Handling Qualitative Data: A Review
نویسندگان
چکیده
منابع مشابه
Data-driven Quality Improvement: Handling Qualitative Variables
A data-based methodology for improving product quality is proposed. Referred to as Data-Driven Quality Improvement (DDQI), the proposed method can cope with qualitative as well as quantitative variables, determine the operating conditions that can achieve the desired product quality, optimize operating condition under constraints, and also evaluate the validity of the results. The desired yield...
متن کاملA Review of Missing Data Handling Methods
Most of the real world datasets suffer from the problem of missing data. It may lead data mining analysts to end with wrong inferences about data under study. Many researchers are working on this problem to introduce more sophisticated methods. Eventhough many methods are available, analysts are facing difficulty in searching a suitable method due to lack of knowledge about the methods and thei...
متن کاملA novel radial super-efficiency DEA model handling negative data
Super-efficiency model in the presence of negative data is a relatively neglected issue in the DEA field. The existing super-efficiency models have some shortcomings in practice. In this paper, a novel VRS radial super-efficiency DEA model based on Directional Distance Function (DDF) is proposed to provide a complete ranking order of units (including efficient and inefficient ones). The propose...
متن کاملRouting Hole Handling Techniques for Wireless Sensor Networks: A Review
A Wireless Sensor Network consists of several tiny devices which have the capability to sense and compute the environmental phenomenon. These sensor nodes are deployed in remote areas without any physical protections. A Wireless Sensor Network can have various types of anomalies due to some random deployment of nodes, obstruction and physical destructions. These anomalies can diminish the sensi...
متن کاملA Review of Current Software for Handling Missing Data
When we deal with a large data set with missing data, we have to undertake two important tasks. First, it is important to inspect the pattern of missingness. This can provide very practical information. For instance, we may find that most of the missing values concern only one specific variable. If this variable is not central to our analysis problem, we may delete it from our analysis, rather ...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
ژورنال
عنوان ژورنال: The Qualitative Report
سال: 2014
ISSN: 2160-3715,1052-0147
DOI: 10.46743/2160-3715/2010.1347