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LEADER: 07320cam a2200397 i 4500
001 2015000570
003 DLC
005 20150602083546.0
008 150218s2015 enk b 001 0 eng
010 $a 2015000570
020 $a9780749472115 (paperback)
020 $z9780749472122 (ebook)
040 $aDLC$beng$cDLC$erda
042 $apcc
050 00 $aHF5415.125$b.S766 2015
082 00 $a658.8/340285$223
084 $aBUS043000$aBUS043060$aBUS016000$2bisacsh
100 1 $aStrong, Colin$c(Business writer)
245 10 $aHumanizing big data :$bmarketing at the meeting of data, social science and consumer insight /$cColin Strong.
264 1 $aLondon ;$aPhiladelphia :$bKogan Page,$c2015.
300 $ax, 212 pages ;$c24 cm
336 $atext$2rdacontent
337 $aunmediated$2rdamedia
338 $avolume$2rdacarrier
504 $aIncludes bibliographical references and index.
520 $a"Between tweets, likes, comments, blogs, videos and images, today's customer is estimated to generate 2.5 quintillion bytes of data per day. How can marketers utilize the ever-increasing amount of data to better understand and interact with their customers? This book offers advice on how to interpret and incorporate data into an organization's overall marketing strategy. It is designed to help marketers improve customer relationships, enhance the targeting of their marketing efforts, align marketing activities with ultimate goals and objectives, and gain insight into the effectiveness of marketing campaigns and channels.Topics covered include: the current limitations associated with big data, the differences between deriving the what, how and why from data, how to use social science to provide frameworks for a smart data agenda, privacy and personal data and the role of market research in a marketing strategy"--$cProvided by publisher.
520 $a"Big data raises more questions than it answers, particularly for those organizations struggling to deal with what has become an overwhelming deluge of data. It can offer marketers more than simple tactical predictive analytics, but organizations need a bigger picture, one that generates some real insight into human behaviour, to drive consumer strategy rather than just better targeting techniques. Humanizing Big Data guides marketing managers, brand managers, strategists and senior executives on how to use big data strategically to redefine customer relationships for better customer engagement and an improved bottom line. Humanizing Big Data provides a detailed understanding of the way to approach and think about the challenges and opportunities of big data, enabling any brand to realize the value of their current and future data assets. First it explores the 'nuts and bolts' of data analytics and the way in which the current big data agenda is in danger of losing credibility by paying insufficient attention to what are often fundamental tenets in any form of analysis. Next it sets out a manifesto for a smart data approach, drawing on an intelligent and big picture view of data analytics that addresses the strategic business challenges that businesses face. Finally it explores the way in which datafication is changing the nature of the relationship between brands and consumers and why this calls for new forms of analytics to support rapidly emerging new business models. After reading this book, any brand should be in a position to make a step change in the value they derive from their data assets"--$cProvided by publisher.
505 8 $aMachine generated contents note: Preface -- Acknowledgements 01 This changes everything -- The breadth and depth of datafication -- What is data? -- Defining big data -- Qualities of big data -- This book -- NotesPart One Current thinking 02 Is there a view from nowhere? -- Who are you talking to? -- Sources of bias in samples -- The upsides of sampling -- Bigger samples are not always better -- Big data and sampling -- Concluding thoughts -- Notes03 Choose your weapons -- The perils of vanity metrics -- Thinking about thinking: defi ning the questions -- Frameworks to help select metrics -- Tracking your metrics -- From good data to good decisions -- Concluding thoughts -- Notes04 Perils and pitfalls -- Dangers of reading data: the pitfalls of correlations -- Dangers of reading data: the frailties of human judgement -- The pitfalls of storytelling -- Mixing up narrative and causality -- Is theory important? -- Concluding thoughts -- Notes05 The power of prediction -- The growth of data available for prediction -- How good is our ability to predict? -- Understanding the limitations of prediction -- Why some things are easier to predict than other: complex vs simple systems -- The influence of social effects on system complexity -- Building models to make predictions -- Learning to live with uncertainty: the strategy paradox -- Concluding thoughts -- Notes06 The advertisers' dilemma -- Online advertising metrics -- Advertising fraud -- Psychology of online advertising -- Concluding thoughts -- NotesPart Two Smart thinking 07 Reading minds -- The value of linking data sets -- Knowing your customers -- Understanding who we are from our digital exhaust -- New dimensions -- The evolution of segmentation -- Concluding thoughts -- Notes08 The ties that bind -- Why making choices can be so difficult -- Simplifying decision-making -- The role of influence and 'influencers' -- Identifying network effects -- The implications of networks for marketing -- Exploring the importance of social relationships -- Concluding thoughts -- Notes09 Culture shift -- Seeing the world in new ways -- Deconstructing cultural trends -- Exploring the lifecycle of ideas through cultural analytics -- From verbal to visual: the importance of images -- Analysing cultural trends from images -- Concluding thoughts -- Notes10 Bright ideas -- So what do we need to do? -- Developing organization-wide networks of experts -- Using external networks -- Over-ambition? -- Nurturing ideas -- Concluding thoughts -- NotesPart Three Consumer thinking 11 Off limits? -- How people think about data sharing -- Limits to data-mediated relationships -- A model for thinking about data-mediated relationships -- Overstepping data-based relationships 1 -- Looking beyond the data -- Concluding thoughts -- Notes12 Getting personal -- History of self-tracking -- A changing personal data landscape -- The relationship between data ownership and empowerment -- The pitfalls of personal analytics -- Potential solutions for empowerment -- Concluding thoughts -- Notes13 Privacy paradox -- Teenagers and privacy -- The pros and cons of data disclosure -- The behavioural economics of privacy -- Brand challenges -- Trust frameworks and transparency -- The trend towards transparency -- But does transparency work? -- So what should brands do? -- Concluding thoughts -- NotesFinal thoughts -- Index .
650 0 $aMarketing$xData processing.
650 0 $aInternet advertising.
650 0 $aCustomer relations$xManagement.
650 0 $aMarketing research.
650 0 $aBig data.
650 7 $aBUSINESS & ECONOMICS / Marketing / General.$2bisacsh
650 7 $aBUSINESS & ECONOMICS / Marketing / Research.$2bisacsh
650 7 $aBUSINESS & ECONOMICS / Consumer Behavior.$2bisacsh