If you feel like you have the world's greatest recommender system, you should enter the NetFlix challenge for improving their movie recs. In addition to the possibility of winning a lot of money and achieving fame, you also get an order-of-magnitude larger data set for this task than has been available to date. (Note that in order to win, you have to improve performance over their system for 10%, which is a steep requirement.) I'll offer an additional reward: if you do this using NLP technology (by analysing movie information, rather than just the review matrix), I'll sweeten the pot by $10.
Parsing floats at over a gigabyte per second in C#
10 hours ago
5 comments:
What a neat project: try to help people enjoy movies more, and have a chance to win money at the same time! When Greg Linden posted about this on his blog today (October 2), he offered links to two possible sources of supplementary data for participants: IMBD's mass download interface and Amazon Web Services. If anyone's interested his blog is at http://glinden.blogspot.com/
Wouldn't it be nice, except that the download set does not include any movie information except for movie title and release year.
Not much to process there, really.
Sure, but you could crawl amazon or imdb or even just the web for info about the movies.
Yes, you could crawl other information sources, but, apart from the legal/license pb, there is a *lot of* information available in the data set. This is basically a collaborative filtering challenge. The netflix baseline score was achieved without using other information, and I'm sure that most participants do the same.
This is not an easy problem.
酒店經紀PRETTY GIRL 台北酒店經紀人 ,禮服店 酒店兼差PRETTY GIRL酒店公關 酒店小姐 彩色爆米花酒店兼職,酒店工作 彩色爆米花酒店經紀, 酒店上班,酒店工作 PRETTY GIRL酒店喝酒酒店上班 彩色爆米花台北酒店酒店小姐 PRETTY GIRL酒店上班酒店打工PRETTY GIRL酒店打工酒店經紀 彩色爆米花
Post a Comment