论文标题
从社交媒体中提取大规模时空描述
Extracting Large Scale Spatio-Temporal Descriptions from Social Media
论文作者
论文摘要
跟踪大规模事件发生的能力对于理解它们并以适当和及时的方式进行反应至关重要。例如,在紧急管理和决策支持中,这是事实,在这种支持中,对提取信息的质量和延迟的约束都可能很严格。在某些情况下,可以提供实时和大规模传感器数据和预测。我们正在探索以下假设:这种数据可以通过摄入半结构化数据源(如社交媒体)来增强。社交媒体可以散布有价值的知识,例如直接见证或专家意见,而它们的嘈杂性使他们并不容易管理。这些知识可用于补充和确认事件的其他时空描述,突出以前看不见或被低估的方面。目前,正在研究此研究的关键方面,例如事件感应,多语言,视觉证据和地理位置,作为多模式描述的统一时空表示的基础。本文介绍了迄今为止在这一研究方面所做的工作,还介绍了与所面临的挑战有关的案例研究,重点是自然灾害引起的紧急情况。
The ability to track large-scale events as they happen is essential for understanding them and coordinating reactions in an appropriate and timely manner. This is true, for example, in emergency management and decision-making support, where the constraints on both quality and latency of the extracted information can be stringent. In some contexts, real-time and large-scale sensor data and forecasts may be available. We are exploring the hypothesis that this kind of data can be augmented with the ingestion of semi-structured data sources, like social media. Social media can diffuse valuable knowledge, such as direct witness or expert opinions, while their noisy nature makes them not trivial to manage. This knowledge can be used to complement and confirm other spatio-temporal descriptions of events, highlighting previously unseen or undervalued aspects. The critical aspects of this investigation, such as event sensing, multilingualism, selection of visual evidence, and geolocation, are currently being studied as a foundation for a unified spatio-temporal representation of multi-modal descriptions. The paper presents, together with an introduction on the topics, the work done so far on this line of research, also presenting case studies relevant to the posed challenges, focusing on emergencies caused by natural disasters.