Intelligent Information Retrieval (and Web Search)

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Intelligent Information Retrieval (and Web Search). Professor Celso A A Kaestner, PhD. Brazil. Site: www.dainf.ct.utfpr.edu.br/~kaestner/Konstanz/iir.htm. Introduction. Introduction: Information Retrieval. IR: representation, storage, organization of, and access to information items; - PowerPoint PPT Presentation

Transcript of Intelligent Information Retrieval (and Web Search)

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Intelligent Information Retrieval(and Web Search)

Professor Celso A A Kaestner, PhD.

Brazil

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Site:www.dainf.ct.utfpr.edu.br/~kaestner/Konstanz/iir.htm

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Introduction

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Introduction: Information Retrieval

• IR: representation, storage, organization of, and access to information items;

• Focus is on the user information need;• User information need:

– Find all docs containing information on college football teams which: (1) are maintained by an university and (2) participate in the national tournament.

• Emphasis is on the retrieval of information (not data).

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Data retrieval x Information retrieval

• Data Retrieval:– which docs. contain a set of keywords?– well defined semantics;– a single erroneous object implies failure!

• Information Retrieval (IR):– information about a subject or topic;– semantics is frequently loose;– small errors are tolerated.

• IR system:– interpret contents of information items;– generate a ranking which reflects relevance;– notion of relevance is most important.

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Information Retrieval (IR)

• The indexing and retrieval of textual documents.

• Searching for pages on the World Wide Web is the most recent “killer app.”

• Concerned firstly with retrieving relevant documents to a query.

• Concerned secondly with retrieving from large sets of documents efficiently.

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Typical IR Task

• Given:– A corpus of textual natural-language

documents.– A user query in the form of a textual

string.

• Find:– A ranked set of documents that are

relevant to the query.

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IR System

IRSystem

Query String

Documentcorpus

RankedDocuments

1. Doc12. Doc23. Doc3 . .

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Relevance

• Relevance is a subjective judgment and may include:– Being on the proper subject.– Being timely (recent information).– Being authoritative (from a trusted

source).– Satisfying the goals of the user and

his/her intended use of the information (information need).

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Keyword Search

• Simplest notion of relevance is that the query string appears verbatim in the document.

• Slightly less strict notion is that the words in the query appear frequently in the document, in any order (bag of words).

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Problems with Keywords

• May not retrieve relevant documents that include synonymous terms.– “restaurant” vs. “café”– “PRC” vs. “China”

• May retrieve irrelevant documents that include ambiguous terms.– “bat” (baseball vs. mammal)– “Apple” (company vs. fruit)– “bit” (unit of data vs. act of eating)

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Beyond Keywords

• We will cover the basics of keyword-based IR, but…

• We will focus on extensions and recent developments that go beyond keywords.

• We will cover the basics of building an efficient IR system, but…

• We will focus on basic capabilities and algorithms rather than system’s issues that allow scaling to industrial size databases.

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Intelligent IR

• Taking into account the meaning of the words used.

• Taking into account the order of words in the query.

• Adapting to the user based on direct or indirect feedback.

• Taking into account the authority of the source.

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IR System Architecture

TextDatabase

DatabaseManager

Indexing

Index

QueryOperations

Searching

RankingRanked

Docs

UserFeedback

Text Operations

User Interface

RetrievedDocs

UserNeed

Text

Query

Logical View

Inverted file

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IR System Components

• Text Operations forms index words (tokens).– Standardization (caps …)– Stopword removal– Stemming

• Indexing constructs an inverted index of word to document pointers.

• Searching retrieves documents that contain a given query token from the inverted index.

• Ranking scores all retrieved documents according to a relevance metric.

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IR System Components (continued)

• User Interface manages interaction with the user:– Query input and document output.– Relevance feedback.– Visualization of results.

• Query Operations transform the query to improve retrieval:– Query expansion using a thesaurus.

– Query transformation using relevance feedback.

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• IR at the center of the stage:– Advent of the Web changed this

perception once and for all:• universal repository of knowledge; • free (low cost) universal access;• no central editorial board;• many problems though: IR seen as key to

finding the solutions!

IR and the Web

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IR and the Web

• And more: • Most of the human task employ the

treatment of information in textual and/ or graphic form (Lyman, 2003);

• How Much Information project (Berkeley):

www.sims.berkeley.edu/how-much-info-2003.

• Each person generates 800 Mbytes / year.

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In 2002: 5 Exabytes of new information;• Magnetic media (HD’s): 92%; • Films: 7%;• Print material: 0,01%;• Optical media: 0,002%.

5 Exabytes = 5 million Terabytes = 5.000.000.000.000.000.000 bytes;

2 times the amount of 1999, given an increasing rate of 30% / year.

