社交媒体流上的危机和灾难:一种基于本体论的知识获取方法

Q2 Computer Science
S. Narayanasamy, D. Muruganantham, Atilla Elçi
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引用次数: 2

摘要

目的/目的:针对危机和灾害情况的管理,本文重点介绍了社交媒体功能的重要用例,如信息收集和传播、灾害事件识别和监测、协作解决机制和决策过程。随着基于灾难的本体论框架的大量使用,实现了一个强大的消歧系统,进一步增强了用户请求的搜索能力,提供了一个本质上毫不含糊的解决方案。背景:尽管社交媒体信息丰富,但在与危机相关的重大案件中,它给做出决定带来了挑战。为了使整个过程有效并有助于质量决策,有必要对这些信息进行足够清晰的语义处理,可以通过使用语义web技术来补充这些信息。方法论:本文开发了一个基于灾害本体的系统,该系统利用一个框架模型来监控风险和危机相关事件中社交媒体的使用。拟议中的系统监测讨论线程,发现它在推特等社交论坛上扎根后是达到了顶峰还是衰落。社交媒体中的内容可以通过两种典型的方式访问:搜索应用程序接口(API)和流媒体API。这两种API过程可以互换使用。新闻内容可以根据时间、地理区域、关键词出现和可用率进行过滤。在灾害本体的支持下,可以提取领域知识,并与所有可能的概念进行比较。此外,该方法还利用SPARQL对查询进行了消歧处理,得到了精度较高的结果。贡献:该模型通过我们开发的灾害本体中实体与概念的语义映射,提供了与危机相关的时间数据的收集和决策,从而消除了潜在命名实体的歧义。实证检验和分析结果表明,所提出的模型优于其他类似模型。研究结果:这项研究的关键发现在于三个方面:(1)推特流和传统新闻媒体倾向于为特定事件提供几乎相似类型的新闻报道,但主题/类别之间的分布率不同。(2) 关于灾难、危机或任何紧急情况等具体事件,两家新闻媒体之间积累的信息量存在差异,过滤最潜在的信息是一项具有挑战性的任务。(3) 术语的关系映射/共现已经为传统新闻媒体设计好了,但由于推文的简短和稀疏,研究人员仍然面临瓶颈。对从业者的建议:尽管元数据提供了新闻内容的协作细节,并且已被传统地用于信息检索、自然语言处理和模式识别等许多领域,但在数据的语义方面仍然缺乏实现。因此,强烈建议广泛使用本体来构建面向语义的元数据,用于基于概念的建模、信息流搜索和知识交换。对研究人员的建议:对研究人员强烈的建议是,与其严重依赖传统的信息检索(IR)系统,不如更多地关注本体,以提高准确率,从而减少结果集中持续存在的模糊术语。为了利用潜在的信息来推断隐藏的事实,本研究建议对来自不同来源的信息进行聚类,而不是修剪单个新闻来源。建议使用领域本体来分离与其他候选集相比具有模糊性的实体,从而加强结果。对社会的影响:本研究的目的是对现实世界中发生的危机、灾难、紧急情况和基于浩劫的情况进行信息总结。提出了一个系统,该系统提供了对此类事件的总结观点,并通过相互关联来证实新闻。它的主要任务是监督那些从观众的角度来看非常繁荣和重要的活动。未来研究:在未来,应努力帮助总结和可视化模型排名靠前的潜在信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crisis and Disaster Situations on Social Media Streams: An Ontology-Based Knowledge Harvesting Approach
Aim/Purpose: Vis-à-vis management of crisis and disaster situations, this paper focuses on important use cases of social media functions, such as information collection & dissemination, disaster event identification & monitoring, collaborative problem-solving mechanism, and decision-making process. With the prolific utilization of disaster-based ontological framework, a strong disambiguation system is realized, which further enhances the searching capabilities of the user request and provides a solution of unambiguous in nature. Background: Even though social media is information-rich, it has created a challenge for deriving a decision in critical crisis-related cases. In order to make the whole process effective and avail quality decision making, sufficiently clear semantics of such information is necessary, which can be supplemented through employing semantic web technologies. Methodology: This paper evolves a disaster ontology-based system availing a framework model for monitoring uses of social media during risk and crisis-related events. The proposed system monitors a discussion thread discovering whether it has reached its peak or decline after its root in the social forum like Twitter. The content in social media can be accessed through two typical ways: Search Application Program Interfaces (APIs) and Streaming APIs. These two kinds of API processes can be used interchangeably. News content may be filtered by time, geographical region, keyword occurrence and availability ratio. With the support of disaster ontology, domain knowledge extraction and comparison against all possible concepts are availed. Besides, the proposed method makes use of SPARQL to disambiguate the query and yield the results which produce high precision. Contribution: The model provides for the collection of crisis-related temporal data and decision making through semantic mapping of entities over concepts in a disaster ontology we developed, thereby disambiguating potential named entities. Results of empirical testing and analysis indicate that the proposed model outperforms similar other models. Findings: Crucial findings of this research lie in three aspects: (1) Twitter streams and conventional news media tend to offer almost similar types of news coverage for a specified event, but the rate of distribution among topics/categories differs. (2) On specific events such as disaster, crisis or any emergency situations, the volume of information that has been accumulated between the two news media stands divergent and filtering the most potential information poses a challenging task. (3) Relational mapping/co-occurrence of terms has been well designed for conventional news media, but due to shortness and sparseness of tweets, there remains a bottleneck for researchers. Recommendations for Practitioners: Though metadata avails collaborative details of news content and it has been conventionally used in many areas like information retrieval, natural language processing, and pattern recognition, there is still a lack of fulfillment in semantic aspects of data. Hence, the pervasive use of ontology is highly suggested that build semantic-oriented metadata for concept-based modeling, information flow searching and knowledge exchange. Recommendation for Researchers: The strong recommendation for researchers is that instead of heavily relying on conventional Information Retrieval (IR) systems, one can focus more on ontology for improving the accuracy rate and thereby reducing ambiguous terms persisting in the result sets. In order to harness the potential information to derive the hidden facts, this research recommends clustering the information from diverse sources rather than pruning a single news source. It is advisable to use a domain ontology to segregate the entities which pose ambiguity over other candidate sets thus strengthening the outcome. Impact on Society: The objective of this research is to provide informative summarization of happenings such as crisis, disaster, emergency and havoc-based situations in the real world. A system is proposed which provides the summarized views of such happenings and corroborates the news by interrelating with one another. Its major task is to monitor the events which are very booming and deemed important from a crowd’s perspective. Future Research: In the future, one shall strive to help to summarize and to visualize the potential information which is ranked high by the model.
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CiteScore
2.30
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