Change Management through Information Visualization Techniques and Applications: Enhancing Decision-Making in Complex Data Environments
Keywords:
Information visualization, data visualizationAbstract
Information visualization plays a crucial role in transforming complex data into comprehensible visual representations, significantly aiding change management efforts by supporting sensemaking and informed decision-making processes. This paper explores various techniques and applications of information visualization, focusing on its significance in the context of predictive change management in information systems projects. We discuss the evolution of visualization techniques, ranging from basic charts and graphs to advanced interactive visualizations, emphasizing their utility in tracking changes and facilitating stakeholder engagement. Furthermore, we examine the diverse applications of information visualization across domains such as business analytics, scientific research, and healthcare, highlighting its role in enhancing data comprehension and fostering strategic decision-making in the face of evolving project requirements.
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