IR and the Web

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Information flow - radio, TV, Internet:• 18 Exabytes of new information in 2002;• 3,5 times of the amount stored;• Telephone lines (and cell phones): 98%;• 320 million hours of radio and TV

transmissions, with 70 million new hours, with 81 Gigabytes of texts.

IR and the Web

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Email:• 31 billion of e-mails / year = 400.000 Tbytes

of new information;

The Internet (Web):• 170 Tbytes of information = 17 times the

printed content of the US Library of Congress.

IR and the Web

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Search sites:• “Yahoo”, “Google”, etc. = the 1st option of

access for the users;• A typical Internet user: 11 h 20 m / month;• Access to the desired information = 1 / 3 of

the period;• The user is obliged to verify if the received

information is the desired one, and several times is impossible to recover the information needed.

IR and the Web

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• Information Glut or Information Overload: is the main challenge to be surpassed by automatic text treatment systems.

IR and the Web

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Web Search

• Application of IR to HTML documents on the World Wide Web.

• Differences:– Must assemble document corpus by

spidering the web.– Can exploit the structural layout

information in HTML (XML).– Documents change uncontrollably.– Can exploit the link structure of the web.

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Web Search System

Query String

IRSystem

RankedDocuments

1. Page12. Page23. Page3 . .

Documentcorpus

Web Spider

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Other IR-Related Tasks

• Automated document categorization• Information filtering (spam filtering)• Information routing• Automated document clustering• Recommending information or products• Information extraction• Information integration• Question answering

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History of IR

• 1960-70’s:– Initial exploration of text retrieval systems

for “small” corpora of scientific abstracts, and law and business documents.

– Development of the basic Boolean and vector-space models of retrieval.

– Prof. Salton and his students at Cornell University are the leading researchers in the area.

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IR History Continued

• 1980’s:– Large document database systems, many

run by companies:• Lexis-Nexis• Dialog• MEDLINE

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IR History Continued

• 1990’s:– Searching FTPable documents on the

Internet• Archie• WAIS

– Searching the World Wide Web• Lycos• Yahoo• Altavista

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IR History Continued

• 1990’s continued:– Organized Competitions

• NIST TREC

– Recommender Systems• Ringo• Amazon• NetPerceptions

– Automated Text Categorization & Clustering

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Recent IR History

• 2000’s– Link analysis for Web Search

• Google

– Automated Information Extraction• Whizbang• Fetch• Burning Glass

– Question Answering• TREC Q/A track

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Recent IR History

• 2000’s continued:– Multimedia IR

• Image• Video• Audio and music

– Cross-Language IR• DARPA Tides

– Document Summarization

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Related Areas

• Database Management

• Library and Information Science

• Artificial Intelligence

• Natural Language Processing

• Machine Learning

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Database Management

• Focused on structured data stored in relational tables rather than free-form text.

• Focused on efficient processing of well-defined queries in a formal language (SQL).

• Clearer semantics for both data and queries.• Recent move towards semi-structured data

(XML) brings it closer to IR.

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Library and Information Science

• Focused on the human user aspects of information retrieval (human-computer interaction, user interface, visualization).

• Concerned with effective categorization of human knowledge.

• Concerned with citation analysis and bibliometrics (structure of information).

• Recent work on digital libraries brings it closer to CS & IR.

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Artificial Intelligence

• Focused on the representation of knowledge, reasoning, and intelligent action.

• Formalisms for representing knowledge and queries:– First-order Predicate Logic– Bayesian Networks– Others …

• Recent work on web ontologies and intelligent information agents brings it closer to IR.

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Natural Language Processing

• Focused on the syntactic, semantic, and pragmatic analysis of natural language text and discourse.

• Ability to analyze syntax (phrase structure) and semantics could allow retrieval based on meaning rather than keywords.

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Natural Language Processing:IR Directions

• Methods for determining the sense of an ambiguous word based on context (word sense disambiguation).

• Methods for identifying specific pieces of information in a document (information extraction).

• Methods for answering specific NL questions from document corpora.

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Machine Learning

• Focused on the development of computational systems that improve their performance with experience.

• Automated classification of examples based on learning concepts from labeled training examples (supervised learning).

• Automated methods for clustering unlabeled examples into meaningful groups (unsupervised learning).

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Machine Learning:IR Directions

• Text Categorization– Automatic hierarchical classification (Yahoo).– Adaptive filtering/routing/recommending.– Automated spam filtering.

• Text Clustering– Clustering of IR query results.– Automatic formation of hierarchies (Yahoo).

• Learning for Information Extraction• Text Mining• Text Summarization