About: Adversarial information retrieval   Sponge Permalink

An Entity of Type : owl:Thing, within Data Space : 134.155.108.49:8890 associated with source dataset(s)

Adversarial information retrieval (adversarial IR) is a topic in information retrieval that addresses tasks such as gathering, indexing, filtering, retrieving and ranking information from collections wherein a subset has been manipulated maliciously. Adversarial IR includes the study of methods to detect, isolate, and defeat such manipulation.

AttributesValues
rdfs:label
  • Adversarial information retrieval
rdfs:comment
  • Adversarial information retrieval (adversarial IR) is a topic in information retrieval that addresses tasks such as gathering, indexing, filtering, retrieving and ranking information from collections wherein a subset has been manipulated maliciously. Adversarial IR includes the study of methods to detect, isolate, and defeat such manipulation.
sameAs
dcterms:subject
dbkwik:freespeech/...iPageUsesTemplate
abstract
  • Adversarial information retrieval (adversarial IR) is a topic in information retrieval that addresses tasks such as gathering, indexing, filtering, retrieving and ranking information from collections wherein a subset has been manipulated maliciously. Adversarial IR includes the study of methods to detect, isolate, and defeat such manipulation. On the Web, the predominant form of such manipulation is search engine spamming (also known as spamdexing), including techniques that are employed to disrupt the activity of web search engines, usually for financial gain. Examples of spamdexing are link-bombing, comment or referrer spam, spam blogs (splogs), malicious tagging, reverse engineering of ranking algorithms, advertisement blocking, and web content filtering . The name stems from the fact that there are two sides with opposing goals. For instance, the relationship between the owner of a Web site trying to rank high on a search engine and the search engine administrator is an adversarial relationship in a zero-sum game. Every undeserved gain in ranking by the web site is a loss of precision for the search engine.
Alternative Linked Data Views: ODE     Raw Data in: CXML | CSV | RDF ( N-Triples N3/Turtle JSON XML ) | OData ( Atom JSON ) | Microdata ( JSON HTML) | JSON-LD    About   
This material is Open Knowledge   W3C Semantic Web Technology [RDF Data] Valid XHTML + RDFa
OpenLink Virtuoso version 07.20.3217, on Linux (x86_64-pc-linux-gnu), Standard Edition
Data on this page belongs to its respective rights holders.
Virtuoso Faceted Browser Copyright © 2009-2012 OpenLink Software