Generalized Low Rank Models
| AUTHOR | Horn, Corinne; Udell, Madeleine; Zadeh, Reza |
| PUBLISHER | Now Publishers (06/23/2016) |
| PRODUCT TYPE | Paperback (Paperback) |
Description
Principal components analysis (PCA) is a well-known technique for approximating a tabular data set by a low rank matrix. Here, we extend the idea of PCA to handle arbitrary data sets consisting of numerical, Boolean, categorical, ordinal, and other data types. This framework encompasses many well-known techniques in data analysis, such as nonnegative matrix factorization, matrix completion, sparse and robust PCA, k-means, k-SVD, and maximum margin matrix factorization. The method handles heterogeneous data sets, and leads to coherent schemes for compressing, denoising, and imputing missing entries across all data types simultaneously. It also admits a number of interesting interpretations of the low rank factors, which allow clustering of examples or of features. We propose several parallel algorithms for fitting generalized low rank models, and describe implementations and numerical results.
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Product Format
Product Details
ISBN-13:
9781680831405
ISBN-10:
1680831402
Binding:
Paperback or Softback (Trade Paperback (Us))
Content Language:
English
More Product Details
Page Count:
142
Carton Quantity:
54
Product Dimensions:
6.14 x 0.30 x 9.21 inches
Weight:
0.46 pound(s)
Country of Origin:
US
Subject Information
BISAC Categories
Computers | Artificial Intelligence - General
Computers | Computer Science
Computers | Machine Theory
Descriptions, Reviews, Etc.
publisher marketing
Principal components analysis (PCA) is a well-known technique for approximating a tabular data set by a low rank matrix. Here, we extend the idea of PCA to handle arbitrary data sets consisting of numerical, Boolean, categorical, ordinal, and other data types. This framework encompasses many well-known techniques in data analysis, such as nonnegative matrix factorization, matrix completion, sparse and robust PCA, k-means, k-SVD, and maximum margin matrix factorization. The method handles heterogeneous data sets, and leads to coherent schemes for compressing, denoising, and imputing missing entries across all data types simultaneously. It also admits a number of interesting interpretations of the low rank factors, which allow clustering of examples or of features. We propose several parallel algorithms for fitting generalized low rank models, and describe implementations and numerical results.
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