menu
{ "item_title" : "Improved Classification Rates for Localized Algorithms Under Margin Conditions", "item_author" : [" Ingrid Karin Blaschzyk "], "item_description" : "Support vector machines (SVMs) are one of the most successful algorithms on small and medium-sized data sets, but on large-scale data sets their training and predictions become computationally infeasible. The author considers a spatially defined data chunking method for large-scale learning problems, leading to so-called localized SVMs, and implements an in-depth mathematical analysis with theoretical guarantees, which in particular include classification rates. The statistical analysis relies on a new and simple partitioning based technique and takes well-known margin conditions into account that describe the behavior of the data-generating distribution. It turns out that the rates outperform known rates of several other learning algorithms under suitable sets of assumptions. From a practical point of view, the author shows that a common training and validation procedure achieves the theoretical rates adaptively, that is, without knowing the margin parameters in advance.", "item_img_path" : "https://covers2.booksamillion.com/covers/bam/3/65/829/590/3658295902_b.jpg", "price_data" : { "retail_price" : "54.99", "online_price" : "54.99", "our_price" : "54.99", "club_price" : "54.99", "savings_pct" : "0", "savings_amt" : "0.00", "club_savings_pct" : "0", "club_savings_amt" : "0.00", "discount_pct" : "10", "store_price" : "" } }
Improved Classification Rates for Localized Algorithms Under Margin Conditions|Ingrid Karin Blaschzyk

Improved Classification Rates for Localized Algorithms Under Margin Conditions

local_shippingShip to Me
In Stock.
FREE Shipping for Club Members help

Overview

Support vector machines (SVMs) are one of the most successful algorithms on small and medium-sized data sets, but on large-scale data sets their training and predictions become computationally infeasible. The author considers a spatially defined data chunking method for large-scale learning problems, leading to so-called localized SVMs, and implements an in-depth mathematical analysis with theoretical guarantees, which in particular include classification rates. The statistical analysis relies on a new and simple partitioning based technique and takes well-known margin conditions into account that describe the behavior of the data-generating distribution. It turns out that the rates outperform known rates of several other learning algorithms under suitable sets of assumptions. From a practical point of view, the author shows that a common training and validation procedure achieves the theoretical rates adaptively, that is, without knowing the margin parameters in advance.

This item is Non-Returnable

Details

  • ISBN-13: 9783658295905
  • ISBN-10: 3658295902
  • Publisher: Springer Spektrum
  • Publish Date: March 2020
  • Dimensions: 8.27 x 5.83 x 0.31 inches
  • Shipping Weight: 0.4 pounds
  • Page Count: 126

Related Categories

You May Also Like...

    1

BAM Customer Reviews