Search Results - (((((((kent OR want) OR semantic) OR win) OR cantor) OR anne) OR shape) OR hints) algorithms.
Suggested Topics within your search.
Suggested Topics within your search.
- Data processing 47
- Artificial intelligence 46
- Mathematics 32
- Machine learning 29
- Mathematical models 27
- artificial intelligence 23
- Data mining 22
- Algorithms 18
- Technological innovations 17
- Artificial Intelligence 16
- Python (Computer program language) 16
- Computer science 13
- Social aspects 13
- algorithms 13
- Computer networks 12
- Digital techniques 12
- History 12
- Image processing 12
- Mathematical optimization 12
- Big data 11
- Data Mining 11
- Information technology 11
- methods 11
- Neural networks (Computer science) 10
- Application software 9
- Development 9
- Engineering 9
- Machine Learning 9
- Pattern recognition systems 9
- Computer graphics 8
Search alternatives:
- kent »
-
201
Pattern discovery in biomolecular data : tools, techniques, and applications
Published 1999Table of Contents: “…Discovering patterns in DNA sequences by the algorithmic significance method / Aleksandar Milosavljevic -- Assembling blocks / Jorja G. …”
Full text (MFA users only)
Electronic eBook -
202
Vision Geometry.
Published 1991Table of Contents: “…Star-Shapedness of Digitized Planar ShapesAlgorithms for the Decomposition of Convex Polygons -- Decomposition of Discrete Curves into Piecewise Straight Segments in Linear Time -- Digitization Schemes and the Recognition of Digital Straight Lines, Hyperplanes, and Flats in Arbitrary Dimensions -- Computational Geometry and Computer Vision -- Convexity, Visibility, and Orthogonal Polygons…”
Full text (MFA users only)
Electronic eBook -
203
-
204
Big Data, IoT, and Machine Learning : Tools and Applications.
Published 2020Table of Contents: “…Chapter 3 Reviews Analysis of Apple Store Applications Using Supervised Machine Learning -- 3.1 Introduction -- 3.2 Literature Review -- 3.2.1 Machine Learning Algorithms -- 3.2.2 Feature Extraction Algorithms -- 3.3 Proposed Methodology -- 3.3.1 Data Collection -- 3.3.2 Feature Extraction -- 3.3.3 Data Analysis and Sentiment Analysis -- Text Processing -- 3.3.4 Text Normalisation -- 3.4 Feature Extraction Algorithm -- 3.4.1 CountVectorizer -- 3.4.2 TfidfVectorizer (TF-IDF) -- 3.5 Supervised ML Classification -- 3.6 Experiment Design -- 3.7 Experimental Results and Analysis…”
Full text (MFA users only)
Electronic eBook -
205
Principles of artificial neural networks
Published 2013Table of Contents: “…Fundamentals of biological neural networks -- ch. 3. Basic principles of ANNs and their early structures. 3.1. Basic principles of ANN design. 3.2. …”
Full text (MFA users only)
Electronic eBook -
206
Knowledge discovery for business information systems
Published 2001Table of Contents: “…Problem Description -- 3. The FUP Algorithm for the Insertion Only Case -- 4. The FUP Algorithm for the Deletions Only Case -- 5. …”
Full text (MFA users only)
Electronic eBook -
207
Introduction to graph theory
Published 2009Table of Contents: “…What Is Mathematical Induction; 7.2. Graph Theory Algorithms and Their Complexity; 7.3. Answers and Hints to Selected Exercises; 7.4. …”
Full text (MFA users only)
Electronic eBook -
208
In silico dreams : how artificial intelligence and biotechnology will create the medicines of the future
Published 2021Full text (MFA users only)
Electronic eBook -
209
Advanced Artificial Intelligence.
Published 2011Table of Contents: “…Applications of temporal and spatial logic; 4.7.4. Randell algorithm; Exercises; Chapter 5 Case-Based Reasoning; 5.1 Overview; 5.2 Basic Notations; 5.3 Process Model; 5.4 Case Representation; 5.4.1 Semantic Memory Unit; 5.4.2 Memory Network; 5.5 Case Indexing; 5.6 Case Retrieval; 5.7 Similarity Relations in CBR; 5.7.1 Semantic similarity; 5.7.2 Structural similarity; 5.7.3 Goal's features; 5.7.4 Individual similarity; 5.7.5 Similarity assessment; 5.8 Case Reuse; 5.9 Case Retainion; 5.10 Instance-Based Learning.…”
Full text (MFA users only)
Electronic eBook -
210
Deep Learning Quick Reference : Useful hacks for training and optimizing deep neural networks with TensorFlow and Keras.
