Discussing the model's accuracy, provide all collected data for future research, and outline plans for further experiments to better understand the effects of pair programming.Discussing the model's accuracy, provide all collected data for future research, and outline plans for further experiments to better understand the effects of pair programming.

The Final Verdict: Is Pair Programming Worth the Effort?

2025/08/27 23:45
3분 읽기
이 콘텐츠에 대한 의견이나 우려 사항이 있으시면 crypto.news@mexc.com으로 연락주시기 바랍니다

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

4.2. Results and Discussion

Table 5 shows a comparison between the Estimated and the Real values for the two projects. Regarding the number of days, the estimated number is so close to the Real project. This indicates the acceptable accuracy of the proposed Team Velocity Model. On the other hand, the Defected Story Points model was not that accurate. For Abrahamsson Case Study, the estimated number of defected story points was close to the actual one, while for the Repo Margining System, the accuracy of the prediction system was not that good. The inaccuracy also appears in estimated the produced number of Line of codes for Abrahamsson Case Study.

\ The imprecision in some of the results, especially in the Defected Story Points model, is due to fixing some variables that should not be fixed. For example, the Defect Injection Ratio was fixed for the two projects to follow the normal distribution with mean 20 defects per KLOC. This value differs from project to another and should not be fixed. The same for Developer Productivity random variable that set to follow the normal distribution with mean 40 lines/day. This also depends on the nature of the project and should vary from project to another.

\ Table 5 Comparison between the Experiment Results and Real Project

\ One solution of such imprecision is to adopt the model for self-learning, by which the model can learn from the first iterations and adjust different parameters and variables. This increases the confidence of the prediction and can correct the model’s prior assumptions. This learning capability is a good extension for the proposed model.

\ Figures 6 and 7 show the estimated project status as time passes. Those curves gave accurate estimated values for the project finish time. Those curves can be obtained in the project planning phase before starting the actual development using very simple input data. Using such curves, the success or the failure of the project can be detected in early stage.

\ Figure 6 Repo Margining System project status curve

\ Figure 7 Abrahamsson Case Study project status curve

\

:::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.

:::

\

면책 조항: 본 사이트에 재게시된 글들은 공개 플랫폼에서 가져온 것으로 정보 제공 목적으로만 제공됩니다. 이는 반드시 MEXC의 견해를 반영하는 것은 아닙니다. 모든 권리는 원저자에게 있습니다. 제3자의 권리를 침해하는 콘텐츠가 있다고 판단될 경우, crypto.news@mexc.com으로 연락하여 삭제 요청을 해주시기 바랍니다. MEXC는 콘텐츠의 정확성, 완전성 또는 시의적절성에 대해 어떠한 보증도 하지 않으며, 제공된 정보에 기반하여 취해진 어떠한 조치에 대해서도 책임을 지지 않습니다. 본 콘텐츠는 금융, 법률 또는 기타 전문적인 조언을 구성하지 않으며, MEXC의 추천이나 보증으로 간주되어서는 안 됩니다.

$30,000 in PRL + 15,000 USDT

$30,000 in PRL + 15,000 USDT$30,000 in PRL + 15,000 USDT

Deposit & trade PRL to boost your rewards!