衡量元搜索引擎获取信息的性能:基于精确度指标的探索性研究

IF 1.8 Q2 INFORMATION SCIENCE & LIBRARY SCIENCE Performance Measurement and Metrics Pub Date : 2024-03-18 DOI:10.1108/pmm-09-2023-0028
Raj Kumar Bhardwaj, Ritesh Kumar, Mohammad Nazim
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引用次数: 0

摘要

目的 本文评估了 DuckDuckGo、Dogpile、Metacrawler 和 Startpage 四个元搜索引擎(MSE)的精确度,以确定哪个元搜索引擎的精确度最高,并找出最有可能返回最相关搜索结果的元搜索引擎。这些查询的复杂程度各不相同,分为简单、短语和复杂三种类型。研究结果该研究清楚地表明,Startpage 返回的结果最相关,在四个 MSE 中精确度最高(0.98)。相反,DuckDuckGo 在研究的两个阶段都表现出了一致的性能。研究局限性/意义本研究只评估了四个元搜索引擎,可能无法代表所有可用的元搜索引擎。此外,使用的查询次数有限,可能不足以将研究结果推广到所有类型的查询。实际意义本研究的结果对于评审机构管理重复数据、提高搜索能力以及获得更相关、更精确的结果很有价值。这些发现还可以帮助用户根据精确度而不是界面来选择最佳的元搜索引擎。原创性/价值这项研究是首次对四个元搜索引擎进行评估。过去从未进行过类似的研究来衡量元搜索引擎的性能。
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Measuring performance of metasearch engines to access information: an exploratory study based on precision metrics

Purpose

This paper evaluates the precision of four metasearch engines (MSEs) – DuckDuckGo, Dogpile, Metacrawler and Startpage, to determine which metasearch engine exhibits the highest level of precision and to identify the metasearch engine that is most likely to return the most relevant search results.

Design/methodology/approach

The research is divided into two parts: the first phase involves four queries categorized into two segments (4-Q-2-S), while the second phase includes six queries divided into three segments (6-Q-3-S). These queries vary in complexity, falling into three types: simple, phrase and complex. The precision, average precision and the presence of duplicates across all the evaluated metasearch engines are determined.

Findings

The study clearly demonstrated that Startpage returned the most relevant results and achieved the highest precision (0.98) among the four MSEs. Conversely, DuckDuckGo exhibited consistent performance across both phases of the study.

Research limitations/implications

The study only evaluated four metasearch engines, which may not be representative of all available metasearch engines. Additionally, a limited number of queries were used, which may not be sufficient to generalize the findings to all types of queries.

Practical implications

The findings of this study can be valuable for accreditation agencies in managing duplicates, improving their search capabilities and obtaining more relevant and precise results. These findings can also assist users in selecting the best metasearch engine based on precision rather than interface.

Originality/value

The study is the first of its kind which evaluates the four metasearch engines. No similar study has been conducted in the past to measure the performance of metasearch engines.

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来源期刊
Performance Measurement and Metrics
Performance Measurement and Metrics INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
2.20
自引率
0.00%
发文量
1
期刊介绍: ■Quantitative and qualitative analysis ■Benchmarking ■The measurement and role of information in enhancing organizational effectiveness ■Quality techniques and quality improvement ■Training and education ■Methods for performance measurement and metrics ■Standard assessment tools ■Using emerging technologies ■Setting standards or service quality
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