Published 2018Table of Contents: “…Drawbacks to consider when using a neural network for regressionUsing deep neural networks for regression; How to plan a machine learning problem; Defining our example problem; Loading the dataset; Defining our cost function; Building an MLP in Keras; Input layer shape; Hidden layer shape; Output layer shape; Neural network architecture; Training the Keras model; Measuring the performance of our model; Building a deep neural network in Keras; Measuring the deep neural network performance; Tuning the model hyperparameters; Saving and loading a trained Keras model; Summary.…”
Full text (MFA users only)
Electronic eBook -
211
Web-based learning : men and machines - proceedings of the first international conference on web-based learning in china (icwl 2002).
Published 2002Table of Contents: “…Patterns of Web Based Learning in the Semantic Web Era ; PART THREE Tools.…”
Full text (MFA users only)
Electronic eBook -
212
Internet+ and electronic business in China : innovation and applications
Published 2018Table of Contents: “…Emotional analysis of online reviews on e-business platforms -- Chapter 14. Semantic search of online reviews on e-business platforms -- Part IV. …”
Full text (MFA users only)
Electronic eBook -
213
-
214
Slantwise moves : games, literature, and social invention in nineteenth-century America
Published 2018Full text (MFA users only)
Electronic eBook -
215
Technologies for Engineering Manufacturing Systems Control in Closed Loop.
Published 2013Table of Contents: “…Intro; 1 Introduction; 2 Basic Principles; 2.1 Technologies for studying Behavior; 2.2 Plants; 2.3 Controllers; 2.3.1 IEC 61131-3; 2.3.2 IEC 61499-1; 2.4 System Models; 2.4.1 Syntax; 2.4.2 Semantics; 2.5 Basics of Specifications; 2.5.1 Computation Tree Logic; 2.5.2 Extended Computation Tree Logic; 2.5.3 Timed Computation Tree Logic; 2.5.4 Symbolic Timing Diagrams; 2.6 Closed-Loop Composition; 2.7 Model Checking; 2.7.1 General Remarks; 2.7.2 Model Checking Algorithm; 2.8 Summary; 3 Formal Modeling of Plant, Controller, and the Closed Loop; 3.1 Demonstration Example; 3.2 Formal Plant Modeling.…”
Full text (MFA users only)
Electronic eBook -
216
-
217
Solutions in lidar profiling of the atmosphere
Published 2015Table of Contents: “…1.6.1 Algorithm and Solution Uncertainty1.6.2 Numerical Simulations and Experimental Data; 1.7 Examination of the Remaining Offset in the Backscatter Signal by~Analyzing the Shape of the Integrated Signal; 1.8 Issues in the Examination of the Lidar Overlap Function; 1.8.1 Influence of Distortions in the Lidar Signal when Determining the~Overlap Function; 1.8.2 Issues of Lidar Signal Inversion within the Incomplete Overlap Area; Chapter 2 Essentials and Issues in Separating the Backscatter and Transmission Terms in The Lidar Equation.…”
Full text (MFA users only)
Electronic eBook -
218
-
219
Information Theory Meets Power Laws : Stochastic Processes and Language Models.
Published 2020Full text (MFA users only)
Electronic eBook -
220
Parts-feeding systems for assembly : organisation, logistics and automation
Published 2015Table of Contents: “…A model for kitting operations planningRobust optimization approach to production system with failure in rework and breakdown under uncertainty: evolutionary methods; Re-layout of an assembly area: a case study at Bosch Rexroth Oil Control; A simple mechanical measurement system for the posture evaluation of wing components using the PSO and ICP algorithms; Implementation framework for a fully flexible assembly system (F-FAS); A genetic algorithm for supermarket location problem; New Kanban model for tow-train feeding system design.…”
Full text (MFA users only)
Electronic eBook