نتایج جستجو برای: مدلaggregate with outlier

تعداد نتایج: 9193822  

Journal: :IJCCS (Indonesian Journal of Computing and Cybernetics Systems) 2019

2006
HIEU TRUNG HUYNH YONGGWAN WON

— Outlier detection is an important task in many applications; it can lead to the discovery of unexpected, useful or interesting objects in data analysis. Many outlier detection methods are available. However, they are limited by assumptions in distribution or rely on many patterns to detect one outlier. Often, a distribution is not known, or experimental results may not provide enough informat...

2012
A. Mira D. K. Bhattacharyya S. Saharia

The task of outlier detection is to find the small groups of data objects that are exceptional to the inherent behavior of the rest of the data. Detection of such outliers is fundamental to a variety of database and analytic tasks such as fraud detection and customer migration. There are several approaches[10] of outlier detection employed in many study areas amongst which distance based and de...

2016
Baoying Wang Aijuan Dong

Clustering and outlier detection are important data mining areas. Online clustering and outlier detection generally work with continuous data streams generated at a rapid rate and have many practical applications, such as network instruction detection and online fraud detection. This chapter first reviews related background of online clustering and outlier detection. Then, an incremental cluste...

2010
Yan Gao Yiqun Li

In many computer vision applications for recognition or classification, outlier detection plays an important role as it affects the accuracy and reliability of the result. We propose a novel approach for outlier detection using Gaussian process classification. With this approach, the outlier detection can be integrated to the classification process, instead of being treated separately. Experime...

2013
Jamie R. McEwen Jana C. Vamosi Sean M. Rogers

Population differentiation can be driven in large part by natural selection, but selectively neutral evolution can play a prominent role in shaping patters of population divergence. The decomposition of the evolutionary history of populations into the relative effects of natural selection and selectively neutral evolution enables an understanding of the causes of population divergence and adapt...

2017
R. Rohini

Background: Outlier detection is an important factor in data mining since it is used in various real time applications. Outlier is an extreme points that are not related to any of the class. Dealing with dimensions is the great challenge, due to “curse of dimensionality”, for effective outlier detection. In a high dimensional data space, it is difficult to detect most related points and most un...

2017
John M. Felt Ruben Castaneda Jitske Tiemensma Sarah Depaoli

Context: When working with health-related questionnaires, outlier detection is important. However, traditional methods of outlier detection (e.g., boxplots) can miss participants with "atypical" responses to the questions that otherwise have similar total (subscale) scores. In addition to detecting outliers, it can be of clinical importance to determine the reason for the outlier status or "aty...

2011
H. C. M. Bossers J. L. Hurink G. J. M. Smit

In parametric IC testing, outlier detection is applied to filter out potential unreliable devices. Most outlier detection methods are used in an offline setting and hence are not applicable to Final Test, where immediate pass/fail decisions are required. Therefore, we developed a new bivariate online outlier detection method that is applicable to Final Test without making assumptions about a sp...

نمودار تعداد نتایج جستجو در هر سال

با کلیک روی نمودار نتایج را به سال انتشار فیلتر کنید