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Predictive analytics : for dummies / By Annase Bari ; Mohamed Chaouchi ; Tommy Jung.

By: Contributor(s): Material type: TextTextLanguage: English Publication details: New Delhi : Wiley India Pvt Ltd , 2017.Edition: 2nd edDescription: viii,443p. PB 24cmISBN:
  • 9788126567935
Subject(s): DDC classification:
  • 005.767  BARA 2
Contents:
Table of Contents INTRODUCTION 1 PART 1: GETTING STARTED WITH PREDICTIVE ANALYTICS 5 CHAPTER 1: Entering the Arena 7 Exploring Predictive Analytics 7 Mining data 8 Highlighting the model 9 Adding Business Value 10 Endless opportunities 11 Empowering your organization 12 Starting a Predictive Analytic Project 13 Business knowledge 14 Data-science team and technology 15 The Data 16 Ongoing Predictive Analytics 17 Forming Your Predictive Analytics Team 18 Hiring experienced practitioners 18 Demonstrating commitment and curiosity 19 Surveying the Marketplace 19 Responding to big data 20 Working with big data 20 CHAPTER 2: Predictive Analytics in the Wild 23 Online Marketing and Retail 25 Recommender systems 25 Personalized shopping on the Internet 26 Implementing a Recommender System 28 Collaborative filtering 28 Content-based filtering 36 Hybrid recommender systems 39 Target Marketing 41 Targeting using predictive modeling 42 Uplift modeling 43 Personalization 46 Online customer experience 46 Retargeting 47 Implementation 47 Optimizing using personalization 48 Similarities of Personalization and Recommendations 48 Content and Text Analytics 50 CHAPTER 3: Exploring Your Data Types and Associated Techniques 51 Recognizing Your Data Types 52 Structured and unstructured data 52 Static and streamed data 56 Identifying Data Categories 58 Attitudinal data 59 Behavioral data 60 Demographic data 61 Generating Predictive Analytics 61 Data-driven analytics 62 User-driven analytics 64 Connecting to Related Disciplines 65 Statistics 65 Data mining 66 Machine learning 67 CHAPTER 4: Complexities of Data 69 Finding Value in Your Data 70 Delving into your data 70 Data validity 70 Data variety 71 Constantly Changing Data 72 Data velocity 72 High volume of data 73 Complexities in Searching Your Data 73 Keyword-based search 74 Semantic-based search 74 Contextual search 76 Differentiating Business Intelligence from Big-Data Analytics 79 Exploration of Raw Data 80 Identifying data attributes 80 Exploring common data visualizations 81 Tabular visualizations 81 Word clouds 82 Flocking birds as a novel data representation 83 Graph charts 85 Common visualizations 87 PART 2: INCORPORATING ALGORITHMS IN YOUR MODELS 89 CHAPTER 5: Applying Models 91 Modeling Data 92 Models and simulation 92 Categorizing models 94 Describing and summarizing data 96 Making better business decisions 97 Healthcare Analytics Case Studies 97 Google Flu Trends 97 Cancer survivability predictors 99 Social and Marketing Analytics Case Studies 101 Target store predicts pregnant women 101 Twitter-based predictors of earthquakes 102 Twitter-based predictors of political campaign outcomes 103 Tweets as predictors for the stock market 105 Predicting variation of stock prices from news articles 106 Analyzing New York City’s bicycle usage 107 Predictions and responses 110 Data compression 111 Prognostics and its Relation to Predictive Analytics 112 The Rise of Open Data 113 CHAPTER 6: Identifying Similarities in Data 115 Explaining Data Clustering 116 Converting Raw Data into a Matrix 120 Creating a matrix of terms in documents 120 Term selection 121 Identifying Groups in Your Data 122 K-means clustering algorithm 122 Clustering by nearest neighbors 126 Density-based algorithms 130 Finding Associations in Data Items 132 Applying Biologically Inspired Clustering Techniques 136 Birds flocking: Flock by Leader algorithm 136 Ant colonies 143 CHAPTER 7: Predicting the Future Using Data Classification 147 Explaining Data Classification 149 Introducing Data Classification to Your Business 152 Exploring the Data-Classification Process 154 Using Data Classification to Predict the Future 156 Decision trees 156 Algorithms for Generating Decision Trees 159 Support vector machine 163 Ensemble Methods to Boost Prediction Accuracy 165 Naïve Bayes classification algorithm 166 The Markov Model 172 Linear regression 177 Neural networks 177 