Produktbild: Web Analytics 2.0

Web Analytics 2.0 The Art of Online Accountability and Science of Customer Centricity

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Beschreibung

Produktdetails

Einband

Taschenbuch

Erscheinungsdatum

27.10.2009

Verlag

John Wiley & Sons

Seitenzahl

512

Maße (L/B/H)

23.3/18.9/3.2 cm

Gewicht

690 g

Auflage

1. Auflage

Sprache

Englisch

ISBN

978-0-470-52939-3

Beschreibung

Produktdetails

Einband

Taschenbuch

Erscheinungsdatum

27.10.2009

Verlag

John Wiley & Sons

Seitenzahl

512

Maße (L/B/H)

23.3/18.9/3.2 cm

Gewicht

690 g

Auflage

1. Auflage

Sprache

Englisch

ISBN

978-0-470-52939-3

Herstelleradresse

Libri GmbH
Europaallee 1
36244 Bad Hersfeld
DE

Email: gpsr@libri.de

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  • Produktbild: Web Analytics 2.0
  • Introduction xxi

    Chapter 1 The Bold New World of Web Analytics 2.0 1

    State of the Analytics Union 2

    State of the Industry 3

    Rethinking Web Analytics: Meet Web Analytics 2.0 4

    The What: Clickstream 7

    The How Much: Multiple Outcomes Analysis 7

    The Why: Experimentation and Testing 8

    The Why: Voice of Customer 9

    The What Else: Competitive Intelligence 9

    Change: Yes We Can! 10

    The Strategic Imperative 10

    The Tactical Shift 11

    Bonus Analytics 13

    Chapter 2 The Optimal Strategy for Choosing Your Web Analytics Soul Mate 15

    Predetermining Your Future Success 16

    Step 1: Three Critical Questions to Ask Yourself Before You Seek an Analytics Soul Mate! 17

    Q1: "Do I want reporting or analysis?" 17

    Q2: "Do I have IT strength, business strength, or both?" 19

    Q3: "Am I solving just for Clickstream or for Web Analytics 2.0?" 20

    Step 2: Ten Questions to Ask Vendors Before You Marry Them 21

    Q1: "What is the difference between your tool/solution and free tools from Yahoo! and Google?" 21

    Q2: "Are you 100 percent ASP, or do you offer a software version? Are you planning a software version?" 22

    Q3: "What data capture mechanisms do you use?" 22

    Q4: "Can you calculate the total cost of ownership for your tool?" 23

    Q5: "What kind of support do you offer? What do you include for free, and what costs more? Is it free 24/7?" 24

    Q6: "What features in your tool allow me to segment the data?" 25

    Q7: "What options do I have for exporting data from your system into our company's system?" 25

    Q8: "What features do you provide for me to integrate data from other sources into your tool?" 26

    Q9: "Can you name two new features/tools/acquisitions your company is cooking up to stay ahead of your competition for the next three years?" 26

    Q10: "Why did the last two clients you lost cancel their contracts? Who are they using now? May we call one of these former clients?" 27

    Comparing Web Analytics Vendors: Diversify and Conquer 28

    The Three-Bucket Strategy 28

    Step 3: Identifying Your Web Analytics Soul Mate (How to Run an Effective Tool Pilot) 29

    Step 4: Negotiating the Prenuptials: Check SLAs for Your Web Analytics Vendor Contract 32

