预测学生项目团队中的个人表现

M. Hale, N. Jorgenson, R. Gamble
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引用次数: 11

摘要

由于沟通在项目团队中的关键作用,随着软件开发过程变得越来越异步,捕获和分析开发人员设计笔记和对话以用作性能预测变得越来越重要。当前的预测方法需要人类主题专家(SME)费力地检查用户内容,并根据不同的类别(如参与度和所表达的信息)对用户内容进行排序。SEREBRO是一个集成的课件工具,它自动捕获社会和开发工件,并以徽章和头衔的形式提供实时奖励,使用各种自动评估措施指示用户朝着预定义目标的进展。该工具允许教师对正在进行的项目进行可视化、参与和反馈,并为教师提供了基于过去或当前个人绩效水平来适应或调整项目范围或个人角色分配的途径。本文评估并比较了两种自动化SEREBRO测量方法与SME基于内容的分析和工作产品等级作为个人绩效预测因子的使用。数据收集自使用SEREBRO的本科软件工程团队,其内容和贡献表现的自动测量以及中小企业评级和等级,可以实时预测个人表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting individual performance in student project teams
Due to the critical role of communication in project teams, capturing and analyzing developer design notes and conversations for use as performance predictors is becoming increasing important as software development processes become more asynchronous. Current prediction methods require human Subject Matter Experts (SME) to laboriously examine and rank user content along various categories such as participation and the information they express. SEREBRO is an integrated courseware tool that captures social and development artifacts automatically and provides real time rewards, in the form of badges and titles, indicating a user's progress towards predefined goals using a variety of automated assessment measures. The tool allows for instructor visualization, involvement, and feedback in the ongoing projects and provides avenues for the instructor to adapt or adjust project scope or individual role assignments based on past or current individual performance levels. This paper evaluates and compares the use of two automated SEREBRO measures with SME content-based analysis and work product grades as predictors of individual performance. Data is collected from undergraduate software engineering teams using SEREBRO, whose automated measures of content and contribution perform as well as SME ratings and grades to suggest individual performance can be predicted in real-time.
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