000 | 11100nam a22004693i 4500 | ||
---|---|---|---|
001 | EBC5317473 | ||
003 | MiAaPQ | ||
005 | 20240724120058.0 | ||
006 | m o d | | ||
007 | cr cnu|||||||| | ||
008 | 240724s2018 xx o ||||0 eng d | ||
020 |
_a9781119325505 _q(electronic bk.) |
||
020 | _z9781119129752 | ||
035 | _a(MiAaPQ)EBC5317473 | ||
035 | _a(Au-PeEL)EBL5317473 | ||
035 | _a(CaPaEBR)ebr11540545 | ||
035 | _a(OCoLC)1028022728 | ||
040 |
_aMiAaPQ _beng _erda _epn _cMiAaPQ _dMiAaPQ |
||
100 | 1 | _aIsson, Jean-Paul. | |
245 | 1 | 0 |
_aUnstructured Data Analytics : _bHow to Improve Customer Acquisition, Customer Retention, and Fraud Detection and Prevention. |
250 | _a1st ed. | ||
264 | 1 |
_aNewark : _bJohn Wiley & Sons, Incorporated, _c2018. |
|
264 | 4 | _c©2017. | |
300 | _a1 online resource (435 pages) | ||
336 |
_atext _btxt _2rdacontent |
||
337 |
_acomputer _bc _2rdamedia |
||
338 |
_aonline resource _bcr _2rdacarrier |
||
505 | 0 | _aCover -- Title Page -- Copyright -- Contents -- Foreword -- Preface -- Acknowledgments -- Chapter 1: The Age of Advanced Business Analytics -- Introduction -- Why the Analytics Hype Today? -- 1. Costs to Store and Process Information Have Reduced -- 2. Interactive Devices and Censors Have Increased -- 3. Data Analytics Infrastructures and Software Have Increased -- 4. User-Friendly and Invisible Data Analytics Tools Have Emerged -- 5. Data Analytics Is Becoming Mainstream, and It Means a Lot to Our Economy and World -- 6. Major Leading Tech Companies Have Pioneered the Data Economy -- 7. Big Data Analytics Has Become a Big Market Opportunity -- 8. The Number of Data Science University Programs and MOOCs Has Intensified -- A Short History of Data Analytics -- Early Adopters: Insurance and Finance -- What is the Analytics Age? -- Interview with Wayne Thompson, Chief Data Scientist at SAS Institute -- Key Takeaways -- Notes -- Further Reading -- Chapter 2: Unstructured Data Analytics: The Next Frontier of Analytics Innovation -- Introduction -- What Is UDA? -- Why UDA Today? -- Big Data as a Catalyst -- Artificial Intelligence (AI) -- Machine Learning -- Deep Learning -- Representation Learning or Feature Learning -- Natural Language Processing -- Cognitive Computing/Analytics -- Neural Network -- The UDA Industry -- Uses of UDA -- How UDA Works -- Why UDA Is the Next Analytical Frontier? -- Interview with Seth Grimes on Analytics as the Next Business Frontier -- UDA Success Stories -- Amazon.com -- Spotify -- Facebook -- ITA Software -- Internet Search Engines: Bing.com, Google.com, and the Like -- Monster Worldwide -- The Golden Age of UDA -- Key Takeaways -- Notes -- Further Reading -- Chapter 3: The Framework to Put UDA to Work -- Introduction -- Why Have a Framework to Analyze Unstructured Data? -- The IMPACT Cycle Applied to Unstructured Data. | |
505 | 8 | _aFocusing on the IMPACT -- Identify Business Questions -- Master the Data -- Text Parsing Example -- The T3 -- Technique -- Tools -- Interview with Cindy Forbes, Chief Analytics Officer and Executive Vice President at Manulife Financial -- Case Study -- Key Takeaways -- Notes -- Further Reading -- Chapter 4: How to Increase Customer Acquisition and Retention with UDA -- The Voice of the Customer: A Goldmine for Understanding Customers -- Why Should You Care about UDA for Customer Acquisition and Retention? -- The Voice of the Customer -- Predictive Models and Online Marketing -- Predictive Models -- UDA and Online Marketing: Optimizing Your Acquisition and Customer Response Models -- How Does UDA Applied to Customer Acquisition Work? -- The Power of UDA for E-mail Response and Ad Optimization -- How to Drive More Conversion and Engagement with UDA Applied