Search Results - (((((((want OR when) OR semantic) OR arts) OR cantor) OR anne) OR maarten) OR santis) algorithms.

Search alternatives:

  1. 601

    Language, vision, and music : selected papers from the 8th International Workshop on the Cognitive Science of Natural Language Processing, Galway, Ireland, 1999

    Published 2002
    Table of Contents: “…-- The analogical foundations of creativity in language, culture &amp -- the arts: "The Upper Paleolithic to 2100CE" -- Creativity in humans, computers, and the rest of God's creatures. …”
    Full text (MFA users only)
    Electronic Conference Proceeding eBook
  2. 602

    Theory and application of special functions : proceedings of an advanced seminar sponsored by the Mathematics Research Center, the University of Wisconsin-Madison, March 31-April 2...

    Published 1975
    Table of Contents: “…Nonlinear recurrence algorithms for elliptic integrals and elliptic functions; 4. …”
    Full text (MFA users only)
    Electronic Conference Proceeding eBook
  3. 603

    Beginning software engineering by Stephens, Rod, 1961-

    Published 2015
    Table of Contents: “…WhatWhen; Where; Why; How; Study Users; Refining Requirements; Copy Existing Systems; Clairvoyance; Brainstorm; Recording Requirements; UML; User Stories; Use Cases; Prototypes; Requirements Specification; Validation and Verification; Changing Requirements; Summary; CHAPTER 5: HIGH-LEVEL DESIGN; The Big Picture; What to Specify; Security; Hardware; User Interface; Internal Interfaces; External Interfaces; Architecture; Monolithic; Client/Server; Component-Based; Service-Oriented; Data-Centric; Event-Driven; Rule-Based; Distributed; Mix and Match; Reports; Other Outputs; Database; Audit Trails.…”
    Full text (MFA users only)
    Electronic eBook
  4. 604

    Securing SQL server : protecting Your database from attackers by Cherry, Denny

    Published 2015
    Table of Contents: “…; Personally Identifiable Information; When should security objectives been identified?; How to identify security objectives?…”
    Full text (MFA users only)
    Electronic eBook
  5. 605

