Details

Predictive Business Analytics


Predictive Business Analytics

Forward Looking Capabilities to Improve Business Performance
Wiley and SAS Business Series 1. Aufl.

von: Lawrence Maisel, Gary Cokins

32,99 €

Verlag: Wiley
Format: PDF
Veröffentl.: 26.09.2013
ISBN/EAN: 9781118227114
Sprache: englisch
Anzahl Seiten: 272

DRM-geschütztes eBook, Sie benötigen z.B. Adobe Digital Editions und eine Adobe ID zum Lesen.

Beschreibungen

<b>Discover the breakthrough tool your company can use to make winning decisions</b> <p>This forward-thinking book addresses the emergence of predictive business analytics, how it can help redefine the way your organization operates, and many of the misconceptions that impede the adoption of this new management capability. Filled with case examples, <i>Predictive Business Analytics</i> defines ways in which specific industries have applied these techniques and tools and how predictive business analytics can complement other financial applications such as budgeting, forecasting, and performance reporting.</p> <ul> <li>Examines how predictive business analytics can help your organization understand its various drivers of performance, their relationship to future outcomes, and improve managerial decision-making</li> <li>Looks at how to develop new insights and understand business performance based on extensive use of data, statistical and quantitative analysis, and explanatory and predictive modeling</li> <li>Written for senior financial professionals, as well as general and divisional senior management</li> </ul> <p>Visionary and effective, <i>Predictive Business Analytics</i> reveals how you can use your business's skills, technologies, tools, and processes for continuous analysis of past business performance to gain forward-looking insight and drive business decisions and actions.</p>
<p>Preface xv</p> <p><b>Part One “Why” 1</b></p> <p><b>Chapter 1 Why Analytics Will Be the Next Competitive Edge 3</b></p> <p>Analytics: Just a Skill, or a Profession? 4</p> <p>Business Intelligence versus Analytics versus Decisions 5</p> <p>How Do Executives and Managers Mature in Applying Accepted Methods? 6</p> <p>Fill in the Blanks: Which X Is Most Likely to Y? 6</p> <p>Predictive Business Analytics and Decision Management 7</p> <p>Predictive Business Analytics: The Next “New” Wave 9</p> <p>Game-Changer Wave: Automated Decision-Based Management 10</p> <p>Preconception Bias 11</p> <p>Analysts’ Imagination Sparks Creativity and Produces Confidence 12</p> <p>Being Wrong versus Being Confused 12</p> <p>Ambiguity and Uncertainty Are Your Friends 14</p> <p>Do the Important Stuff First—Predictive Business Analytics 16</p> <p>What If . . . You Can 17</p> <p>Notes 19</p> <p><b>Chapter 2 The Predictive Business Analytics Model 21</b></p> <p>Building the Business Case for Predictive Business Analytics 27</p> <p>Business Partner Role and Contributions 28</p> <p>Summary 29</p> <p>Notes 29</p> <p><b>Part Two Principles and Practices 31</b></p> <p><b>Chapter 3 Guiding Principles in Developing Predictive Business Analytics 33</b></p> <p>Defining a Relevant Set of Principles 34</p> <p>Principle 1: Demonstrate a Strong <i>Cause</i>-<i>and</i>-<i>Effect </i>Relationship 34</p> <p>Principle 2: Incorporate a <i>Balanced </i>Set of Financial and Nonfinancial, Internal and External Measures 36</p> <p>Principle 3: Be <i>Relevant</i>, <i>Reliable</i>, and <i>Timely </i>for Decision Makers 37</p> <p>Principle 4: Ensure Data <i>Integrity </i>38</p> <p>Principle 5: Be <i>Accessible</i>, Understandable, and Well <i>Organized </i>39</p> <p>Principle 6: Integrate into the <i>Management </i>Process 39</p> <p>Principle 7: Drive <i>Behaviors </i>and <i>Results </i>40</p> <p>Summary 41</p> <p><b>Chapter 4 Developing a Predictive Business Analytics Function 43</b></p> <p>Getting Started 44</p> <p>Selecting a Desired Target State 46</p> <p>Adopting a PBA Framework 49</p> <p>Developing the Framework 49</p> <p>Summary 60</p> <p>Notes 60</p> <p><b>Chapter 5 Deploying the Predictive Business Analytics Function 61</b></p> <p>Integrating