to Content -- How UDA Applied to Customer Retention (Churn) Works -- What Is UDA Applied to Customer Acquisition? -- Consumer/Customer Decision Journey -- Lessons from McKinsey's Consumer Decision Journey -- What Is UDA Applied to Customer Retention (Churn)? -- The Power of UDA Powered by Virtual Agent -- Welcome to the AI Customer Service Assistant -- Benefits of a Virtual Agent or AI Assistant for Customer Experience -- Benefits and Case Studies -- Applying UDA to Your Social Media Presence and Native Ads to Increase Acquisitions -- Social Media Analytics -- Key Takeaways -- Notes -- Chapter 5: The Power of UDA to Improve Fraud Detection and Prevention -- Introduction -- Why Should You Care about UDA for Fraud Detection and Prevention? -- Unstructured Data Is a Goldmine of Evidence for Fraud Detection and Prevention -- Cost Savings, Productivity, and Performance Gains -- Help to Fully Leverage the Power of Predictive Analytics and Big Data -- Realize the Untapped Big Data Opportunity. | |
505 | 8 | _aAddress Weaknesses of Existing Fraud Detection Techniques -- Benefits of UDA -- Huge Costs If Left Unchecked/Huge Savings in Fraud Losses -- Banking and Finance -- E-commerce -- Healthcare -- Insurance -- What Is UDA for Fraud? -- How UDA Works in Fraud Detection and Prevention -- Sampling -- Benford's Law -- Recommendations -- UDA Framework for Fraud Detection and Prevention: Insurance -- Step 1: Claimant Report (Narrative) -- Step 2: Underwriter Report (Text-Heavy) -- Step 3: Fraud Management Tool (Detection and Prediction) -- Step 4: Scoring and Classification Outputs -- Step 5: Decisions and Actions -- Major Fraud Detection and Prevention Techniques -- Best Practices Using UDA for Fraud Detection and Prevention -- Assess Your Current Fraud Management System -- Interview with Vishwa Kolla, Assistant Vice President Advanced Analytics at John Hancock Financial Services -- Interview with Diane Deperrois, General Manager South-East and Overseas Region, AXA -- Key Takeaways -- Notes -- Further Reading -- Chapter 6: The Power of UDA in Human Capital Management -- Why Should You Care about UDA in Human Resources? -- What Is UDA in HR? -- What Is UDA in HR Really About? -- The Power of UDA in Online Recruitment: Supply and Demand Equation -- The Power of UDA in Talent Sourcing Analytics -- Assessment and Analysis of Culture Fit Score -- Social Job Ad and Twitter Job -- Employer Online Reputation: Social Media Feed and News Analysis -- Supply (Resume/Job Response) and Demand (Job Posting/Listing) -- UDA Applied to Candidate Resumes and Candidate Profile -- Candidate Video Resume -- Video Interview -- The Power of UDA in Talent Acquisition Analytics -- Artificial Intelligence as a Hiring Assistant -- The Power of UDA in Talent Retention -- The Power of UDA in Employee Wellness Analytics. | |
505 | 8 | _aInterview with Arun Chidambaram, Director of Global workforce intelligence, Pfizer -- Employee Performance Appraisal Data Review Feedback -- How UDA Works -- Benefits of UDA in HR -- Case Studies -- The Container Store -- Interview with Stephani Kingsmill, Executive Vice President and Chief Human Resource Officer, Manulife -- Key Takeaways -- Further Reading -- Chapter 7: The Power of UDA in the Legal Industry -- Why Should You Care About UDA in Legal Services? -- What Is UDA Applied to Legal Services? -- How Does It Work? -- Benefits and Challenges -- Key Takeaways -- Notes -- Further Reading -- Chapter 8: The Power of UDA in Healthcare and Medical Research -- Why Should You Care about UDA in Healthcare? -- Untapped Potential of Healthcare Data Goldmine -- Ever-Increasing Volume of Patient Data from Internet of Things -- What's UDA