    Mathematics of evolution and phylogeny

    Published 2005
    Table of Contents: “…List of Contributors -- 1 The minimum evolution distance-based approach of phylogenetic inference -- 1.1 Introduction -- 1.2 Tree metrics -- 1.2.1 Notation and basics -- 1.2.2 Three-point and four-point conditions -- 1.2.3 Linear decomposition into split metrics -- 1.2.4 Topological matrices -- 1.2.5 Unweighted and balanced averages -- 1.2.6 Alternate balanced basis for tree metrics -- 1.2.7 Tree metric inference in phylogenetics -- 1.3 Edge and tree length estimation -- 1.3.1 The LS approach -- 1.3.2 Edge length formulae -- 1.3.3 Tree length formulae -- 1.3.4 The positivity constraint -- 1.3.5 The balanced scheme of Pauplin -- 1.3.6 Semple and Steel combinatorial interpretation -- 1.3.7 BME: a WLS interpretation -- 1.4 The agglomerative approach -- 1.4.1 UPGMA and WPGMA -- 1.4.2 NJ as a balanced minimum evolution algorithm -- 1.4.3 Other agglomerative algorithms -- 1.5 Iterative topology searching and tree building -- 1.5.1 Topology transformations.; 1.5.2 A fast algorithm for NNIs with OLS -- 1.5.3 A fast algorithm for NNIs with BME -- 1.5.4 Iterative tree building with OLS -- 1.5.5 From OLS to BME -- 1.6 Statistical consistency -- 1.6.1 Positive results -- 1.6.2 Negative results -- 1.6.3 Atteson's safety radius analysis -- 1.7 Discussion -- Acknowledgements -- 2 Likelihood calculation in molecular phylogenetics -- 2.1 Introduction -- 2.2 Markov models of sequence evolution -- 2.2.1 Independence of sites -- 2.2.2 Setting up the basic model -- 2.2.3 Stationary distribution -- 2.2.4 Time reversibility -- 2.2.5 Rate of mutation -- 2.2.6 Probability of sequence evolution on a tree -- 2.3 Likelihood calculation: the basic algorithm -- 2.4 Likelihood calculation: improved models -- 2.4.1 Choosing the rate matrix -- 2.4.2 Among site rate variation -- 2.4.3 Site-specific rate variation -- 2.4.4 Correlated evolution between sites -- 2.5 Optimizing parameters -- 2.5.1 Optimizing continuous parameters -- 2.5.2 Searching for the optimal tree.; 2.5.3 Alternative search strategies -- 2.6 Consistency of the likelihood approach -- 2.6.1 Statistical consistency -- 2.6.2 Identifiability of the phylogenetic models -- 2.6.3 Coping with errors in the model -- 2.7 Likelihood ratio tests -- 2.7.1 When to use the asymptotic x2 distribution -- 2.7.2 Testing a subset of real parameters -- 2.7.3 Testing parameters with boundary conditions -- 2.7.4 Testing trees -- 2.8 Concluding remarks -- Acknowledgements -- 3 Bayesian inference in molecular phylogenetics -- 3.1 The likelihood function and maximum likelihood estimates -- 3.2 The Bayesian paradigm -- 3.3 Prior -- 3.4 Markov chain Monte Carlo -- 3.4.1 Metropolis-Hastings algorithm -- 3.4.2 Single-component Metropolis-Hastings algorithm -- 3.4.3 Gibbs sampler -- 3.4.4 Metropolis-coupled MCMC -- 3.5 Simple moves and their proposal ratios -- 3.5.1 Sliding window using uniform proposal -- 3.5.2 Sliding window using normally distributed proposal.; 3.5.3 Sliding window using normal proposal in multidimensions -- 3.5.4 Proportional shrinking and expanding -- 3.6 Monitoring Markov chains and processing output -- 3.6.1 Diagnosing and validating MCMC algorithms -- 3.6.2 Gelman and Rubin's potential scale reduction statistic -- 3.6.3 Processing output -- 3.7 Applications to molecular phylogenetics -- 3.7.1 Estimation of phylogenies -- 3.7.2 Estimation of species divergence times -- 3.8 Conclusions and perspectives -- Acknowledgements -- 4 Statistical approach to tests involving phylogenies -- 4.1 The statistical approach to phylogenetic inference -- 4.2 Hypotheses testing -- 4.2.1 Null and alternative hypotheses -- 4.2.2 Test statistics -- 4.2.3 Significance and power -- 4.2.4 Bayesian hypothesis testing -- 4.2.5 Questions posed as function of the tree parameter -- 4.2.6 Topology of treespace -- 4.2.7 The data -- 4.2.8 Statistical paradigms -- 4.2.9 Distributions on treespace -- 4.3 Different types of tests involving phylogenies.; 4.3.1 Testing t1 versus t2 -- 4.3.2 Conditional tests -- 4.3.3 Modern Bayesian hypothesis testing -- 4.3.4 Bootstrap tests -- 4.4 Non-parametric multivariate hypothesis testing -- 4.4.1 Multivariate con.dence regions -- 4.5 Conclusions: there are many open problems -- Acknowledgements -- 5 Mixture models in phylogenetic inference -- 5.1 Introduction: models of gene-sequence evolution -- 5.2 Mixture models -- 5.3 Defining mixture models -- 5.3.1 Partitioning and mixture models -- 5.3.2 Discrete-gamma model as a mixture model -- 5.3.3 Combining rate and pattern-heterogeneity -- 5.4 Digression: Bayesian phylogenetic inference -- 5.4.1 Bayesian inference of trees via MCMC -- 5.5 A mixture model combining rate and pattern-heterogeneity -- 5.5.1 Selected simulation results -- 5.6 Application of the mixture model to inferring the phylogeny of the mammals -- 5.6.1 Model testing -- 5.7 Results -- 5.7.1 How many rate matrices to include in the mixture model?…”
    Full text (MFA users only)
    Electronic eBook
  6. 606
  7. 607

    Short Stories and Political Philosophy : Power, Prose, and Persuasion. by Hale, Kimberly Hurd

