Search Results - (((((((kant OR want) OR mantis) OR when) OR cantor) OR anne) OR share) OR hints) algorithms.

  1. 121

    Handbook of Mathematical Induction. by Gunderson, David S.

    Published 2014
    Table of Contents: “…Chapter 14: Logic and languageChapter 15: Graphs; Chapter 16: Recursion and algorithms; Chapter 17: Games and recreations; Chapter 18: Relations and functions; Chapter 19: Linear and abstract algebra; Chapter 20: Geometry; Chapter 21: Ramsey theory; Chapter 22: Probability and statistics; Part III: Solutions and hints to exercises; Chapter 23: Solutions: Foundations; Chapter 24: Solutions: Inductive techniques applied to the infinite; Chapter 25: Solutions: Paradoxes and sophisms; Chapter 26: Solutions: Empirical induction; Chapter 27: Solutions: Identities.…”
    Full text (MFA users only)
    Electronic eBook
  2. 122

    Data Science : The Executive Summary - a Technical Book for Non-Technical Professionals. by Cady, Field

    Published 2020
    Table of Contents: “…Chapter 3 Working with Modern Data -- 3.1 Unstructured Data and Passive Collection -- 3.2 Data Types and Sources -- 3.3 Data Formats -- 3.3.1 CSV Files -- 3.3.2 JSON Files -- 3.3.3 XML and HTML -- 3.4 Databases -- 3.4.1 Relational Databases and Document Stores -- 3.4.2 Database Operations -- 3.5 Data Analytics Software Architectures -- 3.5.1 Shared Storage -- 3.5.2 Shared Relational Database -- 3.5.3 Document Store + Analytics RDB -- 3.5.4 Storage + Parallel Processing -- Chapter 4 Telling the Story, Summarizing Data -- 4.1 Choosing What to Measure…”
    Full text (MFA users only)
    Electronic eBook
  3. 123

    Artificial intelligence : approaches, tools, and applications

    Published 2011
    Table of Contents: “…EVOLUTIONARY COMPUTING ; 2.1. Genetic Algorithms ; 2.2. Mechanism of a Genetic Algorithm ; 3. …”
    Full text (MFA users only)
    Electronic eBook
  4. 124

    Advanced Analytics with R and Tableau. by Stirrup, Jen

    Published 2016
    Table of Contents: “…; Understanding the performance of the result; Next steps; Sharing our data analysis using Tableau; Interpreting the results; Summary; Chapter 5: Classifying Data with Tableau; Business understanding; Understanding the data; Data preparation; Describing the data; Data exploration; Modeling in R; Analyzing the results of the decision tree; Model deployment; Decision trees in Tableau using R; Bayesian methods; Graphs; Terminology and representations; Graph implementations; Summary.…”
    Full text (MFA users only)
    Electronic eBook
  5. 125

    Introduction to identity-based encryption by Martin, Luther

    Published 2008
    Table of Contents: “…Introduction -- Basic mathematical concepts and properties -- Properties of elliptic curves -- Divisors and the Tate pairing -- Cryptography and computational complexity -- Related cryptographic algorithms -- The Cocks IBE scheme -- Boneh-Franklin IBE -- Boneh-Boyen IBE -- Sakai-Kasahara IBE -- Hierarchial IBE and master secret sharing -- Calculating pairings.…”
    Full text (MFA users only)
    Electronic eBook
  6. 126

    Integrated and collaborative product development environment : technologies and implementations by Li, W. D.

    Published 2006
    Table of Contents: “…Intelligent Optimisation of Process Planning; 5.1 Intelligent Optimisation Strategies for CAPP Systems; 5.2 Knowledge Representation of Process Plans; 5.2.1 Process plan representation; 5.2.2 Machining cost criteria for process plans; 5.2.3 Precedence constraints; 5.3 A Hybrid GA/SA-based Optimisation Method; 5.3.1 Overview of the algorithm; 5.3.2 Genetic algorithm -- phase 1; 5.3.3 Simulated annealing algorithm -- phase 2; 5.3.4 Constraint handling algorithm.…”
    Full text (MFA users only)
    Electronic eBook
  7. 127

    Knowledge-based Intelligent System. by Jang, Hyejung

    Published 2014
    Full text (MFA users only)
    Electronic eBook
  8. 128
  9. 129
  10. 130

    Data Analytics in Bioinformatics : A Machine Learning Perspective. by Satpathy, Rabinarayan

