On the Use of Perceptual Cues & Data Mining for Effective Visualization of Scientific Datasets
نویسنده
چکیده
Scientific datasets are often difficult to analyse or visualize, due to their large size and high dimensionality. We propose a twostep approach to address this problem. We begin by using data mining algorithms to identify areas of interest within the dataset. This allows us to reduce a dataset’s size and dimensionality, and to estimate missing values or correct erroneous entries. We display the results of the data mining step using visualization techniques based on perceptual cues. Our visualization tools are designed to exploit the power of the low-level human visual system. The result is a set of displays that allow users to perform rapid and accurate exploratory data analysis. In order to demonstrate our techniques, we visualized an environmental dataset being used to model salmon growth and migration patterns. Data mining was used to identify significant attributes and to provide accurate estimates of plankton density. We used colour and texture to visualize the significant attributes and estimated plankton densities for each month for the years 1956 to 1964. Experiments run in our laboratory showed that the colours and textures we chose support rapid and accurate element identification, boundary detection, region tracking, and estimation. The result is a visualization tool that allows users to quickly locate specific plankton densities and the boundaries they form. Users can compare plankton densities to other environmental conditions like sea surface temperature and current strength. Finally, users can track changes in any of the dataset’s attributes on a monthly or yearly basis. CR Categories: H.5.2 [Information Interfaces and Presentation]: User Interfaces—ergonomics, screen design, theory and methods; I.3.6 [Computer Graphics]: Methodology and Techniques— ergonomics, interaction techniques; J.2 [Physical Sciences and Engineering]: Earth and Atmospheric Sciences
منابع مشابه
On the Use of Perceptual Cues and Data Mining for Effective Visualization of Scientific Datasets
Scientific datasets are often difficult to analyse or visualize, due to their large size and high dimensionality. We propose a twostep approach to address this problem. We begin by using data mining algorithms to identify areas of interest within the dataset. This allows us to reduce a dataset’s size and dimensionality, and to estimate missing values or correct erroneous entries. We display the...
متن کاملIdentification of the Patient Requirements Using Lean Six Sigma and Data Mining
Lean health care is one of new managing approaches putting the patient at the core of each change. Lean construction is based on visualization for understanding and prioritizing imporvments. By using only visualization techniques, so much important information could be missed. In order to prioritize and select improvements, it’s essential to integrate new analysis tools to achieve a good unders...
متن کاملبررسی رفتار و سازه سبکهای حل مسئله نیروی انسانی دانش گرا
Foundations of creativity and innovation will be strengthened in the higher education sector only when approaches to settling in the issue of manpower are identified and geared toward appropriate behaviors. The present article studies the existing ways to solve the problem using four different approaches (sentimental, emotional, logical, and perceptual)and 32 relevant structures to come up wit...
متن کاملVisualizing Collaborative Time-Varying Scientific Datasets
Our perceptive of the scientific datasets has largely relied on numerical and statistical analysis of data from experimental dimension and computer simulation result [4][14][11][12][13]. In particular, we consider a simulated 3D time-varying model of scientific datasets and examine the temporal correlation among datasets. Our goal is to contrive effective visual representations to assist scient...
متن کاملPerform Three Data Mining Tasks with Crowdsourcing Process
For data mining studies, because of the complexity of doing feature selection process in tasks by hand, we need to send some of labeling to the workers with crowdsourcing activities. The process of outsourcing data mining tasks to users is often handled by software systems without enough knowledge of the age or geography of the users' residence. Uncertainty about the performance of virtual user...
متن کامل