Deep Learning 179 PART 3: DEVELOPING A ROADMAP 185 CHAPTER 8: Convincing Your Management to Adopt Predictive Analytics 187 Making the Business Case 188 Gathering Support from Stakeholders 195 Presenting Your Proposal 206 CHAPTER 9: Preparing Data 209 Listing the Business Objectives 210 Processing Your Data 212 Identifying the data 212 Cleaning the data 213 Generating any derived data 215 Reducing the dimensionality of your data 215 Applying principal component analysis 216 Leveraging singular value decomposition 218 Working with Features 219 Structuring Your Data 224 Extracting, transforming and loading your data 225 Keeping the data up to date 226 Outlining testing and test data 226 CHAPTER 10: Building a Predictive Model 229 Getting Started 230 Defining your business objectives 232 Preparing your data 233 Choosing an algorithm 236 Developing and Testing the Model 237 Going Live with the Model 242 CHAPTER 11: Visualization of Analytical Results 245 Visualization as a Predictive Tool 246 Evaluating Your Visualization 249 Visualizing Your Model’s Analytical Results 251 Visualizing hidden groupings in your data 251 Visualizing data classification results 252 Visualizing outliers in your data 254 Visualization of Decision Trees 254 Visualizing predictions 256 Novel Visualization in Predictive Analytics 258 Big Data Visualization Tools 262 Tableau 263 Google Charts 263 Plotly 263 Infogram 264 PART 4: PROGRAMMING PREDICTIVE ANALYTICS 265 CHAPTER 12: Creating Basic Prediction Examples 267 Installing the Software Packages 268 Installing Python 268 Installing the machine-learning module 270 Installing the dependencies 274 Preparing the Data 278 Making Predictions Using Classification Algorithms 280 Creating a supervised learning model with SVM 281 Creating a supervised learning model with logistic regression 288 Creating a supervised learning model with random forest 295 Comparing the classification models 297 CHAPTER 13: Creating Basic Examples of Unsupervised Predictions 299 Getting the Sample Dataset 300 Using Clustering Algorithms to Make Predictions 301 Comparing clustering models 301 Creating an unsupervised learning model with K-means 302 Creating an unsupervised learning model with DBSCAN 314 Creating an unsupervised learning model with mean shift 318 CHAPTER 14: Predictive Modeling with R 323 Programming in R 325 Installing R 325 Installing RStudio 326 Getting familiar with the environment 327 Learning just a bit of R 328 Making Predictions Using R 334 Predicting using regression 334 Using classification to predict 345 Classification by random forest 354 CHAPTER 15: Avoiding Analysis Traps 359 Data Challenges 360 Outlining the limitations of the data 361 Dealing with extreme cases (outliers) 364 Data smoothing 367 Curve fitting 371 Keeping the assumptions to a minimum 374 Analysis Challenges 375 PART 5: EXECUTING BIG DATA 381 CHAPTER 16: Targeting Big Data 383 Major Technological Trends in Predictive Analytics 384 Exploring predictive analytics as a service 384 Aggregating distributed data for analysis 385 Real-time data-driven analytics 387 Applying Open-Source Tools to Big Data 388 Apache Hadoop 388 Apache Spark 394 CHAPTER 17: Getting Ready for Enterprise Analytics 399 Analytics as a Service 403 Google Analytics 403 IBM Watson 405 Microsoft Revolution R Enterprise 405 Preparing for a Proof-of-Value of Predictive Analytics Prototype 406 Prototyping for predictive analytics 406 Testing your predictive analytics model 409 PART 6: THE PART OF TENS 411 CHAPTER 18: Ten Reasons to Implement Predictive Analytics 413 CHAPTER 19: Ten Steps to Build a Predictive Analytic Model 423 About the Author Anasse Bari, Ph.D. is data science expert and a university professor who has many years of predictive modeling and data analytics experience. Mohamed Chaouchi is a veteran software engineer who has conducted extensive research using data mining methods. Tommy Jung is a software engineer with expertise in enterprise web applications and analytics.
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005.758 MOTB Data analytics using python / 005.758 MOTB Data analytics using python / 005.767 BARA Predictive analytics : for dummies / 005.767 BARA Predictive analytics : for dummies / 005.768 ACHS Big Data and Analytics / 005.768 ACHS Big Data and Analytics /

