Machine Learning and Predictive Models. Contents are subject to change. For the latest updates visit

Similar documents
Python Machine Learning

(Sub)Gradient Descent

Lecture 1: Machine Learning Basics

A Decision Tree Analysis of the Transfer Student Emma Gunu, MS Research Analyst Robert M Roe, PhD Executive Director of Institutional Research and

Module 12. Machine Learning. Version 2 CSE IIT, Kharagpur

Learning From the Past with Experiment Databases

Analysis of Hybrid Soft and Hard Computing Techniques for Forex Monitoring Systems

Ryerson University Sociology SOC 483: Advanced Research and Statistics

Generative models and adversarial training

Purdue Data Summit Communication of Big Data Analytics. New SAT Predictive Validity Case Study

Assignment 1: Predicting Amazon Review Ratings

Deep search. Enhancing a search bar using machine learning. Ilgün Ilgün & Cedric Reichenbach

Data Fusion Through Statistical Matching

Machine Learning and Data Mining. Ensembles of Learners. Prof. Alexander Ihler

Rule Learning With Negation: Issues Regarding Effectiveness

Impact of Cluster Validity Measures on Performance of Hybrid Models Based on K-means and Decision Trees

The 9 th International Scientific Conference elearning and software for Education Bucharest, April 25-26, / X

arxiv: v1 [cs.lg] 15 Jun 2015

STT 231 Test 1. Fill in the Letter of Your Choice to Each Question in the Scantron. Each question is worth 2 point.

Visit us at:

Statistics and Data Analytics Minor

CS Machine Learning

STA 225: Introductory Statistics (CT)

Artificial Neural Networks written examination

Axiom 2013 Team Description Paper

On Human Computer Interaction, HCI. Dr. Saif al Zahir Electrical and Computer Engineering Department UBC

Australian Journal of Basic and Applied Sciences

Introduction to Ensemble Learning Featuring Successes in the Netflix Prize Competition

Rule Learning with Negation: Issues Regarding Effectiveness

Lahore University of Management Sciences. FINN 321 Econometrics Fall Semester 2017

System Implementation for SemEval-2017 Task 4 Subtask A Based on Interpolated Deep Neural Networks

Evolution of Symbolisation in Chimpanzees and Neural Nets

A New Perspective on Combining GMM and DNN Frameworks for Speaker Adaptation

ScienceDirect. A Framework for Clustering Cardiac Patient s Records Using Unsupervised Learning Techniques

2017 FALL PROFESSIONAL TRAINING CALENDAR

Predicting Student Attrition in MOOCs using Sentiment Analysis and Neural Networks

Learning to Schedule Straight-Line Code

Self Study Report Computer Science

Calibration of Confidence Measures in Speech Recognition

Exploration. CS : Deep Reinforcement Learning Sergey Levine

2017? Are you skilled for. Market Leader. Prize Winner. Pass Insurance. Online Learning F7, F8 & F9. Classroom Learning P1-P7

Value Creation Through! Integration Workshop! Value Stream Analysis and Mapping for PD! January 31, 2002!

Access Center Assessment Report

Unsupervised Learning of Word Semantic Embedding using the Deep Structured Semantic Model

INPE São José dos Campos

TIMSS ADVANCED 2015 USER GUIDE FOR THE INTERNATIONAL DATABASE. Pierre Foy

Multivariate k-nearest Neighbor Regression for Time Series data -

Testing A Moving Target: How Do We Test Machine Learning Systems? Peter Varhol Technology Strategy Research, USA

The Use of Statistical, Computational and Modelling Tools in Higher Learning Institutions: A Case Study of the University of Dodoma

Certified Six Sigma Professionals International Certification Courses in Six Sigma Green Belt

QuickStroke: An Incremental On-line Chinese Handwriting Recognition System

Word Segmentation of Off-line Handwritten Documents

Model Ensemble for Click Prediction in Bing Search Ads

Using the Attribute Hierarchy Method to Make Diagnostic Inferences about Examinees Cognitive Skills in Algebra on the SAT

Universidade do Minho Escola de Engenharia

CSL465/603 - Machine Learning

BUAD 425 Data Analysis for Decision Making Syllabus Fall 2015

Why Did My Detector Do That?!

Twitter Sentiment Classification on Sanders Data using Hybrid Approach

Speech Emotion Recognition Using Support Vector Machine

Human Emotion Recognition From Speech

CS4491/CS 7265 BIG DATA ANALYTICS INTRODUCTION TO THE COURSE. Mingon Kang, PhD Computer Science, Kennesaw State University

COURSE LISTING. Courses Listed. Training for Cloud with SAP SuccessFactors in Integration. 23 November 2017 (08:13 GMT) Beginner.

Time series prediction

Knowledge Transfer in Deep Convolutional Neural Nets

Lecture 1: Basic Concepts of Machine Learning

Business Analytics and Information Tech COURSE NUMBER: 33:136:494 COURSE TITLE: Data Mining and Business Intelligence

and secondary sources, attending to such features as the date and origin of the information.

