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WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy, Google Daisy Zhe Wang, UC Berkeley Eugene Wu, MIT Yang Zhang, MIT Proceedings of VLDB '08, Auckland, New Zealand Presented by : Udit Joshi
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WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Dec 18, 2015

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Page 1: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

WebTables: Exploring the Power of Tables on the Web

Michael J. Cafarella, University of Washington (presently with University of Michigan)

Alon Halevy, GoogleDaisy Zhe Wang, UC Berkeley

Eugene Wu, MITYang Zhang, MIT

Proceedings of VLDB '08, Auckland, New Zealand

Presented by : Udit Joshi

Page 2: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Introduction

• Web : A corpus of unstructured documents• Relational data often encountered• 14.1 billion HTML tables extracted by crawl• Non-relational tables filtered out• Corpus of 154M (1%) high quality relations • Searching and Ranking• Leveraging the statistical information

Page 3: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

A typical use of the table tag to describe relational data

Page 4: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Contribution

• Ample user demand for structured data, visualisation• Around 30 million queries from Google’s 1-day log• Extracting a corpus of high quality relations (previous

work)• Determining effective Relation Ranking methods for

search• Analyzing and leveraging this corpus

Page 5: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Outline

•Relation Extraction

•Attribute Correlation Statistics Database (ACSDb)

Data Model

•Challenges

•Ranking Algorithms

Relation Search

•Schema auto-complete

•Attribute synonym finding

•Join graph traversal

ACSDb Applications

Experimental Results

Page 6: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Data Model

• Relation Extraction• Attribute Correlation Statistics Database

(ACSDb)

Page 7: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Relation Recovery

• Crawl based on <table> tag• Filter out non relational data

Relation extraction pipeline

Page 8: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Use of Table Tag to Describe Relational Data

Page 9: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Deep Web• Tables behind HTML forms• http://factfinder.census.gov/, http://www.cars.com/• Most deep web data not crawlable• Data in the Deep Web is huge• Google’s Deep Web Crawl Project uses ‘Surfacing’• Precomputes set of relevant form submissions• Search query for “citibank atm 94043” returns a parameterized

URL:http://locations.citibank.com/citibankV2/Index.aspx?zip=94022• Corpus 40% from deep web sources

Page 10: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Relational Recovery

• Two stages for extraction system:– Relational filtering (for “good” relations)– Metadata detection (in top row of table)

• HTML parser on a page crawl • 14.1B instances of the <table> tag.• Script to disregard tables used for layout,

forms, calendars, etc.

Page 11: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Relational Filtering

• Human judgment needed• 2 independent judges given training data• Scored from 1-5.• Qualifying score > 4

Page 12: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Relational Filtering

• Machine-learning classification problem• Pair human classifications to a set of automatically

extracted table features• Forms a supervised training set for the statistical learner

Statistics to help distinguish relational tables

> 1

less variation

Page 13: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Metadata Detection

• Only per-attribute labels needed.• Used in improving rank quality, data

visualization, construction of ACSDb.

Features to detect the header row in a table

Page 14: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Relation Extractor’s Performance

high recall low precision

equal weight

Page 15: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Data Model

• Relation Extraction• Attribute Correlation Statistics Database

(ACSDb)

Page 16: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Attribute Correlation Statistics Database (ACSDb)

• Simple collection of statistics about schema attributes

• Derived from corpus of html tables• combo_make_model_year = 13

single_make = 3068• Available as a single file for download• 5.4M unique attribute names, 2.6M unique

schemas

Source : http://www.eecs.umich.edu/~michjc/acsdb.html

Page 17: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Schema Freq

ACSDbRecovered Relations

name addr city state

zip

Dan S 16 Park Seattle WA 98195

Alon H 129 Elm Belmont CA 94011

make model

year

Toyota Camry 1984

name size last-modified

Readme.txt 182 Apr 26, 2005

cac.xml 813 Jul 23, 2008

make model year

color

Chrysler Volare 1974 yellow

Nissan Sentra 1994 red

make model year

Mazda Protégé 2003

Chevrolet Impala 1979

{make, model, year} 2

{name, size, last-modified} 1

{name, addr, city, state, zip} 1

{make, model, year, color} 1

• ACSDb used for computing attribute probabilities– p(“make”) = 3/5

p(“zip”) = 1/5– p(“addr” | “name”) = 1/2

Page 18: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Structure of Corpus

• Corpus R of databases• Each database R ∈ R is a single relation• URL Ru and offset Ri within page define R

• Schema Rs is an ordered list of attributes

Rs = [Grand Prix, Date, Winning Driver……]

• Rt is the list of tuples, size of tuple t ≤|Rs|

Page 19: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Extracting ACSDb from Corpus