Description
Use Big Data and technology to uncover real-world insights
You don't need a time machine to predict the future. All it takes is a little knowledge and know-how, and Predictive Analytics For Dummies gets you there fast. With the help of this friendly guide, you'll discover the core of predictive analytics and get started putting it to use with readily available tools to collect and analyze data. In no time, you'll learn how to incorporate algorithms through data models, identify similarities and relationships in your data, and predict the future through data classification. Along the way, you'll develop a roadmap by preparing your data, creating goals, processing your data, and building a predictive model that will get you stakeholder buy-in.

Big Data has taken the marketplace by storm, and companies are seeking qualified talent to quickly fill positions to analyze the massive amount of data that are being collected each day. If you want to get in on the action and either learn or deepen your understanding of how to use predictive analytics to find real relationships between what you know and what you want to know, everything you need is a page away!

Offers common use cases to help you get started
Covers details on modeling, k-means clustering, and more
Includes information on structuring your data
Provides tips on outlining business goals and approaches
The future starts today with the help of Predictive Analytics For Dummies.

Table of Contents
INTRODUCTION 1

PART 1: GETTING STARTED WITH PREDICTIVE ANALYTICS 5

CHAPTER 1: Entering the Arena 7

Exploring Predictive Analytics 7

Mining data 8

Highlighting the model 9

Adding Business Value 10

Endless opportunities 11

Empowering your organization 12

Starting a Predictive Analytic Project 13

Business knowledge 14

Data-science team and technology 15

The Data 16

Ongoing Predictive Analytics 17

Forming Your Predictive Analytics Team 18

Hiring experienced practitioners 18

Demonstrating commitment and curiosity 19

Surveying the Marketplace 19

Responding to big data 20

Working with big data 20

CHAPTER 2: Predictive Analytics in the Wild 23

Online Marketing and Retail 25

Recommender systems 25

Personalized shopping on the Internet 26

Implementing a Recommender System 28

Collaborative filtering 28

Content-based filtering 36

Hybrid recommender systems 39

Target Marketing 41

Targeting using predictive modeling 42

Uplift modeling 43

Personalization 46

Online customer experience 46

Retargeting 47

Implementation 47

Optimizing using personalization 48

Similarities of Personalization and Recommendations 48

Content and Text Analytics 50

CHAPTER 3: Exploring Your Data Types and Associated Techniques 51

Recognizing Your Data Types 52

Structured and unstructured data 52

Static and streamed data 56

Identifying Data Categories 58

Attitudinal data 59

Behavioral data 60

Demographic data 61

Generating Predictive Analytics 61

Data-driven analytics 62

User-driven analytics 64

Connecting to Related Disciplines 65

Statistics 65

Data mining 66

Machine learning 67

CHAPTER 4: Complexities of Data 69

Finding Value in Your Data 70

Delving into your data 70

Data validity 70

Data variety 71

Constantly Changing Data 72

Data velocity 72

High volume of data 73

Complexities in Searching Your Data 73

Keyword-based search 74

Semantic-based search 74

Contextual search 76

Differentiating Business Intelligence from Big-Data Analytics 79

Exploration of Raw Data 80

Identifying data attributes 80

Exploring common data visualizations 81

Tabular visualizations 81

Word clouds 82

Flocking birds as a novel data representation 83

Graph charts 85

Common visualizations 87

PART 2: INCORPORATING ALGORITHMS IN YOUR MODELS 89

CHAPTER 5: Applying Models 91

Modeling Data 92

Models and simulation 92

Categorizing models 94

Describing and summarizing data 96

Making better business decisions 97

Healthcare Analytics Case Studies 97

Google Flu Trends 97

Cancer survivability predictors 99

Social and Marketing Analytics Case Studies 101

Target store predicts pregnant women 101

Twitter-based predictors of earthquakes 102

Twitter-based predictors of political campaign outcomes 103

Tweets as predictors for the stock market 105

Predicting variation of stock prices from news articles 106

Analyzing New York City’s bicycle usage 107

Predictions and responses 110

Data compression 111

Prognostics and its Relation to Predictive Analytics 112

The Rise of Open Data 113

CHAPTER 6: Identifying Similarities in Data 115

Explaining Data Clustering 116

Converting Raw Data into a Matrix 120

Creating a matrix of terms in documents 120

Term selection 121

Identifying Groups in Your Data 122

K-means clustering algorithm 122

Clustering by nearest neighbors 126

Density-based algorithms 130

