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PAVAL: A location-aware virtual personal assistant for retrieving geolocated points of interest and location-based services

机译:PAVAL:位置感知的虚拟个人助手,用于检索地理位置的兴趣点和基于位置的服务

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摘要

Today most of the users on the move require contextualized local and georeferenced information. Several solutions aim to meet these trends, thus assisting users and satisfying their needs and preferences, such as virtual assistants and Location-Aware Recommender Systems (LABS), both in commercial and research literature. However, general purpose virtual assistants usually have to manage large domains, dealing with big amounts of data and online resources, losing focus on more specific requirements and local information. On the other hand, traditional recommender systems are based on filtering techniques and contextual knowledge, and they usually do not rely on Natural Language Processing (NLP) features on users' queries, which are useful to understand and contextualize users' necessities on the spot. Therefore, comprehending the actual users' information needs and other key information that can be included in the user query, such as geographical references, is a challenging task which is not yet fully accomplished by current state-of-the-art solutions. In this paper, we propose Paval (Location-Aware Virtual Personal Assistant(2)), a semantic assisting engine for suggesting local points of interest (POIs) and services by analyzing users' natural language queries, in order to estimate the information need and potential geographic references expressed by the users. The system exploits NLP and semantic techniques providing as output recommendations on local geolocated POIs and services which best match the users' requests, retrieved by querying our semantic Km4City Knowledge Base. The proposed system is validated against the most popular virtual assistants, such as Google Assistant, Apple Sid and Microsoft Cortana, focusing the assessment on the request of geolocated POIs and services, showing very promising capabilities in successfully estimating the users' information needs and multiple geographic references.
机译:如今,大多数移动用户需要上下文相关的本地和地理参考信息。几种解决方案旨在满足这些趋势,从而帮助用户并满足他们的需求和偏好,例如商业和研究文献中的虚拟助手和位置感知推荐系统(LABS)。但是,通用虚拟助手通常必须管理大型域,处理大量数据和在线资源,而无法专注于更具体的要求和本地信息。另一方面,传统的推荐系统基于过滤技术和上下文知识,它们通常不依赖用户查询中的自然语言处理(NLP)功能,这对于当场理解和上下文化用户的需求非常有用。因此,理解实际用户的信息需求以及可以包含在用户查询中的其他关键信息(例如地理参考)是一项具有挑战性的任务,当前的最新解决方案尚未完全完成。在本文中,我们提出了Paval(位置感知虚拟个人助理(2)),它是一种语义辅助引擎,用于通过分析用户的自然语言查询来建议本地兴趣点(POI)和服务,以估计信息需求和用户表达的潜在地理参考。该系统利用NLP和语义技术,通过查询我们的语义Km4City知识库检索到的,与本地地理位置POI和服务最匹配的用户提供输出建议。该系统针对最流行的虚拟助手(例如Google Assistant,Apple Sid和Microsoft Cortana)进行了验证,将评估重点放在了地理定位的POI和服务的请求上,显示出在成功评估用户信息需求和多种地理区域方面非常有前途的功能参考。

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