    Published 2021
    Table of Contents: “…3.4.1 Comparative Analysis of ANN With Broadly Used Traditional ML Algorithms -- 3.5 Critical Analysis -- 3.6 Conclusion -- References -- Part 2: MACHINE LEARNING AND GENOMIC TECHNOLOGY, FEATURE SELECTION AND DIMENSIONALITY REDUCTION -- 4 Dimensionality Reduction Techniques: Principles, Benefits, and Limitations -- 4.1 Introduction -- 4.2 The Benefits and Limitations of Dimension Reduction Methods -- 4.3 Components of Dimension Reduction -- 4.3.1 Feature Selection -- 4.3.2 Feature Reduction -- 4.4 Methods of Dimensionality Reduction -- 4.4.1 Principal Component Analysis (PCA)…”
    Full text (MFA users only)
    Electronic eBook
  11. 131

    Media smart : lessons, tips and strategies for librarians, classroom instructors and other information professionals by Burkhardt, Joanna M.

    Published 2022
    Table of Contents: “…Expertise, Authority and Credibility -- Experts -- Sharing information -- Evaluating information -- Authority -- How can authority be evaluated? …”
    Full text (MFA users only)
    Electronic eBook
  12. 132

    Artificial Intelligence in Semiconductor Industry - Materials to Applications. by Wee, Hui-Ming

    Published 2021
    Table of Contents: “…Cover -- Guest editorial -- Efficient VLSI architecture for FIR filter design using modified differential evolution ant colony optimization algorithm -- Optimized DA-reconfigurable FIR filters for software defined radio channelizer applications -- Grid -- connected operation and performance of hybrid DG having PV and PEMFC -- High speed data encryption technique with optimized memory based RSA algorithm for communications -- A 10-bit 200 MS/s pipelined ADCwith parallel sampling and switched op-amp sharing technique…”
    Full text (MFA users only)
    Electronic eBook
  13. 133

    Machine Learning for Mobile : Practical Guide to Building Intelligent Mobile Applications Powered by Machine Learning. by Gopalakrishnan, Revathi

    Published 2018
    Table of Contents: “…Chapter 2: Supervised and Unsupervised Learning AlgorithmsIntroduction to supervised learning algorithms; Deep dive into supervised learning algorithms; Naive Bayes; Decision trees; Linear regression; Logistic regression; Support vector machines; Random forest; Introduction to unsupervised learning algorithms; Deep dive into unsupervised learning algorithms; Clustering algorithms; Clustering methods; Hierarchical agglomerative clustering methods; K-means clustering; Association rule learning algorithm; Summary; References; Chapter 3: Random Forest on iOS; Introduction to algorithms…”
    Full text (MFA users only)
    Electronic eBook
  14. 134

    Can markets compute equilibria? by Monroe, Hunter K.

    Published 2009
    Full text (MFA users only)
    Electronic eBook
  15. 135

    Agent-based computing

    Published 2010
    Table of Contents: “…Analysis of Algorithm -- 2.1.1. Chain-Like Agent Structure -- 2.1.2. …”
    Full text (MFA users only)
    Electronic eBook
  16. 136
  17. 137
  18. 138
  19. 139

    Urodynamics : a quick pocket guide by Vignoli, Giancarlo

    Published 2016
    Table of Contents: “…The framework of basic science -- Key symptoms analysis and diagnostic algorithms -- Physical examination and laboratory evaluation -- Urodynamic testing: when and which -- Voiding diary and Pad testing -- Non-invasive urodynamics -- Conventional urodynamics-conventional urodynamics in pediatric age -- Electromyogtrahy -- Urethral profilometry -- Videourodynamics -- Ambulatory urodynamics -- Urodynamics of upper urinary tract.…”
    Full text (MFA users only)
    Electronic eBook
  20. 140

    Mount Sinai expert guides. Hepatology

    Published 2014
    Table of Contents: “…Cover; Title page; Copyright page; Contents; List of Contributors; Series Foreword; Preface; Abbreviation List; About the Companion Website; PART 1: Hepatology; CHAPTER 1: Approach to the Patient with Abnormal Liver Tests; Section 1: Background; Definition of disease; Disease classification; Etiology; Pathology/pathogenesis; Section 2: Prevention; Section 3: Diagnosis; Typical presentation; Clinical diagnosis; Laboratory diagnosis; Diagnostic algorithm; Potential pitfalls/common errors made regarding diagnosis of disease; Section 4: Treatment; When to hospitalize…”
    Full text (MFA users only)
    Electronic eBook