Explore a literature survey of the most important Extreme Programming (XP) process models. This review covers various approaches, from simulation models and Bayesian networks to Net Present Value (NPV) analysis, used to predict project effort, productivity, and quality.Explore a literature survey of the most important Extreme Programming (XP) process models. This review covers various approaches, from simulation models and Bayesian networks to Net Present Value (NPV) analysis, used to predict project effort, productivity, and quality.

Predicting Software Development with XP: A Look at Existing Models

Abstract and 1. Introduction

  1. Background and 2.1. Related Work

    2.2. The Impact of XP Practices on Software Productivity and Quality

    2.3. Bayesian Network Modelling

  2. Model Design

    3.1. Model Overview

    3.2. Team Velocity Model

    3.3. Defected Story Points Model

  3. Model Validation

    4.1. Experiments Setup

    4.2. Results and Discussion

  4. Conclusions and References

2. BACKGROUND

In the next section, a literature survey of related work will be provided. The survey covers a number of the most important XP process models existing in the literature. Then, the Impact of XP Practices on Software Productivity and Quality is illustrated in the following section. Finally, an overview of the Bayesian Network will be provided in the last section.

2.1. Related Work

Although the widespread usage of XP in both academic and industry, only few attempts for modelling XP exists. In this section, we will provide a survey of the most important XP Process models.

\ In [2], a simulation model was developed to analyse the effects of almost all XP practices on the software development effort. The developed model was applied for a typical XP project and the effects of all the individual practices were calculated. The results showed a reduction in software development cost as increasing the usage levels of all XP practices.

\ In [3], the authors built a software effort prediction model for XP based on Bayesian networks. The proposed model can learn from project data in order to make quantitative effort predictions and risk assessments. The model has been validated by applying to a real industrial project. Collecting data from the early part of the project enabled the model to update its parameters and improve its predictions. The model could successfully achieve extremely accurate predictions about the level of functionality delivered over time.

\ In [4], the authors introduced an XP process model to evaluate the effectiveness of XP key practices (Pair Programming, Test-First Programming), and to investigate how the practices influence the evolution of a certain project. To achieve this, software process simulation has been chosen. A process model has been developed and a simulation executive has been implemented to enable simulation of XP software development activities to simulate how the modeled project entities evolve as a result.

\ Williams and Erdogmus [5] developed a Net Present Value (NPV) model of Pair Programming (PP). The model combines the productivity rates, code production rates, defect insertion rates, and defect removal rates. The authors conclude that PP is a “viable alternative to individual programming.”

\ In [6], the authors model, simulate and analyze the pair programming and pair switching practices. The model explores many variables affecting pair programming efficiency. The results showed that XP efficiency increases with both psychological compatibility and pair adaptation speed between the members of the pair. In addition, the XP process appears to have an advantage over the traditional approach when pair switches are not too frequent.

\

:::info Authors:

(1) Mohamed Abouelelam, Software System Engineering, University of Regina, Regina, Canada;

(2) Luigi Benedicenti, Software System Engineering, University of Regina, Regina, Canada.

:::


:::info This paper is available on arxiv under CC BY-NC-ND 4.0 DEED license.

:::

\

Market Opportunity
Xphere Logo
Xphere Price(XP)
$0.007968
$0.007968$0.007968
-1.99%
USD
Xphere (XP) Live Price Chart
Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact service@support.mexc.com for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.