Abstract

With the ever-increasing amount of data, the world has stepped into the era of “Big Data”. Presently, the analysis of massive and complex data and the extraction of relevant information, have been become essential tasks in many fields of studies, such as health, biology, chemistry, social science, astronomy, and physics. However, compared with the development of data storage and management technologies, our ability to gain useful information from the collected data does not match our ability to collect the data. This gap has led to a surge of research activity in the field of visual analytics. Visual analytics employs interactive visualization to integrate human judgment into algorithmic data-analysis processes. In this paper, the aim is to draw a complete picture of visual analytics to direct future research by examining the related research in various application domains. As such, a novel categorization of visual-analytics applications from a technical perspective is proposed, which is based on the dimensionality of visualization and the type of interaction. Based on this categorization, a comprehensive survey of visual analytics is performed, which examines its evolution from visualization and algorithmic data analysis, and investigates how it is applied in various application domains. In addition, based on the observations and findings gained in this survey, the trends, major challenges, and future directions of visual analytics are discussed.

Highlights

  • We are living in the age of data and advanced analytics

  • 4) EVALUATION As cognition, perception and analytical reasoning are significant factors in the visual-analytics process, human information discourse constitutes a challenge for evaluating the utility, effectiveness, and trustworthiness of visual-analytics applications

  • For visual-analytics applications in different problem domains, such as biology, medical, astrophysics, and geography, three methods that adapted from the field of information visualization are used, including case studies, user studies based on controlled experiments, and expert reviews

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Summary

Introduction

We are living in the age of data and advanced analytics. With recent advances in computing resources and data management technologies, our ability to generate, collect and store a wide variety of large and complex data sets continues to grow. According to the International Data Corporation’s (IDC’s) Digital Universe forecasts, the overall created and copied data volume worldwide will rise to approximately 40 zettabytes (ZB, 44 trillion GB) by 2020 [1]. This rapidly increasing amount of data has triggered an information revolution and enormous challenges that in turn will bring incredible scientific and industrial opportunities. Our ability to collect and store massive amounts of data far outstrips our ability to analyze the collected data [3], [4].

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