Function createACS(R)A = {}seenDomains = {}for all R ∈ R

if getDomain(R.u) ∈ seenDomains[R.S] then seenDomains[R.S].add(getDomain(R.u)) A[R.S] = A[R.S] + 1end if

end for

Page 20: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Distribution of frequency-ordered unique schemas in ACSDb

Small number of schemas appear very frequently

Page 21: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Relational Search

• Challenges• Ranking Algorithms

Page 22: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Relational Search

• Search engine style keyword based queries• Query-appropriate visualizations• Structured operations supported over search

results• Good search relevance is the key

Page 23: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Relational Search

Keyword query

Possible visualization

Ranked list of databases returned

Page 24: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Relation Ranking Challenges

• Relations are a mixture of “structure” and “content”

• Lack incoming hyperlink anchor text used in traditional IR

• PageRank style metrics unsuitable• Inverted Index unsuitable

Page 25: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Relation Ranking Challenges

• No domain-specific schema graph• Applying word frequency to embedded tables• Factoring relations specific features– schema

elements, presence of keys, size of relation, # of NULLs

Page 26: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Relational Search

• Challenges• Ranking Algorithms

Page 27: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Naïve Rank• Query q and top k parameter as input • Query sent to search engine• Fetches top-k pages ,extracts tables from each

page• Stops even if less than k tables returned

1: Function naiveRank(q, k):2: let U = urls from web search for query q3: for i = 0 to k do4: emit getRelations(U[i])5: end for

Page 28: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Filter Rank• Slight improvement• Ensures k relations extracted

1: Function filterRank(q, k):2: let U = ranked urls from web search for query q3: let numEmitted = 04: for all u U do∈5: for all r getRelations(u) do∈6: if numEmitted >= k then7: return8: end if9: emit r; numEmitted + +10: end for11: end for

Page 29: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Feature Rank• No reliance on existing search engine• Uses several features to score each extracted

relation in the corpus• Feature scores combined using Linear Regression

Estimation (LRE) • LRE trained on thousand (q,relation) pairs• Judged by two judges on a scale of 1-5.• Results sorted on score

Page 30: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Feature Rank

1: Function featureRank(q, k):2: let R = set of all relations extracted from corpus3: let score(r R) = combination of per-relation features∈4: sort r R by score(r)∈5: for i = 0 to k do6: emit R[i]7: end for

Query independent features:# rows, # colshas-header?# of NULLs in table

Query dependent features:document-search rank of source page# hits on header# hits on leftmost column# hits on second-to-leftmost column# hits on table body

Subject matterSemantic key

Page 31: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Schema Rank• Uses ACSDb-based schema coherency score• Coherent Schema implies tighter relation• High: {make, model}• Low: {make, zipcode}• Pointwise Mutual Information (PMI) determines how

strongly two items are related.• Positive (strongly correlated) , Negative (negatively

correlated), 0 independent• Coherency score for schema S is average pairwise

PMI scores over all pairs of attributes in the schema.

Page 32: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Schema Rank• Coherency Score

• Pointwise Mutual Information (PMI)

• 0 , + & -

1: Function cohere(R):2: totalPMI = 03: for all a attrs(R), b attrs(R), a ≠ b do∈ ∈4: totalPMI = PMI(a, b)5: end for6: return totalPMI/(|R| (|R| − 1))∗

Page 33: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Indexing

• Inverted index (term -> docid, offset) • WebTables data exists in two dimensions• (term -> tableid, (x, y) offsets) better suited for ranking

function• Supports queries with spatial operators like samerow and

samecol• Example: Paris and France on same row,

Paris, London and Madrid in same column.

Page 34: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Web Tables Search System

Index split across servers

Page 35: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

ACSDb Applications

• Schema Auto Complete• Attribute Synonym-Finding• Join Graph Traversal

Page 36: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Schema Auto-Complete

• To assist novice database designers• User enters one or more domain-specific attributes

(example: “make”)• System guesses suggestions appropriate to the target

domain (example: “model”, “year”, “price”, “mileage”)

Page 37: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Schema Auto-Complete

• Maximize p(S-I | I)• Probability values computed from ACSDb• Add to S from overall attribute set A• Threshold t set to .01

Page 38: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

ACSDb Applications

• Schema Auto Complete• Attribute Synonym-Finding• Join Graph Traversal

Page 39: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Attribute Synonym-Finding

• Traditionally done using Thesauri• Do not support non-natural-language strings eg

tel-# • Input set of context attributes, C• Output list of attribute pairs P likely to be

synonymous in schemas that contain C• Example: For attribute “artist”, output is

“song/track”.

