欢迎来到麦多课文档分享! | 帮助中心 海量文档,免费浏览,给你所需,享你所想!
麦多课文档分享
全部分类
  • 标准规范>
  • 教学课件>
  • 考试资料>
  • 办公文档>
  • 学术论文>
  • 行业资料>
  • 易语言源码>
  • ImageVerifierCode 换一换
    首页 麦多课文档分享 > 资源分类 > PPT文档下载
    分享到微信 分享到微博 分享到QQ空间

    Adaptive Query Processing for Data Aggregation-.ppt

    • 资源ID:378034       资源大小:1.05MB        全文页数:32页
    • 资源格式: PPT        下载积分:2000积分
    快捷下载 游客一键下载
    账号登录下载
    微信登录下载
    二维码
    微信扫一扫登录
    下载资源需要2000积分(如需开发票,请勿充值!)
    邮箱/手机:
    温馨提示:
    如需开发票,请勿充值!快捷下载时,用户名和密码都是您填写的邮箱或者手机号,方便查询和重复下载(系统自动生成)。
    如需开发票,请勿充值!如填写123,账号就是123,密码也是123。
    支付方式: 支付宝扫码支付    微信扫码支付   
    验证码:   换一换

    加入VIP,交流精品资源
     
    账号:
    密码:
    验证码:   换一换
      忘记密码?
        
    友情提示
    2、PDF文件下载后,可能会被浏览器默认打开,此种情况可以点击浏览器菜单,保存网页到桌面,就可以正常下载了。
    3、本站不支持迅雷下载,请使用电脑自带的IE浏览器,或者360浏览器、谷歌浏览器下载即可。
    4、本站资源下载后的文档和图纸-无水印,预览文档经过压缩,下载后原文更清晰。
    5、试题试卷类文档,如果标题没有明确说明有答案则都视为没有答案,请知晓。

    Adaptive Query Processing for Data Aggregation-.ppt

    1、Adaptive Query Processing for Data Aggregation:,Mining, Using and Maintaining Source Statistics,M.S Thesis Defense by Jianchun FanCommittee Members: Dr. Subbarao Kambhampati (chair) Dr. Huan Liu Dr. Yi Chen April 13, 2006,Introduction,Data Aggregation: Vertical Integration,Mediator,R (A1, A2, A3, A4

    2、, A5, A6),S1,R1 (A1, A2, _, _, A5, A6),S2,R2 (A1, _, A3, A4, A5, A6),S3,R1 (A1, A2, A3, A4, A5, _),Introduction,Query Processing in Data Aggregation Sending every query to all sources ? Increasing work load on sources Consuming a lot of network resources Keeping users waiting Primary processing task

    3、:Selecting the most relevant sources regarding difference user objectives, such as completeness and quality of the answers and response time Need several types of sources statistics to guide source selection Usually not directly available,Introduction,Challenges Automatically gather various types of

    4、 source statistics to optimize individual goal Many answers (high coverage) Good answers (high density) Answered quickly (short latency) Combine different statistics to support multi-objective query processing Maintain statistics dynamically,System Overview,System Overview,Test beds: Bibfinder: Onli

    5、ne bibliography mediator system, integrating DBLP, IEEE xplore, CSB, Network Bibligraph, ACM Digital Library, etc. Synthetic test bed: 30 synthetic data sources (based on Yahoo! Auto database) with different coverage, density and latency characteristics.,Outline,Introduction & Overview Coverage/Over

    6、lap Statistics Learning Density Statistics Learning Latency Statistics Multi-Objective Query Processing Other Contribution Conclusion,Coverage/Overlap Statistics,Coverage: how many answers a source provides for a given query Overlap: how many common answers a set of sources share for a given query B

    7、ased on Nie & Kambkampati ICDE 2004,Density Statistics,Coverage measures “vertical completeness” of the answer set “horizontal completeness” is important too quality of the individual answers,Density statistics measures the horizontal completeness of the individual answer tuples,Defining Density,Den

    8、sity of a source w.r.t a given query:Average of density of all answers,Select A1, A2, A3, A4 From S Where A1 v1 Density = (1 + 0.5 + 0.5 + 0.75) / 4= 0.675,Learning density for every possible source/query combination? too costly The number of possible queries is exponential to the number of attribut

    9、es,Projection Attribute set,Selection Predicates,Learning Density Statistics,A more realistic solution: classify the queries and learn density statistics only w.r.t the classes,Select A1, A2, A3, A4 From S Where A1 v1,Projection Attribute set,Selection Predicates,Assumption: If a tuple t represents

    10、a real world entity E, then whether or not t has missing value on attribute A is independent to Es actual value of A.,Learning Density Statistics,Query class for density statistics: projection attribute set For queries whose projection attribute set is (A1, A2, , Am), 2m different types of answers,2

