whether a ticket is a bargain or a rip-off".<p>Great! what wasn't clear is what parameters are considered to arrive at the score. Knowing some more details would instill more confidence in buyers.
评论 #4367237 未加载
MagicClam将近 13 年前
How does this relate to Hipmunk's Agony rating? Is that on an absolute or relative scale?
评论 #4367157 未加载
flahertyiv将近 13 年前
rdudekul - here's a link to a blogpost series we published a few months back that gives more insight into the methodology, parameters and math behind Deal Score:<p><a href="http://seatgeek.com/blog/dev/using-a-kalman-filter-to-predict-ticket-prices" rel="nofollow">http://seatgeek.com/blog/dev/using-a-kalman-filter-to-predic...</a>