Page 40: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Attribute Synonym-Finding• For synonymous attributes a,b p(a,b) = 0• If p(a,b) = 0 & p(a)p(b) is large, syn score

high.• Synonyms appear in similar contexts C: for a

third attribute z, z C, z A, ∈ ∈p(z|a,C) ≈ p(z|b,C)

• If a, b always “replace” each other then denominator ≈ 0 else denominator is large

Page 41: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Attribute Synonym-Finding

1: Function SynFind(C, t):2: R = []3: A = all attributes that appear in ACSDb with C4: for a A, b A, s.t. a ≠ b do∈ ∈5: if (a, b) ACSDb then ∈6: // Score candidate pair with syn function7: if syn(a, b) > t then8: R.append(a, b)9: end if10: end if11: end for12: sort R in descending syn order13: return R

Page 42: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

ACSDb Applications

• Schema Auto Complete• Attribute Synonym-Finding• Join Graph Traversal

Page 43: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Join Graph Traversal

• Assist a schema designer• Join Graph N,L • Node for every unique schema, undirected join link

between any 2 schemas sharing a label• Join graph cluttered• Cluster together similar schema neighbors

Page 44: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Join Neighbor Similarity• Measure whether shared attribute D plays similar role

in schema X and Y• Similar to coherency score, except probability inputs to

PMI fn conditioned on presence of D• Two schemas cohere well, clustered together• Used as distance metric to cluster schemas sharing an

attribute with S.• User can choose from fewer outgoing links.

Page 45: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Join Graph Traversal// input : ACSDb A, focal schema F// output : Join Graph (N,L) connecting any two schemas with shared attributes

1: Function ConstructJoinGraph(A, F):2: N = {}3: L = {}//schema S, shared attribute c4: for (S, c) A do∈5: N.add(S) // add node6: end for7: for (S, c) A do∈8: for attr F do∈9: if attr S then∈10: L.add((attr,F, S)) // add link11: end if12: end for13: end for14: return N,L

Page 46: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Experimental Results

Page 47: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Fraction of High Scoring Relevant Tables in Top-k

• Ranking: compared 4 algorithms on a test dataset , two judges• Judges rate (query,relation) pairs from 1-5• 1000 pairs over 30 queries• Queries chosen by hand• Fraction of top-k that are relevant (≥4) shows better

performance at higher grain

k Naïve

Filter Rank Rank-ACSDb

10 0.26 0.35 (35%)

0.43 (65%)

0.47 (81%)

20 0.33 0.47 (42%)

0.56 (70%)

0.59 (79%)

30 0.34 0.59 (74%)

0.66 (94%)

0.68 (100%)

Page 48: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Schema Auto-Completion

Baseball at-bats

File system contentsFile system contents

Baseball at-bats

Page 49: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Rate of attribute recall for 10 expert generated test schemas

• Output schema almost always coherent• Need to get most relevant attributes• 6 humans created schema for each case• Retained attributes ≥ 2 files sys ->address

book

• 3 tries

Incremental improvement

Ambiguous data

Page 50: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Synonym Finding

Fraction of correct synonyms in top-k ranked list from the synonym finder

Judge determines accuracy

Page 51: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Join Neighbor Similarity• Join Graph Traversal

Neighbor Schemas

Dataset generated from a workload of 10 focal schemas

Very few incorrect schema members

Page 52: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Future Scope• Using tuple-keys as an analogue to attribute labels,

create “data-suggest” feature• Creating new data sets by integrating this corpus with

user’s private data• Expanding the WebTables search engine to incorporate

a page quality metric like PageRank• Including non-HTML tables, deep web databases and

HTML Lists

Page 53: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

Conclusion

• First large-scale attempt to extract relational info from corpus of HTML tables

• Created unique ACSDb statistics• Showed utility of ACSDb

Page 54: WebTables: Exploring the Power of Tables on the Web Michael J. Cafarella, University of Washington (presently with University of Michigan) Alon Halevy,

References• V. Hristidis and Y. Papakonstantinou, “Discover: Keyword search in

relational databases”, In VLDB, 2002.• J. Madhavan, A. Y. Halevy, S. Cohen, X. L. Dong, S. R. Jeffery, D. Ko,

and C. Yu, “Structured data meets the web: A few observations”, IEEE Data Eng. Bull., 29(4):19–26, 2006.

• M. Cafarella, J. Madhavan, A. Halevy, ” Web-Scale Extraction of Structured Data”, SIGMOD Record 37(4): 55-61, 2008.

• M. Cafarella, A. Halevy, Z. Wang, E. Wu, and Y. Zhang, “Uncovering the relational web”, Eleventh International Workshop on the Web and Databases (WebDB), June 2008. Vancouver, Canada.

• M. Cafarella, A. Halevy, and J. Madhavan, “Structured Data on the Web”, Communications of the ACM 54(2): 72-79, 2011.