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Discovering user behavioral features to enhance information search on big data

机译:发现用户行为功能,以增强对大数据的信息搜索

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摘要

Due to the emerging Big Data paradigm, driven by the increasing availability of intelligent services easily accessible by a large number of users (e.g., social networks), traditional data management techniques are inadequate in many real-life scenarios. In particular, the availability of huge amounts of data pertaining to user social interactions, user preferences, and opinions calls for advanced analysis strategies to understand potentially interesting social dynamics. Furthermore, heterogeneity and high speed of user-generated data require suitable data storage and management tools to be designed fromscratch. This article presents a framework tailored for analyzing user interactions with intelligent systems while seeking some domain-specific information (e.g., choosing a good restaurant in a visited area). The framework enhances a user's quest for information by exploiting previous knowledge about their social environment, the extent of influence the users are potentially subject to, and the influence they may exert on other users. User influence spread across the network is dynamically computed as well to improve user search strategy by providing specific suggestions, represented as tailored faceted features. Such features are the result of data exchange activity (called data posting) that enriches information sources with additional background information and knowledge derived from experiences and behavioral properties of domain experts and users. The approach is tested in an important application scenario such as tourist recommendation, but it can be profitably exploited in several other contexts, for example, viral marketing and food education.
机译:由于新兴的大数据范例,在易于被大量用户(例如社交网络)访问的智能服务的可用性不断提高的推动下,传统的数据管理技术在许多实际场景中均不足。特别是,与用户社交互动,用户偏好和观点有关的大量数据的可用性要求采用高级分析策略来理解潜在有趣的社交动态。此外,用户生成数据的异构性和高速性要求从头开始设计合适的数据存储和管理工具。本文介绍了一种框架,该框架旨在分析用户与智能系统的交互作用,同时查找一些特定于域的信息(例如,在访问区域中选择一家好的餐馆)。该框架通过利用有关其社交环境的先前知识,用户可能受到的影响程度以及他们可能对其他用户的影响,增强了用户对信息的追求。还可以动态计算分布在网络上的用户影响力,以通过提供特定建议(表示为量身定制的多面功能)来改善用户搜索策略。此类功能是数据交换活动(称为数据发布)的结果,该活动使信息源丰富了其他背景信息和知识,这些背景信息和知识来自领域专家和用户的经验和行为特性。该方法已在重要的应用场景(例如,游客推荐)中进行了测试,但可以在病毒营销和食品教育等其他几种情况下被有利地利用。

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