in Healthcare? -- How UDA Works -- Data Complexity -- Aggregating Data -- Transforming Unstructured Data into Discrete Data -- IMPACT Cycle -- Benefits -- Interview with Mr. François Laviolette, Professor of Computer Science/Director of Big Data Research Centre at Laval University (QC) Canada -- Interview with Paul Zikopolous, Vice President Big Data Cognitive System at IBM -- Case Study -- Key Takeaways -- Notes -- Further Reading -- Chapter 9: The Power of UDA in Product and Service Development -- Why Should You Care about UDA for Product and Service Development? -- UDA and Big Data Analytics -- 1. Data Analytics: Data Products and Services -- 2. 365/24/7 Platform for Customers -- 3. Intersection between Analytics and Innovation -- 4. The Voice of the Customer (VoC) -- Interview with Fiona McNeill, Global Product Marketing Manager at SAS Institute -- What Is UDA Applied to Product Development? -- How Is UDA Applied to Product Development? -- How UDA Applied to Product Development Works -- Key Takeaways -- Notes. | |
505 | 8 | _aChapter 10: The Power of UDA in National Security -- National Security: Playground for UDA or Civil Liberty Threat? -- Edward J. Snowden, the NSA Whistle-Blower? -- What Is the NSA? -- What Is UDA for National Security? -- Data Sources of the NSA -- What Happened? -- What Is Happening Now, and Why? -- What Will Happen, and What Should We Do? -- Why UDA for National Security? -- September 11, 2001: Disparate Data and Intelligence Weakness -- How the CIA Uses Big Data to Predict Social Unrest -- Case Studies -- Business Challenge -- Solutions -- Benefit -- How UDA Works -- Key Takeaways -- Notes -- Further Reading -- Chapter 11: The Power of UDA in Sports -- The Short History of Sports Analytics: Moneyball -- Why Should You Care about UDA in Sports? -- UDA's Impact for Players -- UDA Impact for Coaches and Managers -- UDA Impact on Fans -- What Is UDA in Sports? -- Baseball and Football -- What Will Happen? And What Should We Do? -- How It Works -- Fan Data -- Player Data -- Team Data -- Interview with Winston Lin, Director of Strategy and Analytics for the Houston Rockets -- Key Takeaways -- Notes -- Further Reading -- Chapter 12: The Future of Analytics -- Harnessing These Evolving Technologies Will Generate Benefits -- Data Becomes Less Valuable and Analytics Becomes Mainstream -- Data Becomes Less Valuable -- Analytics Will Become Mainstream -- Predictive Analytics, AI, Machine Learning, and Deep Learning Become the New Standard -- People Analytics Becomes a Standard Department in Businesses -- UDA Becomes More Prevalent in Corporations and Businesses -- Cognitive Analytics Expansion -- The Internet of Things Evolves to the Analytics of Things -- MOOCs and Open Source Software and Applications Will Continue to Explode -- Blockchain and Analytics Will Solve Social Problems -- Human-Centered Computing Will Be Normalized. | |
505 | 8 | _aData Governance and Data Security Will Remain the Number-One Risk and Threat. | |
588 | _aDescription based on publisher supplied metadata and other sources. | ||
590 | _aElectronic reproduction. Ann Arbor, Michigan : ProQuest Ebook Central, 2024. Available via World Wide Web. Access may be limited to ProQuest Ebook Central affiliated libraries. | ||
650 | 0 | _aIndustrial management-Statistical methods. | |
655 | 4 | _aElectronic books. | |
776 | 0 | 8 |
_iPrint version: _aIsson, Jean-Paul _tUnstructured Data Analytics _dNewark : John Wiley & Sons, Incorporated,c2018 _z9781119129752 |
797 | 2 | _aProQuest (Firm) | |
856 | 4 | 0 |
_uhttps://ebookcentral.proquest.com/lib/orpp/detail.action?docID=5317473 _zClick to View |
942 |
_2ddc _cEBOOK |
||
999 |
_c166 _d166 |