Inverted index
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In information technology, an inverted index (also referred to as postings file or inverted file) is an index data structure storing a mapping from content, such as words or numbers, to its locations in a database file, or in a document or a set of documents, in this case allowing full text search. The inverted file may be the database file itself, rather than its index. It is the most popular data structure used in document retrieval systems.[1] Several significant general-purpose mainframe-based database management systems have used inverted list architectures, including ADABAS, DATACOM/DB, and Model 204.
There are two main variants of inverted indexes: A record level inverted index (or inverted file index or just inverted file) contains a list of references to documents for each word. A word level inverted index (or full inverted index or inverted list) additionally contains the positions of each word within a document.[2] The latter form offers more functionality (like phrase searches), but needs more time and space to be created.
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[edit] Example
Given the texts T0 = "it is what it is"
, T1 = "what is it"
and T2 = "it is a banana"
, we have the following inverted file index (where the integers in the set notation brackets refer to the subscripts of the text symbols, T0, T1 etc.):
"a": {2} "banana": {2} "is": {0, 1, 2} "it": {0, 1, 2} "what": {0, 1}
A term search for the terms "what"
, "is"
and "it"
would give the set .
With the same texts, we get the following full inverted index, where the pairs are document numbers and local word numbers. Like the document numbers, local word numbers also begin with zero. So, "banana": {(2, 3)}
means the word "banana" is in the third document (T2), and it is the fourth word in that document (position 3).
"a": {(2, 2)} "banana": {(2, 3)} "is": {(0, 1), (0, 4), (1, 1), (2, 1)} "it": {(0, 0), (0, 3), (1, 2), (2, 0)} "what": {(0, 2), (1, 0)}
If we run a phrase search for "what is it"
we get hits for all the words in both document 0 and 1. But the terms occur consecutively only in document 1.
[edit] Applications
The inverted index data structure is a central component of a typical search engine indexing algorithm. A goal of a search engine implementation is to optimize the speed of the query: find the documents where word X occurs. Once a forward index is developed, which stores lists of words per document, it is next inverted to develop an inverted index. Querying the forward index would require sequential iteration through each document and to each word to verify a matching document. The time, memory, and processing resources to perform such a query are not always technically realistic. Instead of listing the words per document in the forward index, the inverted index data structure is developed which lists the documents per word.
With the inverted index created, the query can now be resolved by jumping to the word id (via random access) in the inverted index. Random access is generally regarded as being faster than sequential access.
In pre-computer times, concordances to important books were manually assembled. These were effectively inverted indexes with a small amount of accompanying commentary, that required a tremendous amount of effort to produce.
[edit] See also
[edit] Bibliography
- Knuth, D. E. (1997) [1973]. The Art of Computer Programming (Third ed.). Reading, Massachusetts: Addison-Wesley. ISBN 0-201-89685-0.
- Zobel, Justin; Moffat, Alistair; Ramamohanarao, Kotagiri (December 1998). "Inverted files versus signature files for text indexing". ACM Transactions on Database Systems (New York: Association for Computing Machinery) 23 (4): pp. 453–490. doi: .
- Zobel, Justin RMIT University, Australia; Moffat, Alistair The University of Melbourne, Australia (July 2006). "Inverted Files for Text Search Engines". ACM Computing Surveys (New York: Association for Computing Machinery) 38 (2): 6. doi: .
- Baeza-Yates, Ricardo; Ribeiro-Neto, Berthier (1999). Modern information retrieval. Reading, Massachusetts: Addison-Wesley Longman. p. 192. ISBN 0-201-39829-X.
[edit] References
- Knuth 1997, pp. 560–563 of section 6.5: Retrieval on Secondary Keys
- ^ Zobel, Moffat & Ramamohanarao 1998
- ^ Baeza-Yates & Ribeiro-Neto 1999, p. 192
[edit] External links
- NIST's Dictionary of Algorithms and Data Structures: inverted index
- Managing Gigabytes for Java a free full-text search engine for large document collections written in Java.
- [1] Lucene - Apache Lucene is a high-performance, full-featured text search engine library written entirely in Java. It is a technology suitable for nearly any application that requires full-text search, especially cross-platform.