    Chapter 3 The Awesome World of Clickstream Analysis: Metrics 35

    Standard Metrics Revisited: Eight Critical Web Metrics 36

    Visits and Visitors 37

    Time on Page and Time on Site 44

    Bounce Rate 51

    Exit Rate 53

    Conversion Rate 55

    Engagement 56

    Web Metrics Demystified 59

    Four Attributes of Great Metrics 59

    Example of a Great Web Metric 62

    Three Avinash Life Lessons for Massive Success 62

    Strategically-aligned Tactics for Impactful Web Metrics 64

    Diagnosing the Root Cause of a Metric's Performance-Conversion 64

    Leveraging Custom Reporting 66

    Starting with Macro Insights 70

    Chapter 4 The Awesome World of Clickstream Analysis: Practical Solutions 75

    A Web Analytics Primer 76

    Getting Primitive Indicators Out of the Way 76

    Understanding Visitor Acquisition Strengths 78

    Fixing Stuff and Saving Money 79

    Click Density Analysis 81

    Measuring Visits to Purchase 83

    The Best Web Analytics Report 85

    Sources of Traffic 86

    Outcomes 87

    Foundational Analytical Strategies 87

    Segment or Go Home 88

    Focus on Customer Behavior, Not Aggregates 93

    Everyday Clickstream Analyses Made Actionable 94

    Internal Site Search Analysis 95

    Search Engine Optimization (SEO) Analysis 101

    Pay Per Click/Paid Search Analysis 110

    Direct Traffic Analysis 116

    Email Campaign Analysis 119

    Rich Experience Analysis: Flash, Video, and Widgets 122

    Reality Check: Perspectives on Key Web Analytics Challenges 126

    Visitor Tracking Cookies 126

    Data Sampling 411 130

    The Value of Historical Data 133

    The Usefulness of Video Playback of Customer Experience 136

    The Ultimate Data Reconciliation Checklist 138

    Chapter 5 The Key to Glory: Measuring Success 145

    Focus on the "Critical Few" 147

    Five Examples of Actionable Outcome KPIs 149

    Task Completion Rate 149

    Share of Search 150

    Visitor Loyalty and Recency 150

    RSS/Feed Subscribers 150

    % of Valuable Exits 151

    Moving Beyond Conversion Rates 151

    Cart and Checkout Abandonment 152

    Days and Visits to Purchase 153

    Average Order Value 153

    Primary Purpose (Identify the Convertible) 154

    Measuring Macro and Micro Conversions 156

    Examples of Macro and Micro Conversions 158

    Quantifying Economic Value 159

    Measuring Success for a Non-ecommerce Website 162

    Visitor Loyalty 162

    Visitor Recency 164

    Length of Visit 165

    Depth of Visit 165

    Measuring B2B Websites 166

    Chapter 6 Solving the "Why" Puzzle: Leveraging Qualitative Data 169

    Lab Usability Studies: What, Why, and How Much? 170

    What Is Lab Usability? 170

    How to Conduct a Test 171

    Best Practices for Lab Usability Studies 174

    Benefits of Lab Usability Studies 174

    Areas of Caution 174

    Usability Alternatives: Remote and Online Outsourced 175

    Live Recruiting and Remote User Research 176

    Surveys: Truly Scalable Listening 179

    Types of Surveys 180

    The Single Biggest Surveying Mistake 184

    Three Greatest Survey Questions Ever 185

    Eight Tips for Choosing an Online Survey Provider 187

    Web-Enabled Emerging User Research Options 190

    Competitive Benchmarking Studies 190

    Rapid Usability Tests 191

    Online Card-Sorting Studies 191

    Artificially Intelligent Visual Heat Maps 192

    Chapter 7 Failing Faster: Unleashing the Power of Testing and Experimentation 195