A study of speaker adaptation for DNN-based speech synthesis

Probability and Statistics Curriculum Pacing Guide

Machine Learning from Garden Path Sentences: The Application of Computational Linguistics

An Introduction to Simulation Optimization

Softprop: Softmax Neural Network Backpropagation Learning

FRAMEWORK FOR IDENTIFYING THE MOST LIKELY SUCCESSFUL UNDERPRIVILEGED TERTIARY STUDY BURSARY APPLICANTS

Mining Association Rules in Student s Assessment Data

Applications of data mining algorithms to analysis of medical data

AGS THE GREAT REVIEW GAME FOR PRE-ALGEBRA (CD) CORRELATED TO CALIFORNIA CONTENT STANDARDS

Short vs. Extended Answer Questions in Computer Science Exams

Go fishing! Responsibility judgments when cooperation breaks down

OPTIMIZATINON OF TRAINING SETS FOR HEBBIAN-LEARNING- BASED CLASSIFIERS

Kindergarten Iep Goals And Objectives Bank

(I couldn t find a Smartie Book) NEW Grade 5/6 Mathematics: (Number, Statistics and Probability) Title Smartie Mathematics

2017 Florence, Italty Conference Abstract

Detailed course syllabus

FUZZY EXPERT. Dr. Kasim M. Al-Aubidy. Philadelphia University. Computer Eng. Dept February 2002 University of Damascus-Syria

Mathematics subject curriculum

Lecture 2: Quantifiers and Approximation

Radius STEM Readiness TM

Semi-Supervised GMM and DNN Acoustic Model Training with Multi-system Combination and Confidence Re-calibration

A Model to Predict 24-Hour Urinary Creatinine Level Using Repeated Measurements

COMPUTER-ASSISTED INDEPENDENT STUDY IN MULTIVARIATE CALCULUS

Evolutive Neural Net Fuzzy Filtering: Basic Description

PREDICTING SPEECH RECOGNITION CONFIDENCE USING DEEP LEARNING WITH WORD IDENTITY AND SCORE FEATURES

ACTL5103 Stochastic Modelling For Actuaries. Course Outline Semester 2, 2014

New Venture Financing

Degree Qualification Profiles Intellectual Skills

GRADUATE STUDENT HANDBOOK Master of Science Programs in Biostatistics

Welcome to. ECML/PKDD 2004 Community meeting

EDCI 699 Statistics: Content, Process, Application COURSE SYLLABUS: SPRING 2016

Ericsson Wallet Platform (EWP) 3.0 Training Programs. Catalog of Course Descriptions

Transcription:

Machine Learning and Predictive Models Page 1 of 6

Why Attend Predictive models have become accessible to all users with the advancement of technology. This course offers a complete overview of supervised Machine Learning algorithms, and their role in the enhancement of predictions in most industries and by most organizations. This course covers all models utilized under different technologies (SAS, Statistica and SPSS), enabling participants to become expert practitioners by evaluating and selecting appropriate solutions with suitable technical packages for their organizations. Course Methodology This course includes interactive discussion and the use of exercises and case studies. Each Machine Learning algorithm is supported by its own case study with step by step outputs that go in parallel with its multi stage analysis. All algorithms are detailed with sequential screen shot applications on comparative technologies such as SPSS, SAS, Statistica and Excel. Course Objectives By the end of the course, participants will be able to: Understand the true meaning of Machine Learning Comprehend the key differences between Data Analysis and Machine Learning Apply testing and validating samples into Machine Learning models Submit an overview of the best analytic solutions Implement fine tuned estimation with complete predictive models Target Audience Any level of professional interested in how Machine Learning can assist their organization, would benefit from this course. These include professionals from industries including, but not limited to, banking, insurance, retail, government, manufacturing, healthcare, telecom, and airlines. Target Competencies Predictive Analysis Predictive Models Data Analysis Data Analytic Models Course Outline Data Analysis and Simple Regression Introduction to Data Analysis Logic Testing two groups on their means and proportions Profiling two groups in one single chart Testing multiple groups on their means and proportions Profiling multiple groups in one single chart Simple regression Regression vs. Correlation Sensitivity analysis of quantitative variables Multiple and Logistic Regressions Introduction to Machine Learning The Gradient Descent logic Multiple Regression vs. Simple Regression Variability analysis for estimations Dummy variables Page 2 of 6

Similarities and differences between Logistic and Multiple regressions Simplifying complex models Stepwise regression Discriminant Analysis Optimized Profiling Two-Group Discriminant Function Attribution of Cases Model Evaluation Classification Functions Mahalanobis Squared Distances Probability Method Model s Reduction Generalized Discriminant Analysis Decision Trees What are Decision Trees? Binary Trees Quality of a decision tree Rules of pruning CART: Classification Tree CART: Regression Tree CHAID tree Random Forest tree Nearest Neighbor, Bayesian, Neural Network and Deep Learning Conditional probabilities Prediction by probabilities Distance from neighbors K nearest distances from neighbors Weights in a Neural Network model Hidden layers role Neural Network pros and cons Deep Learning Introduction to Big Data Page 3 of 6

Location & Date 17-21 Mar, 2019 To be assigned 3-7 Nov, 2019 To be assigned Fees: US$ (including coffee breaks and a buffet lunch daily) Per participant - 2018 US$ 4600 Per participant - 2019 US$ 4800 Fees + VAT as applicable UAE Tax Registration Number 100239834300003 Page 4 of 6

Courses in Digital Innovation and Transformation Dates Course Name 21-23 Apr, 2019 Blockchain Masterclass US$ 3600 10-12 Nov, 2019 Blockchain Masterclass US$ 3600 Language Location Fees Page 5 of 6

Courses in Digital Innovation and Transformation Dates Course Name Language Location Fees Page 6 of 6