The problem of selecting the most representative tuples from a dataset has led to the development of powerful tools, among which Skyline and Ranking (or Top-k) queries stand out for their ability to support the optimization of multiple criteria in the query process. This paper surveys the remarkable efforts made towards the extension of the aforementioned tools to overcome their limitations, respectively the explosion of the output result and the difficulty of query formulation. Moreover, we explore the application of these state-of-the-art techniques as preference-based query frameworks, proposing a comparison of their query personalization capabilities, the ability to control the output size and their flexibility with respect to the user input preferences.
翻译:从数据集中选择最有代表性的图例的问题导致开发了强有力的工具,其中,Skyline和排名(或Top-k)查询突出显示它们有能力支持在查询过程中优化多种标准,本文回顾了在扩大上述工具以克服其局限性方面所作的显著努力,分别是产出结果的爆炸性和拟订查询的难度。此外,我们探讨这些最先进的技术作为以优惠为基础的查询框架的应用,提议比较其查询的个性化能力、控制产出规模的能力及其在用户输入偏好方面的灵活性。