Finding Associations in Data Items 132

Applying Biologically Inspired Clustering Techniques 136

Birds flocking: Flock by Leader algorithm 136

Ant colonies 143

CHAPTER 7: Predicting the Future Using Data Classification 147

Explaining Data Classification 149

Introducing Data Classification to Your Business 152

Exploring the Data-Classification Process 154

Using Data Classification to Predict the Future 156

Decision trees 156

Algorithms for Generating Decision Trees 159

Support vector machine 163

Ensemble Methods to Boost Prediction Accuracy 165

Naïve Bayes classification algorithm 166

The Markov Model 172

Linear regression 177

Neural networks 177

Deep Learning 179

PART 3: DEVELOPING A ROADMAP 185

CHAPTER 8: Convincing Your Management to Adopt Predictive Analytics 187

Making the Business Case 188

Gathering Support from Stakeholders 195

Presenting Your Proposal 206

CHAPTER 9: Preparing Data 209

Listing the Business Objectives 210

Processing Your Data 212

Identifying the data 212

Cleaning the data 213

Generating any derived data 215

Reducing the dimensionality of your data 215

Applying principal component analysis 216

Leveraging singular value decomposition 218

Working with Features 219

Structuring Your Data 224

Extracting, transforming and loading your data 225

Keeping the data up to date 226

Outlining testing and test data 226

CHAPTER 10: Building a Predictive Model 229

Getting Started 230

Defining your business objectives 232

Preparing your data 233

Choosing an algorithm 236

Developing and Testing the Model 237

Going Live with the Model 242

CHAPTER 11: Visualization of Analytical Results 245

Visualization as a Predictive Tool 246

Evaluating Your Visualization 249

Visualizing Your Model’s Analytical Results 251

Visualizing hidden groupings in your data 251

Visualizing data classification results 252

Visualizing outliers in your data 254

Visualization of Decision Trees 254

Visualizing predictions 256

Novel Visualization in Predictive Analytics 258

Big Data Visualization Tools 262

Tableau 263

Google Charts 263

Plotly 263

Infogram 264

PART 4: PROGRAMMING PREDICTIVE ANALYTICS 265

CHAPTER 12: Creating Basic Prediction Examples 267

Installing the Software Packages 268

Installing Python 268

Installing the machine-learning module 270

Installing the dependencies 274

Preparing the Data 278

Making Predictions Using Classification Algorithms 280

Creating a supervised learning model with SVM 281

Creating a supervised learning model with logistic regression 288

Creating a supervised learning model with random forest 295

Comparing the classification models 297

CHAPTER 13: Creating Basic Examples of Unsupervised Predictions 299

Getting the Sample Dataset 300

Using Clustering Algorithms to Make Predictions 301

Comparing clustering models 301

Creating an unsupervised learning model with K-means 302

Creating an unsupervised learning model with DBSCAN 314

Creating an unsupervised learning model with mean shift 318

CHAPTER 14: Predictive Modeling with R 323

Programming in R 325

Installing R 325

Installing RStudio 326

Getting familiar with the environment 327

Learning just a bit of R 328

Making Predictions Using R 334

Predicting using regression 334

Using classification to predict 345

Classification by random forest 354

CHAPTER 15: Avoiding Analysis Traps 359

Data Challenges 360

Outlining the limitations of the data 361

Dealing with extreme cases (outliers) 364

Data smoothing 367

Curve fitting 371

Keeping the assumptions to a minimum 374

Analysis Challenges 375

PART 5: EXECUTING BIG DATA 381

CHAPTER 16: Targeting Big Data 383

Major Technological Trends in Predictive Analytics 384

Exploring predictive analytics as a service 384

Aggregating distributed data for analysis 385

Real-time data-driven analytics 387

Applying Open-Source Tools to Big Data 388

Apache Hadoop 388

Apache Spark 394

CHAPTER 17: Getting Ready for Enterprise Analytics 399

Analytics as a Service 403

Google Analytics 403

IBM Watson 405

Microsoft Revolution R Enterprise 405

Preparing for a Proof-of-Value of Predictive Analytics Prototype 406

Prototyping for predictive analytics 406

Testing your predictive analytics model 409

PART 6: THE PART OF TENS 411

CHAPTER 18: Ten Reasons to Implement

Predictive Analytics 413

CHAPTER 19: Ten Steps to Build a Predictive Analytic Model 423 About the Author
Anasse Bari, Ph.D. is data science expert and a university professor who has many years of predictive modeling and data analytics experience.

Mohamed Chaouchi is a veteran software engineer who has conducted extensive research using data mining methods.

Tommy Jung is a software engineer with expertise in enterprise web applications and analytics.

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