    A Primer on Testing Options: A/B and MVT 197

    A/B Testing 197

    Multivariate Testing 198

    Actionable Testing Ideas 202

    Fix the Big Losers-Landing Pages 202

    Focus on Checkout, Registration, and Lead Submission Pages 202

    Optimize the Number and Layout of Ads 203

    Test Different Prices and Selling Tactics 203

    Test Box Layouts, DVD Covers, and Offline Stuff 204

    Optimize Your Outbound Marketing Efforts 204

    Controlled Experiments: Step Up Your Analytics Game! 205

    Measuring Paid Search Impact on Brand Keywords and Cannibalization 205

    Examples of Controlled Experiments 207

    Challenges and Benefits 208

    Creating and Nurturing a Testing Culture 209

    Tip 1: Your First Test is "Do or Die" 209

    Tip 2: Don't Get Caught in the Tool/Consultant Hype 209

    Tip 3: "Open the Kimono"-Get Over Yourself 210

    Tip 4: Start with a Hypothesis 210

    Tip 5: Make Goals Evaluation Criteria and Up-Front Decisions 210

    Tip 6: Test For and Measure Multiple Outcomes 211

    Tip 7: Source Your Tests in Customer Pain 211

    Tip 8: Analyze Data and Communicate Learnings 212

    Tip 9: Two Must-Haves: Evangelism and Expertise 212

    Chapter 8 Competitive Intelligence Analysis 213

    CI Data Sources, Types, and Secrets 214

    Toolbar Data 215

    Panel Data 216

    ISP (Network) Data 217

    Search Engine Data 217

    Benchmarks from Web Analytics Vendors 218

    Self-reported Data 219

    Hybrid Data 220

    Website Traffic Analysis 221

    Comparing Long-Term Traffic Trends 222

    Analyzing Competitive Sites Overlap and Opportunities 223

    Analyzing Referrals and Destinations 224

    Search and Keyword Analysis 225

    Top Keywords Performance Trend 226

    Geographic Interest and Opportunity Analysis 227

    Related and Fast-Rising Searches 230

    Share-of-Shelf Analysis 231

    Competitive Keyword Advantage Analysis 233

    Keyword Expansion Analysis 234

    Audience Identification and Segmentation Analysis 235

    Demographic Segmentation Analysis 236

    Psychographic Segmentation Analysis 238

    Search Behavior and Audience Segmentation Analysis 239

    Chapter 9 Emerging Analytics: Social, Mobile, and Video 241

    Measuring the New Social Web: The Data Challenge 242

    The Content Democracy Evolution 243

    The Twitter Revolution 247

    Analyzing Offline Customer Experiences (Applications) 248

    Analyzing Mobile Customer Experiences 250

    Mobile Data Collection: Options 250

    Mobile Reporting and Analysis 253

    Measuring the Success of Blogs 257

    Raw Author Contribution 257

    Holistic Audience Growth 258

    Citations and Ripple Index 262

    Cost of Blogging 263

    Benefit (ROI) from Blogging 263

    Quantifying the Impact of Twitter 266

    Growth in Number of Followers 266

    Message Amplification 267

    Click-Through Rates and Conversions 268

    Conversation Rate 270

    Emerging Twitter Metrics 271

    Analyzing Performance of Videos 273

    Data Collection for Videos 273

    Key Video Metrics and Analysis 274

    Advanced Video Analysis 278

    Chapter 10 Optimal Solutions for Hidden Web Analytics Traps 283

    Accuracy or Precision? 284

    A Six-Step Process for Dealing with Data Quality 286

    Building the Action Dashboard 288

    Creating Awesome Dashboards 288

    The Consolidated Dashboard 290

    Five Rules for High-Impact Dashboards 291

    Nonline Marketing Opportunity and Multichannel Measurement 294

    Shifting to the Nonline Marketing Model 294

    Multichannel Analytics 296

    The Promise and Challenge of Behavior Targeting 298

    The Promise of Behavior Targeting 299

    Overcoming Fundamental Analytics Challenges 299

    Two Prerequisites for Behavior Targeting 301

    Online Data Mining and Predictive Analytics: Challenges 302

    Type of Data 303

    Number of Variables 304

    Multiple Primary Purposes 304

    Multiple Visit Behaviors 305

    Missing Primary Keys and Data Sets 305

    Path to Nirvana: Steps Toward Intelligent Analytics Evolution 306

    Step 1: Tag, Baby, Tag! 307

    Step 2: Configuring Web Analytics Tool Settings 308

    Step 3: Campaign/Acquisition Tracking 309

    Step 4: Revenue and Uber-intelligence 310

    Step 5: Rich-Media Tracking (Flash, Widgets, Video) 311

    Chapter 11 Guiding Principles for Becoming an Analysis Ninja 313

    Context Is Queen 314

    Comparing Key Metrics Performance for Different Time Periods 314

    Providing Context Through Segmenting 315

    Comparing Key Metrics and Segments Against Site Average 316

    Joining PALM (People Against Lonely Metrics) 318

    Leveraging Industry Benchmarks and Competitive Data 319

    Tapping into Tribal Knowledge 320

