View Sweets recommender system (public)

2011-09-27 11:18 by kidzik | Version 3 | Rating Empty StarEmpty StarEmpty StarEmpty StarEmpty StarEmpty Star
Rating
Empty StarEmpty StarEmpty StarEmpty StarEmpty StarEmpty Star Overall (based on 0 votes)
Empty StarEmpty StarEmpty StarEmpty StarEmpty StarEmpty Star Interesting
Empty StarEmpty StarEmpty StarEmpty StarEmpty StarEmpty Star Documentation
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Summary

Ratings prediction basing on other users' votes.

License
CC-BY-SA 3.0
Tags
collaborative-filtering Prediction recommender Regression sweetrs sweets
Input format

[user] [product] [rating]

Output format

[rating]

Performance Measure
Mean Absolute Error
Type
Regression
Data
Ratings of sweets (sweetrs)
Download
HDF5 (28.2 KB) XML Matlab Octave
Completeness of this item currently: 100%.
Input Variables
0:2
Output Variables
2
Datasplits
NrSplitimage
0
NrTrain IndicesValidation IndicesTest Indices
0 0:8, 9, 11:15, 16:19, 21, 25:27, 28:31, 32:39, 40:42, ... 8, 10, 15, 19:21, 22:25, 27, 31, 39, 42, ...

We use python style indices
Description

Prediction of ratings. Collaborative-filtering.

URLs
http://sweetrs.org/
Publications
    revision 1
    by kidzik on 2011-09-13 15:32
    revision 2
    by kidzik on 2011-09-13 15:32
    revision 3
    by kidzik on 2011-09-27 11:18

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    This item was downloaded 179 times and viewed 713 times.

    Methods associated to task Sweets recommender system

    SubmitterMethod (version)CurveScoreDate
    demo simple-test-method (3) - 1.34301675978  predictions 2011-09-29 10:28
    Submit a new Method To submit a result, please sign in.

    Disclaimer

    We are acting in good faith to make datasets submitted for the use of the scientific community available to everybody, but if you are a copyright holder and would like us to remove a dataset please inform us and we will do it as soon as possible.

    Data | Task | Method | Challenge

    Acknowledgements

    This project is supported by PASCAL (Pattern Analysis, Statistical Modelling and Computational Learning)
    PASCAL Logo
    http://www.pascal-network.org/.