基于随机模型的用户信号信息检索

Maria Maistro
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引用次数: 0

摘要

为了解决信息检索(IR)适应不断变化的用户任务和需求的挑战,并使其适应用户交互和偏好,我们开发了一种基于马尔可夫链的用户行为新模型。我们的目标是将提出的模型整合到IR的几个方面,即评估措施,系统和收集。首先,我们研究了红外光谱评价指标,并提出了描述其性质的理论框架。然后,我们提出了一种新的评估指标,称为马尔可夫精度(MP),基于所提出的模型,能够明确地将实验室风格和在线评估指标联系起来。未来的工作将包括将所提出的模型纳入学习排序(LtR)算法,并将定义一个用于评估和比较个性化信息检索(PIR)系统的集合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adapting Information Retrieval to User Signals via Stochastic Models
To address the challenge of adapting Information Retrieval (IR) to the constantly evolving user tasks and needs and to adjust it to user interactions and preferences we develop a new model of user behavior based on Markov chains. We aim at integrating the proposed model into several aspects of IR, i.e. evaluation measures, systems and collections. Firstly, we studied IR evaluation measures and we propose a theoretical framework to describe their properties. Then, we presented a new family of evaluation measures, called Markov Precision (MP), based on the proposed model and able to explicitly link lab-style and on-line evaluation metrics. Future work will include the presented model into Learning to Rank (LtR) algorithms and will define a collection for evaluation and comparison of Personalized Information Retrieval (PIR) systems.
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