    Comparing KPI Trends Over Time 321

    Presenting Tribal Knowledge 322

    Segmenting to the Rescue! 323

    Beyond the Top 10: What's Changed 324

    True Value: Measuring Latent Conversions and Visitor Behavior 327

    Latent Visitor Behavior 327

    Latent Conversions 329

    Four Inactionable KPI Measurement Techniques 330

    Averages 330

    Percentages 332

    Ratios 334

    Compound or Calculated Metrics 336

    Search: Achieving the Optimal Long-Tail Strategy 338

    Compute Your Head and Tail 339

    Understanding Your Brand and Category Terms 341

    The Optimal Search Marketing Strategy 342

    Executing the Optimal Long-Tail Strategy 344

    Search: Measuring the Value of Upper Funnel Keywords 346

    Search: Advanced Pay-per-Click Analyses 348

    Identifying Keyword Arbitrage Opportunities 349

    Focusing on "What's Changed" 350

    Analyzing Visual Impression Share and Lost Revenue 351

    Embracing the ROI Distribution Report 353

    Zeroing In on the User Search Query and Match Types 354

    Chapter 12 Advanced Principles for Becoming an Analysis Ninja 357

    Multitouch Campaign Attribution Analysis 358

    What Is All This Multitouch? 358

    Do You Have an Attribution Problem? 359

    Attribution Models 361

    Core Challenge with Attribution Analysis in the Real World 364

    Promising Alternatives to Attribution Analysis 365

    Parting Thoughts About Multitouch 368

    Multichannel Analytics: Measurement Tips for a Nonline World 368

    Tracking Online Impact of Offline Campaigns 369

    Tracking the Offline Impact of Online Campaigns 376

    Chapter 13 The Web Analytics Career 385

    Planning a Web Analytics Career: Options, Salary Prospects, and Growth 386

    Technical Individual Contributor 388

    Business Individual Contributor 388

    Technical Team Leader 390

    Business Team Leader 391

    Cultivating Skills for a Successful Career in Web Analysis 393

    Do It: Use the Data 393

    Get Experience with Multiple Tools 393

    Play in the Real World 394

    Become a Data Capture Detective 396

    Rock Math: Learn Basic Statistics 396

    Ask Good Questions 397

    Work Closely with Business Teams 398

    Learn Effective Data Visualization and Presentation 398

    Stay Current: Attend Free Webinars 399

    Stay Current: Read Blogs 400

    An Optimal Day in the Life of an Analysis Ninja 401

    Hiring the Best: Advice for Analytics Managers and Directors 403

    Key Attributes of Great Analytics Professionals 404

    Experienced or Novice: Making the Right Choice 405

    The Single Greatest Test in an Interview: Critical Thinking 405

    Chapter 14 HiPPOs, Ninjas, and the Masses: Creating a Data-Driven Culture 407

    Transforming Company Culture: How to Excite People About Analytics 408

    Do Something Surprising: Don't Puke Data 409

    Deliver Reports and Analyses That Drive Action 412

    The Unböring Filter 413

    Connecting Insights with Actual Data 414

    Changing Metric Definitions to Change Cultures: Brand Evangelists Index 415

    The Case and the Analysis 415

    The Problem 416

    The Solution 417

    The Results 417

    The Outcome 418

    An Alternative Calculation: Weighted Mean 418

    The Punch Line 419

    Slay the Data Quality Dragon: Shift from Questioning to Using Data 420

    Pick a Different Boss 420

    Distract HiPPOs with Actionable Insights 422

    Dirty Little Secret 1: Head Data Can Be Actionable in the First Week/Month 422

    Dirty Little Secret 2: Data Precision Improves Lower in the Funnel 423

    The Solution Is Not to Implement Another Tool! 423

    Recognize Diminishing Marginal Returns 424

    Small Site, Bigger Problems 424

    Fail Faster on the Web 425

    Five Rules for Creating a Data-Driven Boss 426

    Get Over Yourself 426

    Embrace Incompleteness 426

    Always Give 10 Percent Extra 427

    Become a Marketer 427

    Business in the Service of Data. Not! 428

    Adopt the Web Analytics 2.0 Mind-Set 428

    Need Budget? Strategies for Embarrassing Your Organization 429

    Capture Voice of Customer 430

    Hijack a Friendly Website 431

    If All Else Fails...Call Me! 432

    Strategies to Break Down Barriers to Web Measurement 432

    First, a Surprising Insight 433

    Lack of Budget/Resources 433

    Lack of Strategy 434

    Siloed Organization 434

    Lack of Understanding 435

    Too Much Data 435

    Lack of Senior Management Buy-In 436

    IT Blockages 437

    Lack of Trust in Analytics 439

    Finding Staff 439

    Poor Technology 439

    Who Owns Web Analytics? 440

    To Centralize or Not to Centralize 440

    Evolution of the Team 441

    Appendix About the Companion CD 443

    Index 447