Success and failure of a complex software project are strongly associated with the accurate estimation of development effort. There are numerous estimation models developed but the most widely used among those is Analogy- Based Estimation (ABE). ABE model follows human nature as it estimates the future project's effort by making analogies with the past project's data. Since ABE relies on the historical datasets, the quality of the datasets affects the accuracy of estimation. Most of the software engineering datasets have missing values. The researchers either delete the projects containing missing values or avoid treating the missing values which reduce the ABE performance. In this study, Numeric Cleansing (NC), K-Nearest Neighbor Imputatio...
The performance of all technologies is highly depended on the quality of the data. For example, Neur...
The evolution of big data analytics through machine learning and artificial intelligence techniq...
Many existing, industrial, and research data sets contain missing values (MVs). There are various re...
Success and failure of a complex software project are strongly associated with the accurate estimati...
The accurate of software development effort prediction plays an important role to estimate how much ...
Effort prediction is a very important issue for software project management. Historical project data...
The accurate of software development effort prediction plays an important role to estimate how much ...
Missing data is a widespread problem that can affect the ability to use data to construct effective ...
Software effort estimation is one the critical aspects of software engineering. It revolves around p...
Statistical analysis is greatly hindered with missing information. It represents a loss of key data,...
In this paper a systematic review is conducted to investigate the structure, components, techniques,...
A missing value is a common problem of most data processing in scientific research, which results in...
Promise '11 : the 7th International Conference on Predictive Models in Software Engineering, Septemb...
Since software development environments, methods and tools are changing rapidly, the importance of a...
Background: There are too many design options for software effort estimators. How can we best explor...
The performance of all technologies is highly depended on the quality of the data. For example, Neur...
The evolution of big data analytics through machine learning and artificial intelligence techniq...
Many existing, industrial, and research data sets contain missing values (MVs). There are various re...
Success and failure of a complex software project are strongly associated with the accurate estimati...
The accurate of software development effort prediction plays an important role to estimate how much ...
Effort prediction is a very important issue for software project management. Historical project data...
The accurate of software development effort prediction plays an important role to estimate how much ...
Missing data is a widespread problem that can affect the ability to use data to construct effective ...
Software effort estimation is one the critical aspects of software engineering. It revolves around p...
Statistical analysis is greatly hindered with missing information. It represents a loss of key data,...
In this paper a systematic review is conducted to investigate the structure, components, techniques,...
A missing value is a common problem of most data processing in scientific research, which results in...
Promise '11 : the 7th International Conference on Predictive Models in Software Engineering, Septemb...
Since software development environments, methods and tools are changing rapidly, the importance of a...
Background: There are too many design options for software effort estimators. How can we best explor...
The performance of all technologies is highly depended on the quality of the data. For example, Neur...
The evolution of big data analytics through machine learning and artificial intelligence techniq...
Many existing, industrial, and research data sets contain missing values (MVs). There are various re...