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SUMMARY ================================================================================ This dataset was constructed to support participants in the Netflix Prize. See http://www.netflixprize.com for details about the prize. The movie rating files contain over 100 million ratings from 480 thousand randomly-chosen, anonymous Netflix customers over 17 thousand movie titles. The data were collected between October, 1998 and December, 2005 and reflect the distribution of all ratings received during this period. The ratings are on a scale from 1 to 5 (integral) stars. To protect customer privacy, each customer id has been replaced with a randomly-assigned id. The date of each rating and the title and year of release for each movie id are also provided. USAGE LICENSE ================================================================================ Netflix can not guarantee the correctness of the data, its suitability for any particular purpose, or the validity of results based on the use of the data set. The data set may be used for any research purposes under the following conditions: * The user may not state or imply any endorsement from Netflix. * The user must acknowledge the use of the data set in publications resulting from the use of the data set, and must send us an electronic or paper copy of those publications. * The user may not redistribute the data without separate permission. * The user may not use this information for any commercial or revenue-bearing purposes without first obtaining permission from Netflix. If you have any further questions or comments, please contact the Prize administrator <prizemaster@netflix.com> TRAINING DATASET FILE DESCRIPTION ================================================================================ The file "training_set.tar" is a tar of a directory containing 17770 files, one per movie. The first line of each file contains the movie id followed by a colon. Each subsequent line in the file corresponds to a rating from a customer and its date in the following format: CustomerID,Rating,Date - MovieIDs range from 1 to 17770 sequentially. - CustomerIDs range from 1 to 2649429, with gaps. There are 480189 users. - Ratings are on a five star (integral) scale from 1 to 5. - Dates have the format YYYY-MM-DD. MOVIES FILE DESCRIPTION ================================================================================ Movie information in "movie_titles.txt" is in the following format: MovieID,YearOfRelease,Title - MovieID do not correspond to actual Netflix movie ids or IMDB movie ids. - YearOfRelease can range from 1890 to 2005 and may correspond to the release of corresponding DVD, not necessarily its theaterical release. - Title is the Netflix movie title and may not correspond to titles used on other sites. Titles are in English. QUALIFYING AND PREDICTION DATASET FILE DESCRIPTION ================================================================================ The qualifying dataset for the Netflix Prize is contained in the text file "qualifying.txt". It consists of lines indicating a movie id, followed by a colon, and then customer ids and rating dates, one per line for that movie id. The movie and customer ids are contained in the training set. Of course the ratings are withheld. There are no empty lines in the file. MovieID1: CustomerID11,Date11 CustomerID12,Date12 ... MovieID2: CustomerID21,Date21 CustomerID22,Date22 For the Netflix Prize, your program must predict the all ratings the customers gave the movies in the qualifying dataset based on the information in the training dataset. The format of your submitted prediction file follows the movie and customer id, date order of the qualifying dataset. However, your predicted rating takes the place of the corresponding customer id (and date), one per line. For example, if the qualifying dataset looked like: 111: 3245,2005-12-19 5666,2005-12-23 6789,2005-03-14 225: 1234,2005-05-26 3456,2005-11-07 then a prediction file should look something like: 111: 3.0 3.4 4.0 225: 1.0 2.0 which predicts that customer 3245 would have rated movie 111 3.0 stars on the 19th of Decemeber, 2005, that customer 5666 would have rated it slightly higher at 3.4 stars on the 23rd of Decemeber, 2005, etc. You must make predictions for all customers for all movies in the qualifying dataset. THE PROBE DATASET FILE DESCRIPTION ================================================================================ To allow you to test your system before you submit a prediction set based on the qualifying dataset, we have provided a probe dataset in the file "probe.txt". This text file contains lines indicating a movie id, followed by a colon, and then customer ids, one per line for that movie id. MovieID1: CustomerID11 CustomerID12 ... MovieID2: CustomerID21 CustomerID22 Like the qualifying dataset, the movie and customer id pairs are contained in the training set. However, unlike the qualifying dataset, the ratings (and dates) for each pair are contained in the training dataset. If you wish, you may calculate the RMSE of your predictions against those ratings and compare your RMSE against the Cinematch RMSE on the same data. See http://www.netflixprize.com/faq#probe for that value. Good luck! MD5 SIGNATURES AND FILE SIZES ================================================================================ d2b86d3d9ba8b491d62a85c9cf6aea39 577547 movie_titles.txt ed843ae92adbc70db64edbf825024514 10782692 probe.txt 88be8340ad7b3c31dfd7b6f87e7b9022 52452386 qualifying.txt 0e13d39f97b93e2534104afc3408c68c 567 rmse.pl 0098ee8997ffda361a59bc0dd1bdad8b 2081556480 training_set.tar
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