    Published 2018
    Table of Contents: “…Social Interactions, Observation, and JusticeHacking the Human Condition: Enter Big Data; Digital Natives; Surveillance and the Human Condition; The Economics of Big Data; Increased Data, Better Algorithms, More Perfect Matches; Notes; Bibliography; Chapter 3; Paolo Bacigalupi's "Pop Squad" and the Examined Life Worth Living; The Symposium and the Search for Immortality; Children of the Body; Children of the Soul; Meaningless Life; Notes; Bibliography; Chapter 4; All the World's a Cage; Meaning and the Masses; Soul Meets Body; The End of Art; Conclusion; Notes; Bibliography; Chapter 5…”
    Full text (MFA users only)
    Electronic eBook
  8. 608
  9. 609

    Electronic Skin by Ibrahim, Ali

    Published 2021
    Full text (MFA users only)
    Electronic eBook
  10. 610

    Minor Surgery at a Glance. by Mohan, Helen

    Published 2017
    Table of Contents: “…Part 3 Core surgical knowledge -- 17 Skin incisions -- Scalpels -- Holding the scalpel to make an incision -- Basic principles for incision -- Minor surgical incisions -- Techniques for a good scar -- Electrodissection to incise -- 18 Principles of wound closure -- Plan the skin incision -- Choosing the suture size -- Choosing the suture material -- Suture placement -- Technique for simple interrupted sutures -- When should I use a different suturing technique? …”
    Full text (MFA users only)
    Electronic eBook
  11. 611

    Mechanisms and games for dynamic spectrum allocation

    Published 2013
    Full text (MFA users only)
    Electronic eBook
  12. 612

    The SMART CYBER ECOSYSTEM FOR SUSTAINABLE DEVELOPMENT.

    Published 2021
    Full text (MFA users only)
    Electronic eBook
  13. 613

    A primer on experiments with mixtures by Cornell, John A., 1941-

    Published 2011
    Table of Contents: “…QuestionsAppendix 2A: Least-Squares Estimation Formula for the Polynomial Coefficients and Their Variances: Matrix Notation; Appendix 2B: Cubic and Quartic Polynomials and Formulas for the Estimates of the Coefficients; Appendix 2C: The Partitioning of the Sources in the Analysis of Variance Table When Fitting the Scheffé Mixture Models; 3. Multiple Constraints on the Component Proportions; 3.1 Lower-Bound Restrictions on Some or All of the Component Proportions; 3.2 Introducing L-Pseudocomponents; 3.3 A Numerical Example of Fitting An L-Pseudocomponent Model.…”
    Full text (MFA users only)
    Electronic eBook
  14. 614

    Missing Data Methods : Cross-Sectional Methods and Applications. by Drukker, David M.

    Published 2011
    Table of Contents: “…NotesAcknowledgment; References; Orthogonality in the single index model; On the estimation of selection models when participation is endogenous and misclassified; Introduction; The model and estimator; Sampling algorithm; Simulated data example; Summary and conclusions; Notes; Acknowledgments; References; summary tables for additional simulations; Process for simulating non -- normal errors; Efficient probit estimation with partially missing covariates; Introduction; Model Specification; Efficient estimators and variances; Testing assumptions and possible modifications; Other models.…”
    Full text (MFA users only)
    Electronic eBook
  15. 615

    A Primer on Machine Learning Applications in Civil Engineering by Deka, Paresh Chandra

