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Journal ArticleDOI

ScatterBlogs2: Real-Time Monitoring of Microblog Messages through User-Guided Filtering

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TLDR
ScatterBlogs2 is suggested, a new approach to let analysts build task-tailored message filters in an interactive and visual manner based on recorded messages of well-understood previous events that can be orchestrated and adapted afterwards for interactive, visual real-time monitoring and analysis of microblog feeds.
Abstract
The number of microblog posts published daily has reached a level that hampers the effective retrieval of relevant messages, and the amount of information conveyed through services such as Twitter is still increasing. Analysts require new methods for monitoring their topic of interest, dealing with the data volume and its dynamic nature. It is of particular importance to provide situational awareness for decision making in time-critical tasks. Current tools for monitoring microblogs typically filter messages based on user-defined keyword queries and metadata restrictions. Used on their own, such methods can have drawbacks with respect to filter accuracy and adaptability to changes in trends and topic structure. We suggest ScatterBlogs2, a new approach to let analysts build task-tailored message filters in an interactive and visual manner based on recorded messages of well-understood previous events. These message filters include supervised classification and query creation backed by the statistical distribution of terms and their co-occurrences. The created filter methods can be orchestrated and adapted afterwards for interactive, visual real-time monitoring and analysis of microblog feeds. We demonstrate the feasibility of our approach for analyzing the Twitter stream in emergency management scenarios.

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Citations
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Journal ArticleDOI

A review of volunteered geographic information quality assessment methods

TL;DR: Data mining is introduced as an additional approach for quality handling in VGI by reviewing various quality measures and indicators for selected types of VGI and existing quality assessment methods.
Book

Big Crisis Data: Social Media in Disasters and Time-Critical Situations

TL;DR: This book brings together computational methods from many disciplines: natural language processing, semantic technologies, data mining, machine learning, network analysis, human-computer interaction, and information visualization, focusing on methods that are commonly used for processing social media messages under time-critical constraints.
Journal ArticleDOI

A survey of visual analytics techniques for machine learning

TL;DR: A taxonomy of visual analytics techniques is built, which includes three first-level categories: techniques before model building, techniques during modeling building, and techniques after model building.
Journal ArticleDOI

Emergency information diffusion on online social media during storm Cindy in U.S.

TL;DR: Certain types of Twitter users (news and weather agencies) were dominant as information sources and information diffusers (the public and organizations) however, the information flow in the network was controlled by numerous types of users including news, agency, weather agencies and the public.
Journal ArticleDOI

Visual Analytics in Urban Computing: An Overview

TL;DR: This survey first summarizes frequently used data types in urban visual analytics, and then elaborate on existing visualization techniques for time, locations and other properties of urban data, and discusses how visualization can be combined with automated analytical approaches.
References
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