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This makes our method applicable to a movie in the earlier stages of content creation even before it is produced.
A is the first independently produced documentary on Aum and the first to be shown in movie theaters.
Experimental results on MovieLens and Each Movie data sets demonstrate that the proposed method is much more competitive compared with the state of the art matrix factorization based collaborative filtering methods.
Open accessProceedings ArticleDOI
Anush K. Moorthy, Alan C. Bovik 
25 Citations
In order to bridge the gap between the conceptual elegance of MOVIE and a practical VQA algorithm, we propose a new VQA algorithm - the spatio-temporal video SSIM based on the essence of MOVIE.
Open accessProceedings ArticleDOI
F. De la Torre, O. Vinyals 
17 Jun 2007
22 Citations
In addition, we suggest a new matrix formulation that simplifies and unifies previous approaches.
The matrix framework is adaptable to requirements for new programs and strategies.
We argue that this new matrix contains Jordan cells.
In our experiments on movie rating datasets, the proposed model outperforms state-of-the-art matrix completion models.
The work offers intuitive movie recommendations based on a selected pivot movie and allows the interactive discovery of related movies based on both textual and semantic features.
In one word, this new matrix theory overcomes the dimensional barrier in certain sense.
Abstract The movie market in Australia, as in most countries, is highly dominated by Hollywood movies.
This allows the extension to matrix polynomials of a new companion matrix construction.
Design/methodology/approach Five movie genres and first-week movie reviews found on IMDb were collected.
These applications demonstrate the usefulness of the new matrix products.

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