    Published 2019
    Table of Contents: “…Cover -- Half Title -- Title Page -- Copyright Page -- Dedication -- Contents -- Preface -- Acknowledgments -- A Primer on Machine Learning Applications in Civil Engineering -- Author -- 1: Introduction -- 1.1 Machine Learning -- 1.2 Learning from Data -- 1.3 Research in Machine Learning: Recent Progress -- 1.4 Artificial Neural Networks -- 1.5 Fuzzy Logic (FL) -- 1.6 Genetic Algorithms -- 1.7 Support Vector Machine (SVM) -- 1.8 Hybrid Approach (HA) -- Bibliography -- 2: Artificial Neural Networks -- 2.1 Introduction to Fundamental Concepts and Terminologies -- 2.2 Evolution of Neural Networks -- 2.3 Models of ANN -- 2.4 McCulloch-Pitts Model -- 2.5 Hebb Network -- 2.6 Summary -- 2.7 Supervised Learning Network -- 2.7.1 Perceptron Network -- 2.7.2 Adaptive Linear Neuron -- 2.7.3 Back-Propagation Network -- 2.7.4 Radial Basis Function Network -- 2.7.5 Generalized Regression Neural Networks -- 2.7.6 Summary -- 2.8 Unsupervised Learning Networks -- 2.8.1 Introduction -- 2.8.2 Kohonen Self-Organizing Feature Maps -- 2.8.3 Counter Propagation Network -- 2.8.4 Adaptive Resonance Theory Network -- 2.8.5 Summary -- 2.9 Special Networks -- 2.9.1 Introduction -- 2.9.2 Gaussian Machine -- 2.9.3 Cauchy Machine -- 2.9.4 Probabilistic Neural Network -- 2.9.5 Cascade Correlation Neural Network -- 2.9.6 Cognitive Network -- 2.9.7 Cellular Neural Network -- 2.9.8 Optical Neural Network -- 2.9.9 Summary -- 2.10 Working Principle of ANN -- 2.10.1 Introduction -- 2.10.2 Types of Activation Function -- 2.10.3 ANN Architecture -- 2.10.4 Learning Process -- 2.10.5 Feed-Forward Back Propagation -- 2.10.6 Strengths of ANN -- 2.10.7 Weaknesses of ANN -- 2.10.8 Working of the Network -- 2.10.9 Summary -- Bibliography -- 3: Fuzzy Logic -- 3.1 Introduction to Classical Sets and Fuzzy Sets -- 3.1.1 Classical Sets -- 3.1.2 Fuzzy Sets -- 3.1.3 Summary.…”
    Full text (MFA users only)
    Electronic eBook
  16. 616

    Artificial intelligence research and development : current challenges, new trends and applications

    Published 2018
    Table of Contents: “…Step 1: DrugBank -- Unsupervised Systems-Level Learning Mechanism Based on Bayesian-Inference -- Towards a Universal Neural Network Encoder for Time Series -- Determining Classic Versus Modern Style in Fashion -- Data Science, Recommender Systems and Case-Based Reasoning -- Big Data Analytics for Obesity Prediction -- A Method to Integrate Semantic Criteria into a Recommender System Based on ELECTRE Outranking Relations -- A Study on Contextual Influences on Automatic Playlist Continuation.…”
    Full text (MFA users only)
    Electronic Conference Proceeding eBook
  17. 617

    Microwave and millimeter wave circuits and systems : emerging design, technologies, and applications

    Published 2012
    Table of Contents: “…1.1.7 MBF Model -- the Memoryless PA Behavioural Model of ChoiceAcknowledgements; References; 2 Artificial Neural Network in Microwave Cavity Filter Tuning; 2.1 Introduction; 2.2 Artificial Neural Networks Filter Tuning; 2.2.1 The Inverse Model of the Filter; 2.2.2 Sequential Method; 2.2.3 Parallel Method; 2.2.4 Discussion on the ANN's Input Data; 2.3 Practical Implementation -- Tuning Experiments; 2.3.1 Sequential Method; 2.3.2 Parallel Method; 2.4 Influence of the Filter Characteristic Domain on Algorithm Efficiency; 2.5 Robots in the Microwave Filter Tuning; 2.6 Conclusions; Acknowledgement…”
    Full text (MFA users only)
    Electronic eBook
  18. 618

    Moments, Positive Polynomials And Their Applications.

    Published 2009
    Full text (MFA users only)
    Electronic eBook
  19. 619

    Model Building in Mathematical Programming. by Williams, H. Paul

    Published 2013
    Table of Contents: “…9.4 Extra conditions applied to linear programming models -- 9.5 Special kinds of integer programming model -- 9.6 Column generation -- Chapter 10: Building integer programming models II -- 10.1 Good and bad formulations -- 10.2 Simplifying an integer programming model -- 10.3 Economic information obtainable by integer programming -- 10.4 Sensitivity analysis and the stability of a model -- 10.5 When and how to use integer programming -- Chapter 11: The implementation of a mathematical programming system of planning -- 11.1 Acceptance and implementation…”
    Full text (MFA users only)
    Electronic eBook
  20. 620

    Pharmacology in anesthesia practice

    Published 2013
    Full text (MFA users only)
    Electronic eBook