基于代理的联邦学习对象搜索服务

Carla Fillmann Barcelos, J. Gluz, R. Vicari
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引用次数: 26

摘要

巴西教育部通过虚拟互动教育网络计划(RIVED, 2009)提供免费的数字教学内容,并通过国际教育对象库基地(BIOE, 2010)分发这些对象。这些计划的主要目标是通过使用学习对象(LO)作为出版和传播这些材料的最重要技术来帮助开发和分发电子教育材料。材料是由教育活动形成的,其中可能包含多媒体资源、动画和模拟。在存储库中定位特定对象是一个困难的问题,这取决于其材料的正确索引和编目。这个过程对应于用正确的信息实现LO元数据。元数据是描述某些文档、材料或LO特征的信息。元数据的主要目的仍然是被人或软件代理在编目、搜索和类似任务中理解和使用(Taylor, 2003)。编目和索引过程是定位教育内容(如学习对象)的最大问题之一,因为正是通过这个过程,才能通过搜索引擎找到这些对象。错误的LO编目或索引会导致搜索过程无效。当LO分布在几个不同的存储库中并进行维护时,这种情况会更加严重。几个不同的机构在巴西(和世界各地)增加了LO产量,这表明了这样一种风险,即一般社区仍未使用这些材料,或者至少使用非常有限,仅限机构成员使用,以防存在能够在机构中大多数人的存储库中找到LO的统一搜索机制。目前还没有标准的基础设施支持统一搜索和检索教育资源,如LO (CORDRA Management Group, 2009)。为了帮助解决这种情况,目前的工作建议创建一个基于代理的学习对象联邦目录(AgCAT)。该系统的总体目标是提供联邦LO目录的基础设施,能够帮助搜索和检索这些教育资源。该系统将大量利用分布式人工智能(DAI)和多智能体系统(MAS)研究领域的技术(Weiss, 1999;Wooldridge, 2002),寻求优化LO搜索过程。该系统将使用多种协议和技术从LO存储库和数字图书馆中获取元数据。几个AgCAT系统也可以联合起来,形成LO目录的联合。在联邦中搜索LO对其用户是透明的。在任何联邦AgCAT系统中进行的查询都透明地传播到联邦中的所有其他AgCAT系统。因此,除了通信延迟之外,任何AgCAT系统中的查询与任何其他联邦系统中的相同查询是等价的。每个联邦AgCAT系统必须只支持搜索传播协议。每个联邦AgCAT系统的管理和管理完全独立于其他联邦系统,从而允许在联邦中轻松包含不同的机构。本文介绍了AgCAT系统的功能结构和组织,展示了系统的体系结构、原型的各个方面以及迄今为止取得的主要成果。接下来的两部分介绍了与当前工作相关的主要主题的文献综述,重点关注AgCAT支持的元数据标准和支持该系统的多代理技术。下面的部分描述了系统的多代理体系结构、代理的组织、关于目录联合形成的具体细节,以及元数据收集过程。…
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Agent-based Federated Learning Object Search Service
Introduction The Brazilian Ministry of Education provides free digital pedagogical content by means of the Virtual and Interactive Net for Education program (RIVED, 2009), distributing these objects through the International Base of Educational Objects repository (BIOE, 2010). The main goal of these programs is to aid in the development and distribution of electronic educational material by using Learning Objects (LO) as the foremost technology to publish and disseminate such material. The material is formed by educational activities, which may contain multimedia resources, animations, and simulations. To locate a particular object in a repository is a difficult problem depending on the rightful indexation and cataloging of its material. This process corresponds to the fulfilling of the LO metadata with correct information. Metadata is information that describes the characteristics of certain documents, material, or LO. The main purpose of metadata is still to be understood and used by people or software agents in cataloging, searching, and similar tasks (Taylor, 2003). The cataloging and indexation process represents one of the greatest issues to locating educational contents, such as learning objects, because it is through this process that these objects can be found through search engines. Incorrect LO cataloging or indexation causes inefficacy in search processes. This situation is aggravated when LO are distributed and maintained in several distinct repositories. The increase of LO production in Brazil (and around the world) by several different institutions has shown the risk that the material remains unused by the general community, or at least with very restricted use, limited only to the members of the institution in case a unified search mechanism exists capable of finding LO in repositories of most anyone in the institution. Currently there is no standard infrastructure that gives support to a unified search and retrieval of educational resources such as LO (CORDRA Management Group, 2009). To assist in this situation, the present work proposes the creation of an agent-based federated catalog of learning objects (AgCAT). The general objective of this system is to provide an infrastructure of federated LO catalogs that are able to help in the search and retrieval of these educational resources. The system will make intensive use of technologies from Distributed Artificial Intelligence (DAI) and Multi-Agent Systems (MAS) research fields (Weiss, 1999; Wooldridge, 2002), seeking to optimize the LO search process. The system will use several protocols and technologies to harvest metadata from LO repositories and digital libraries. Several AgCAT systems can also be federated, forming a federation of LO catalogs. The search for LO in the federation is transparent for its users. A query made in any federated AgCAT system is transparently propagated to all other AgCAT systems in the federation. Therefore, apart from communication delay, a query in any AgCAT system is equivalent to the same query in any other federated system. Only the search propagation protocol must be supported by each federated AgCAT system. The administration and management of each federated AgCAT system is completely independent from the other federated systems, allowing for different institutions to be included easily in the federation. This work presents the functional structure and organization of the AgCAT system, showing the system's architecture, aspects of its prototype, and main results obtained until now. The next two sections present a literature review concerning the main topics related in the present work focusing on the metadata standards supported by AgCAT and the multi-agent technology that supports the system. The following section describes the multi-agent architecture of the system, the organization of its agents, particular details about the formation of the directory federation, and the metadata harvesting process. …
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