In order to improve the quality of the software development process, we need to be able to build empirical multivariate models based on data collectable early in the software process. These models need to be both useful for prediction and easy to interpret, so that remedial actions may be taken in order to control and optimize the development process. We present an automated modeling technique which can be used as an alternative to regression techniques. We show how it can be used to facilitate the identification and aid the interpretation of the significant trends which characterize 'high risk' components in several Ada systems. Finally, we evaluate the effectiveness of our technique based on a comparison with logistic regression based mod...
Regardless how much effort we put for the success of software project, many software projects have v...
The significance of software is growing everyday as it becomes a major part of enterprise business. ...
This paper describes an empirical comparison of several modeling techniques for predicting the qual...
In order to improve the quality of the software development process, we need to be able to build emp...
Applying equal testing and verification effort to all parts of a software system is not very efficie...
Risk is not always avoidable, but it is controllable. The aim of this paper is to present new techni...
Introduction Software complexity metrics are often used as indirect metrics of reliability since th...
Early experiences building a software quality prediction model are discussed. The overall research o...
Regardless how much effort we put for the success of software projects, many software projects have ...
Identifying risks relevant to a software project and planning measures to deal with them are critica...
Currently, there are different approaches to managing risks in a project, most are composed of four ...
In recent time considerable efforts have been made to improve the quality of software development p...
Abstract. During software development, projects often experience risky situations. If projects fail ...
Quantitative process management (QPM) and causal analysis and resolution (CAR) are requirements of c...
The demand for global software development is growing. The nonavailability of software experts at on...
Regardless how much effort we put for the success of software project, many software projects have v...
The significance of software is growing everyday as it becomes a major part of enterprise business. ...
This paper describes an empirical comparison of several modeling techniques for predicting the qual...
In order to improve the quality of the software development process, we need to be able to build emp...
Applying equal testing and verification effort to all parts of a software system is not very efficie...
Risk is not always avoidable, but it is controllable. The aim of this paper is to present new techni...
Introduction Software complexity metrics are often used as indirect metrics of reliability since th...
Early experiences building a software quality prediction model are discussed. The overall research o...
Regardless how much effort we put for the success of software projects, many software projects have ...
Identifying risks relevant to a software project and planning measures to deal with them are critica...
Currently, there are different approaches to managing risks in a project, most are composed of four ...
In recent time considerable efforts have been made to improve the quality of software development p...
Abstract. During software development, projects often experience risky situations. If projects fail ...
Quantitative process management (QPM) and causal analysis and resolution (CAR) are requirements of c...
The demand for global software development is growing. The nonavailability of software experts at on...
Regardless how much effort we put for the success of software project, many software projects have v...
The significance of software is growing everyday as it becomes a major part of enterprise business. ...
This paper describes an empirical comparison of several modeling techniques for predicting the qual...