    11、2 different density patterns: dp1 = (A1, A2) dp2 = (A1, A2) dp3 = (A1, A2) dp4 = (A1, A2),Density(A1, A2 | S) = P(dp1 | S) * 1.0 + P(dp2 | S) * 0.5 + P(dp3 | S) * 0.5 + P(dp4 | S) * 0.0,Learning Density Statistics,R(A1, A2, , An),2n possible projection attribute set,(A1) (A1, A2) (A1, A3) (A1, A2, ,

    12、 Am) ,2m possible density patterns,(A1, A2, , Am) (A1, A2, , Am) (A1, A2, , Am) (A1, A2, , Am),For each data source S, the mediator needs to estimate joint probabilities!,Learning Density Statistics,Independence Assumption: the probability of tuple t having a missing value on attribute A1 is indepen

    13、dent of whether or not t has a missing value on attribute A2. For queries whose projection attribute set is (A1, A2, , Am), only need to assess m probability values for each source!,Joint distribution: P(A1, A2 | S) = P(A1 | S) * (1 - P(A2 | S),Learned from a sample of the data source,Outline,Introd

    14、uction & Overview Coverage/Overlap Statistics Learning Density Statistics Learning Latency Statistics Multi-Objective Query Processing Other Contribution Conclusion,Latency Statistics,Existing work: source specific measurement of response time Variations on time, day of the week, quantity of data, e

    15、tc. However, latency is often query specific For example, some attributes are indexed How to classify queries to learn latency? Binding Pattern,Same,different,Latency Statistics,Using Latency Statistics,Learning is straightforward: average on a group of training queries for each binding pattern Effe

    16、ctiveness of binding pattern based latency statistics,Outline,Introduction & Overview Coverage/Overlap Statistics Learning Density Statistics Learning Latency Statistics Multi-Objective Query Processing Other Contribution Conclusion,Multi-Objective Query Processing,Users may not be easy to please “g

    17、ive me some good answers fast” “I need many good answers” These goals are often conflicting! decoupled optimization strategy wont work Example: S1(coverage = 0.60, density = 0.10) S2(coverage = 0.55, density = 0.15) S3(coverage = 0.50, density = 0.50),Multi-Objective Query Processing,The mediator ne

    18、eds to select sources that are good in many dimensions “Overall optimality” Query selection plans can be viewed as 3-dimentional vectors Option1: Pareto Optimal Set Option2: aggregating multi-dimension vectors into scalar utility values,Combining Density and Coverage,Combining Density and Coverage,C

    19、ombining Density and Coverage,Multi-Objective Query Processing,discount modelweighted sum model,2D coverage,Multi-Objective Query Processing,Outline,Introduction & Overview Coverage/Overlap Statistics Learning Density Statistics Learning Latency Statistics Multi-Objective Query Processing Other Cont

    20、ribution Conclusion,Other Contribution,Incremental Statistics Maintenance (In Thesis),Other Contribution,A snapshot of public web services (not in Thesis) Sigmod Record Mar. 2005,Implications and Lessons learned: Most publicly available web services support simple data sensing and conversion, and ca

    21、n be viewed as distributed data sources Discovery/Retrival of public web services are not beyond what the commercial search engines do. Composition: Very few services available little correlations among them Most composition problems can be solved with existing data integration techniques,Other Cont

    22、ribution,Query Processing over Incomplete Autonomous Database with Hemal Khatri Retrieving uncertain answers where constrained attributes are missingLearning Approximate Functional Dependency and Classifiers to reformulate the original user queries,Select * from cars where model = “civic”,(Make, Bod

    23、y Style) Model Q1: select * from cars where make = Honda and BodyStyle = “sedan” Q2: select * from cars where make = Honda and BodyStyle = “coupe”,Conclusion,A comprehensive framework Automatically learns several types of source statistics Uses statistics to support various query processing goal Optimize in individual dimensions (coverage, density & latency) Joint Optimization over multiple objectives Adaptive to different users own preferences Dynamically maintains source statistics,


    注意事项

    本文(Adaptive Query Processing for Data Aggregation-.ppt)为本站会员(fuellot230)主动上传,麦多课文档分享仅提供信息存储空间,仅对用户上传内容的表现方式做保护处理,对上载内容本身不做任何修改或编辑。 若此文所含内容侵犯了您的版权或隐私,请立即通知麦多课文档分享(点击联系客服),我们立即给予删除!




    关于我们 - 网站声明 - 网站地图 - 资源地图 - 友情链接 - 网站客服 - 联系我们

    copyright@ 2008-2019 麦多课文库(www.mydoc123.com)网站版权所有
    备案/许可证编号:苏ICP备17064731号-1 

    收起
    展开