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The Networked Economy (9) : Information Management, Strategy, and Innovation 网络经济:信息管理,战略和创新. Data Business. Google data sources. Search Query sequence Choice set Which link the user chooses Queries and their refinements, clicks on links and returns Use individually and in the aggregate
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The Networked Economy (9) : Information Management, Strategy, and Innovation网络经济:信息管理,战略和创新 Data Business
Google data sources • Search • Query sequence • Choice set • Which link the user chooses • Queries and their refinements, clicks on links and returns • Use individually and in the aggregate • Use: Search quality • Use: Trends • Gmail • Content and social relationships • Opening up the social graph (Orkut) • Response behavior: model • Use: relevance ranking • Use: Discovery • Spam • Mark as spam
Google data sources • Toolbar • Since 2002 • Follow user across sites • Always with user, give data to get data • Notes • Annotate web pages • Analytics • Javascript embedded by site owner • Gives insight e.g., on how popular a given link is • Insight in what people do going through websites • Reader • Read, Mark, Save, Tag • Forward to friend • Docs • Content and social relationships
Google data sources • Google groups • Vs Wiki / Google docs • Talk • E.g., chat on webpage • Maps • Intent • Repository of 3D objects • UGC, being able to change info (200m) • Location • Phone: My Location feature • GPS • Calendar • Future
Google data sources • Design tools for home • Creates qualified leads for e.g., window manufacturer • Checkout • From the cradle to the grave • For purchases of higher priced items, process of learning about product dimensions etc • Payment systems • Google checkout is a low margin business that drives the high-margin business of ads
The Consumer Data Revolution • The First Data Revolution • Example: Amazon.com • Mainly implicit data, some explicit data • The Second Data Revolution • Example: Facebook • Mainly explicit data • Customers start interacting • The Consumer Data Revolution • How the attitudes of individuals to their info is changing
Focus on Interactions • Who knows about your relationships with others? • How does Google (or Amazon) differ from IBM (or Microsoft)? • Past, present and future • Past • Given data, get me insights • Present • Given problem, get me data • Future: Consumer data revolution • I give you data, you give me money! • Framework • Architectures of experimentation (Web1) • Give set of possible actions, do experiments • Architectures of participation (Web2) • Architectures of interaction (Web3)
Communication, Computation and Information • 1970’s • “Experts” learn a language the computer understands • Digitizing back office • 10M people • 1980’s • Front office interacts with back office • 100M people • 1990’s • Customers interact with firm • Search: 1bn people poking at stuff • 2000’s • 1bn people poking at stuff • 100M people producing stuff • Peer-production and collaboration • Customers interact with customers • Now • Discovery in addition to search • Serendipity: Discover what not searched • People in addition to pages • Social commerce • Mobile in addition to PC (and paper) • Continuous partial attention • Model current situation plus history • Sensing
Survey 调查问卷 • “…. Please let us know what you plan to do at Amazon.com today”“……请告诉我今天你计划在亚马逊网站上做什么” • Free responses, hand-coded into non-exclusive categories自愿回复,将回复进行分类编码,归入一些非互斥的类型 • Multiple assignments possible可能回复多种可能 • Average: 1.2 categories per response平均:每个回复涵盖1.2个种类 • Number of responses: 1023回复数量:1023 • Response rate: 3.1%回复率:3.1% • Date: February 11-12, 2003日期:2003年二月11-12日
Stated vs revealed preferences 自认的偏好与实际的偏好 • Obtain insights by combining individual survey response with click analysis:结合个人调查问卷的回复与点击情况分析,得出一些结论 • Look at those who ended up buying something:最终购物的网民中 • Only about one-half of those making a purchase indicated that they wanted to buy something in this visit只有1/2事先称计划购物 • Look at those who said they wanted to buy something:最初想来购物的网民中 • Only about one-third of those indicating intent to buy ended up making a purchase in that visit只有1/3最终完成购物
Let Amazon.com access your camera and microphone? • November 2007 • Adobe Flash installed on820 million Internet-connected computers and mobile devices
Integrated Media Measurement Inc • IMMI • Listening into your room • every 30 seconds, • for 10 seconds.
Data at the heart of the Digital Networked Economy • Clicks • Music • Dating
Give data to get data about applicants (JobScore) • Use information about candidates from interviews at other companies
加入购物车 戴维斯的专辑 Also want to make recommendations!添加推荐! 去收银台 等一下!再加16.01美元就能……
购买戴维斯专辑的消费者 也买了另两张专辑 想买戴维斯专辑的消费者 同时浏览了其它同类专辑 Also want to make recommendations!添加推荐! • Substitutes (buy instead of)替代(选择购买) • Customers who shopped for X also shopped for Y (based on clicks)Z买了X的消费者也会再 • Complements (buy in addition to)互补(额外购买) • Customers who bought X also bought Y买了X的消费者会再买Y
Result: Right vs Left对比结果:左还是右 • Metrics 衡量标准 • Conversion rate: Percentage of visits placing an order转化率:下订单的浏览者所占的比例 • Order size: Number of additional (from the second page) items put into cart 订单大小:(从第二页起)新购商品数量 • Result 结果 • “Your Shopping Cart” on right is about 1% better than on left “Your Shopping Cart”置于右侧比置于左侧的效果提高1%
The Data Business: Who Pays Whom? • Value of data proportionally to their impact on decisions • Traditional data business • Acxiom • Who do I send my advertisements to? • (economics of communication) • Maps • What route do I take? • (discussed earlier) • OAG • What flight suits me best? • (user generated, screen-scraped) • MLS (Multiple listing service) • What house do I buy? • (user generated: Zillow, Redfin, Trulio) • Contacts • Who do I sell to? Hire? • (LinkedIn, jigsaw)
Buy and trade business cards (Jigsaw) • 7M business cards (2007.12) • 200k members • Community corrects • Loss of control
Where do people go for information? • 20 years ago: Produced news • Publicized opinion • 10 years ago: Search • Search: Already know what you are looking for • Discovery: Find something you didn’t know you were looking for (Serendipity) • Blogs, Wikipedia • Now: Social network • Discover via people you are connected to • “Generation C”
Viral Marketing • Only 14% of people believe information passed to them by government and advertising • 90% of people believe information passed to them by friends and family • 80% of all consumer decisions are influenced by word-of mouth • 89% of consumers recommend products or services that they like to others. • Word-of-mouth is 9X as effective as advertising in converting unfavorable or neutral pre-dispositions into positive attitudes • Word-of-mouth is 4X as effective as personal selling in influencing consumers to switch brands • Viral Marketing works well because context, content, and targeted individual (recipient) are chosen by a friend
The Consumer Data Revolution: Who Pays Whom? • What does Google know about you? • Key: Users now actively contributing data • Four stages • The data business • Summary • Data companies pay employees to create data • Implicitly generated data (traces) • Experiments • Users contribute data • Incentives • Data about themselves, about others, about relationships • (not binary) • Users expect value for themselves
Thank you! Andreas Weigend+1 (650) 906-5906andreas@weigend.comwww.weigend.comwww.weigend.com/blog