Performance Management with Analytics 63</p> <p>Performance Management System 64</p> <p>Implementing a Performance Scorecard 67</p> <p>Management Review Process 76</p> <p>Implementation Approaches 78</p> <p>Change Management 80</p> <p>Summary 81</p> <p>Notes 82</p> <p><b>Part Three Case Studies 83</b></p> <p><b>Chapter 6 MetLife Case Study in Predictive Business Analytics 85</b></p> <p>The Performance Management Program 88</p> <p>Implementing the MOR Program 93</p> <p>Benefits and Lessons Learned 108</p> <p>Summary 108</p> <p>Notes 108</p> <p><b>Chapter 7 Predictive Performance Analytics in the Biopharmaceutical Industry 109</b></p> <p>Case Studies 113</p> <p>Summary 127</p> <p>Note 127</p> <p><b>Part Four Integrating Business Methods and Techniques 129</b></p> <p><b>Chapter 8 Why Do Companies Fail (Because of Irrational Decisions)? 131</b></p> <p>Irrational Decision Making 131</p> <p>Why Do Large, Successful Companies Fail? 132</p> <p>From Data to Insights 134</p> <p>Increasing the Return on Investment from Information Assets 135</p> <p>Emerging Need for Analytics 136</p> <p>Summary 137</p> <p>Notes 138</p> <p><b>Chapter 9 Integration of Business Intelligence, Business Analytics, and Enterprise Performance Management 139</b></p> <p>Relationship among Business Intelligence, Business Analytics, and Enterprise Performance Management 140</p> <p>Overcoming Barriers 143</p> <p>Summary 144</p> <p>Notes 145</p> <p><b>Chapter 10 Predictive Accounting and Marginal Expense Analytics 147</b></p> <p>Logic Diagrams Distinguish Business from Cost Drivers 148</p> <p>Confusion about Accounting Methods 150</p> <p>Historical Evolution of Managerial Accounting 152</p> <p>An Accounting Framework and Taxonomy 153</p> <p>What? So What? Then What? 156</p> <p>Coexisting Cost Accounting Methods 159</p> <p>Predictive Accounting with Marginal Expense Analysis 160</p> <p>What Is the Purpose of Management Accounting? 160</p> <p>What Types of Decisions Are Made with Managerial Accounting Information? 161</p> <p>Activity-Based Cost/Management as a Foundation for Predictive Business Accounting 164</p> <p>Major Clue: Capacity Exists Only as a Resource 165</p> <p>Predictive Accounting Involves Marginal Expense Calculations 166</p> <p>Decomposing the Information Flows Figure 169</p> <p>Framework to Compare and Contrast Expense Estimating Methods 172</p> <p>Predictive Costing Is Modeling 173</p> <p>Debates about Costing Methods 174</p> <p>Summary 175</p> <p>Notes 175</p> <p><b>Chapter 11 Driver-Based Budget and Rolling Forecasts 177</b></p> <p>Evolutionary History of Budgets 180</p> <p>A Sea Change in Accounting and Finance 182</p> <p>Financial Management Integrated Information Delivery Portal 183</p> <p>Put Your Money Where Your Strategy Is 185</p> <p>Problem with Budgeting 185</p> <p>Value Is Created from Projects and Initiatives, Not the Strategic Objectives 187</p> <p>Driver-Based Resource Capacity and Spending Planning 189</p> <p>Including Risk Mitigation with a Risk Assessment Grid 190</p> <p>Four Types of Budget Spending: Operational, Capital, Strategic, and Risk 192</p> <p>From a Static Annual Budget to Rolling Financial Forecasts 194</p> <p>Managing Strategy Is Learnable 195</p> <p>Summary 195</p> <p>Notes 196</p> <p><b>Part Five Trends and Organizational Challenges 197</b></p> <p><b>Chapter 12 CFO Trends 199</b></p> <p>Resistance to Change and Presumptions of Existing Capabilities 199</p> <p>Evidence of Deficient Use of Business Analytics in Finance and Accounting 201</p> <p>Sobering Indication of the Advances Yet Needed by the CFO Function 202</p> <p>Moving from Aspirations to Practice with Analytics 203</p> <p>Approaching Nirvana 210</p> <p>CFO Function Needs to Push the Envelope 210</p> <p>Summary 215</p> <p>Notes 216</p> <p><b>Chapter 13 Organizational Challenges 217</b></p> <p>What Is the Primary Barrier Slowing the Adoption Rate of Analytics? 219</p> <p>A Blissful Romance with Analytics 220</p> <p>Why Does Shaken Confidence Reinforce One’s Advocacy? 221</p> <p>Early Adopters and Laggards 222</p> <p>How Can One Overcome Resistance to Change? 224</p> <p>The Time to Create a Culture for Analytics Is Now 226</p> <p>Predictive Business Analytics: Nonsense or Prudence? 227</p> <p>Two Types of Employees 227</p> <p>Inequality of Decision Rights 228</p> <p>What Factors Contribute to Organizational Improvement? 229</p> <p>Analytics: The Skeptics versus the Enthusiasts 229</p> <p>Maximizing Predictive Business Analytics: Top-Down or Bottom-Up Leadership? 234</p> <p>Analysts Pursue Perceived Unachievable Accomplishments 235</p> <p>Analysts Can Be Leaders 236</p> <p>Summary 237</p> <p>Notes 237</p> <p>About the Authors 239</p> <p>Index 243</p>
