Classification Functions for Machine Learning and Data Mining

Sasao, Tsutomu

  • 出版商: Springer
  • 出版日期: 2024-07-15
  • 售價: $2,180
  • 貴賓價: 9.5$2,071
  • 語言: 英文
  • 頁數: 144
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 3031353498
  • ISBN-13: 9783031353499
  • 相關分類: Machine LearningData-mining
  • 海外代購書籍(需單獨結帳)

相關主題

商品描述

This book introduces a novel perspective on machine learning, offering distinct advantages over neural network-based techniques. This approach boasts a reduced hardware requirement, lower power consumption, and enhanced interpretability. The applications of this approach encompass high-speed classifications, including packet classification, network intrusion detection, and exotic particle detection in high-energy physics. Moreover, it finds utility in medical diagnosis scenarios characterized by small training sets and imbalanced data. The resulting rule generated by this method can be implemented either in software or hardware. In the case of hardware implementation, circuit design can employ look-up tables (memory), rather than threshold gates.
The methodology described in this book involves extracting a set of rules from a training set, composed of categorical variable vectors and their corresponding classes. Unnecessary variables are eliminated, and the rules are simplified before being transformed into a sum-of-products (SOP) form. The resulting SOP exhibits the ability to generalize and predict outputs for new inputs. The effectiveness of this approach is demonstrated through numerous examples and experimental results using the University of California-Irvine (UCI) dataset.
This book is primarily intended for graduate students and researchers in the fields of logic synthesis, machine learning, and data mining. It assumes a foundational understanding of logic synthesis, while familiarity with linear algebra and statistics would be beneficial for readers.

商品描述(中文翻譯)

本書介紹了一種關於機器學習的新穎視角,提供了相較於基於神經網絡技術的明顯優勢。這種方法具有降低硬體需求、降低功耗和增強可解釋性的特點。此方法的應用範圍包括高速分類,如封包分類、網路入侵偵測以及高能物理中的異常粒子偵測。此外,它在醫療診斷場景中也具有實用性,特別是在小型訓練集和不平衡數據的情況下。這種方法生成的規則可以在軟體或硬體中實現。在硬體實現的情況下,電路設計可以使用查找表(記憶體),而不是閾值閘。

本書所描述的方法論涉及從訓練集中提取一組規則,該訓練集由類別變數向量及其相應類別組成。多餘的變數會被排除,並在轉換為乘積和(SOP)形式之前簡化規則。所得到的SOP展現了對新輸入進行概括和預測輸出的能力。這種方法的有效性通過使用加州大學歐文分校(UCI)數據集的多個例子和實驗結果得以證明。

本書主要針對邏輯綜合、機器學習和數據挖掘領域的研究生和研究人員。它假設讀者對邏輯綜合有基本的理解,而熟悉線性代數和統計學將對讀者有所幫助。

作者簡介

Tsutomu Sasao received B.E., M.E., and Ph.D. degrees in Electronics Engineering from Osaka University, Osaka Japan, in 1972, 1974, and 1977, respectively. He has held faculty/research positions at Osaka University, Japan; IBM T. J. Watson Research Center, Yorktown Height, NY; the Naval Postgraduate School, Monterey, CA; Kyushu Institute of Technology, Japan; and Meiji University, Kawasaki, Japan. Currently, he is a visiting researcher of Meiji University, Japan. He is a Life Fellow of the IEEE, and has published many books on logic design.

作者簡介(中文翻譯)

佐藤勉於1972年、1974年和1977年分別在日本大阪大學獲得電子工程學士、碩士和博士學位。他曾在日本大阪大學、IBM T. J. Watson研究中心(紐約州約克鎮高地)、海軍研究生院(加州蒙特雷)、九州科技大學(日本)以及明治大學(日本川崎)擔任教職或研究職位。目前,他是明治大學的訪問研究員。他是IEEE的終身會士,並出版了多本有關邏輯設計的書籍。