MWAND: A New Early Termination Algorithm for Fast and Efficient Query Evaluation

Nowadays, current information systems are so large and maintain huge amount of data. At every time, they process millions of documents and millions of queries. In order to choose the most important responses from this amount of data, it is well to apply what is so called early termination algorithms...

Full description

Bibliographic Details
Main Authors: Zemani Imene Mansouria, Zekri Lougmiri, Senouci Mohamed
Format: Article
Language:English
Published: Universidad Internacional de La Rioja (UNIR) 2019-12-01
Series:International Journal of Interactive Multimedia and Artificial Intelligence
Subjects:
Online Access:http://www.ijimai.org/journal/node/3034
id doaj-eef3bd376f2b44b18fdaca826595cd84
record_format Article
spelling doaj-eef3bd376f2b44b18fdaca826595cd842020-11-25T02:43:14ZengUniversidad Internacional de La Rioja (UNIR)International Journal of Interactive Multimedia and Artificial Intelligence1989-16601989-16602019-12-0157576910.9781/ijimai.2019.04.002ijimai.2019.04.002MWAND: A New Early Termination Algorithm for Fast and Efficient Query EvaluationZemani Imene MansouriaZekri LougmiriSenouci MohamedNowadays, current information systems are so large and maintain huge amount of data. At every time, they process millions of documents and millions of queries. In order to choose the most important responses from this amount of data, it is well to apply what is so called early termination algorithms. These ones attempt to extract the Top-K documents according to a specified increasing monotone function. The principal idea behind is to reach and score the most significant less number of documents. So, they avoid fully processing the whole documents. WAND algorithm is at the state of the art in this area. Despite it is efficient, it is missing effectiveness and precision. In this paper, we propose two contributions, the principal proposal is a new early termination algorithm based on WAND approach, we call it MWAND (Modified WAND). This one is faster and more precise than the first. It has the ability to avoid unnecessary WAND steps. In this work, we integrate a tree structure as an index into WAND and we add new levels in query processing. In the second contribution, we define new fine metrics to ameliorate the evaluation of the retrieved information. The experimental results on real datasets show that MWAND is more efficient than the WAND approach.http://www.ijimai.org/journal/node/3034evaluationinformation retrievalinverted listquery processingtop-kwand
collection DOAJ
language English
format Article
sources DOAJ
author Zemani Imene Mansouria
Zekri Lougmiri
Senouci Mohamed
spellingShingle Zemani Imene Mansouria
Zekri Lougmiri
Senouci Mohamed
MWAND: A New Early Termination Algorithm for Fast and Efficient Query Evaluation
International Journal of Interactive Multimedia and Artificial Intelligence
evaluation
information retrieval
inverted list
query processing
top-k
wand
author_facet Zemani Imene Mansouria
Zekri Lougmiri
Senouci Mohamed
author_sort Zemani Imene Mansouria
title MWAND: A New Early Termination Algorithm for Fast and Efficient Query Evaluation
title_short MWAND: A New Early Termination Algorithm for Fast and Efficient Query Evaluation
title_full MWAND: A New Early Termination Algorithm for Fast and Efficient Query Evaluation
title_fullStr MWAND: A New Early Termination Algorithm for Fast and Efficient Query Evaluation
title_full_unstemmed MWAND: A New Early Termination Algorithm for Fast and Efficient Query Evaluation
title_sort mwand: a new early termination algorithm for fast and efficient query evaluation
publisher Universidad Internacional de La Rioja (UNIR)
series International Journal of Interactive Multimedia and Artificial Intelligence
issn 1989-1660
1989-1660
publishDate 2019-12-01
description Nowadays, current information systems are so large and maintain huge amount of data. At every time, they process millions of documents and millions of queries. In order to choose the most important responses from this amount of data, it is well to apply what is so called early termination algorithms. These ones attempt to extract the Top-K documents according to a specified increasing monotone function. The principal idea behind is to reach and score the most significant less number of documents. So, they avoid fully processing the whole documents. WAND algorithm is at the state of the art in this area. Despite it is efficient, it is missing effectiveness and precision. In this paper, we propose two contributions, the principal proposal is a new early termination algorithm based on WAND approach, we call it MWAND (Modified WAND). This one is faster and more precise than the first. It has the ability to avoid unnecessary WAND steps. In this work, we integrate a tree structure as an index into WAND and we add new levels in query processing. In the second contribution, we define new fine metrics to ameliorate the evaluation of the retrieved information. The experimental results on real datasets show that MWAND is more efficient than the WAND approach.
topic evaluation
information retrieval
inverted list
query processing
top-k
wand
url http://www.ijimai.org/journal/node/3034
work_keys_str_mv AT zemaniimenemansouria mwandanewearlyterminationalgorithmforfastandefficientqueryevaluation
AT zekrilougmiri mwandanewearlyterminationalgorithmforfastandefficientqueryevaluation
AT senoucimohamed mwandanewearlyterminationalgorithmforfastandefficientqueryevaluation
_version_ 1724770683086438400