<p><b>LAWRENCE S. MAISEL,</b> President of DecisionVu, specializes in corporate performance management, financial management, and IT value management. He has extensive industry experiences with numerous Global 1000 companies including MetLife, TIAA-CREF, Citigroup, GE, Bristol-Myers, Pfizer, and News Corp/Fox Entertainment. Larry co-created with Drs. Kaplan and Norton the Balanced Scorecard Approach, and co-authored with Drs. Kaplan and Cooper <i>Implementing Activity-Based Cost Management</i>. He is a CPA, holds a BA from NYU and an MBA from Pace University, and was an adjunct professor at Columbia University's Graduate Business School. Contact him at LMaisel@DecisionVu.com. <p><b>GARY COKINS</b> is the founder of Analytics-Based Performance Management, LLC. He is an internationally recognized expert, speaker, and author in advanced cost management and performance improvement systems. He served fifteen years as a consultant with Deloitte Consulting, KPMG, and Electronic Data Systems (EDS, now part of HP). From 1997 until recently, Gary was in business development with SAS, a leading provider of enterprise performance management and business analytics and intelligence software. He has a degree in operations research from Cornell University and an MBA from Northwestern University Kellogg School of Management. Contact him at gcokins@garycokins.com.
<p><b>PREDICTIVE BUSINESS ANALYTICS</b></br> Forward-Looking Capabilities to Improve Business Performance <p>With the massive abundance of big data, a lack of flexible strategies, and the business world growing increasingly more complex thanks to globalization, more and more organizations are clamoring for better processes and tools to make smarter decisions. <p>Redefine the way your organization does business with the techniques and tools in <i>Predictive Business Analytics</i>. Industry leaders Lawrence Maisel and Gary Cokins equip you with the definitive tools to anticipate future events, forecast possible outcomes, and make decisions that translate into the ultimate competitive advantage. <p>In <i>Predictive Business Analytics,</i> Maisel and Cokins shatter the myths about this new paradigm, revealing how you can integrate predictive business analytics with other important business management and improvement methods, such as budgeting, forecasting, and performance reporting. <p>With an abundance of case examples, this guide insightfully considers: <ul> <li>Why predictive business analytics is the next "new" wave</li> <li>Putting the predictive business analytics model to work in your business</li> <li>Developing predictive business analytics—the guiding principles</li> <li>How to get started with a predictive business analytics function</li> <li>Deploying the predictive business analytics function</li> <li>What happens when you integrate business intelligence, business analytics, and enterprise performance management</li> <li>Putting your money where your strategy is: driver-based budgets</li> <li>Moving from aspirations to practice with analytics</li> </ul> <p>Read <i>Predictive Business Analytics</i> and exploit the power of data in your business to get ahead of the competition—and stay there.

Diese Produkte könnten Sie auch interessieren:

Mindfulness
Mindfulness
von: Gill Hasson
PDF ebook
12,99 €
Counterparty Credit Risk, Collateral and Funding
Counterparty Credit Risk, Collateral and Funding
von: Damiano Brigo, Massimo Morini, Andrea Pallavicini
EPUB ebook
69,99 €