萨里消防部门的招聘计划优化

IF 1.4 Q2 SOCIAL SCIENCES, INTERDISCIPLINARY
Bolong He, Snezana Mitrovic-Minic, L. Garis, Pierre Robinson, Tamon Stephen
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引用次数: 0

摘要

目的萨里(加拿大不列颠哥伦比亚省)消防局每年都会雇佣全职消防员。本文优化了年度招聘期的时间安排。一个关键问题是处理工作场所缺勤,这可以由加班费或全职员工支付。设计/方法/方法根据消防员的季节和年龄组分析短期和长期缺勤模式。然后在解释和时间序列模型中使用这些来预测未来的缺席。招聘时间表是根据这些预测和额外的限制条件进行优化的。目前的做法在分析中效果良好。在研究的时间段内,提前招聘似乎是有益的。这种分析对于各种假设都是稳健的。独创性/价值这是一个案例研究,将分析技术和机器学习应用于不常见的组织实践。在这种情况下,以前的方法并不比优化的解决方案差多少。所使用的技术非常通用,可以应用于各种组织决策问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hiring schedule optimization at the Surrey fire department
PurposeThe Surrey (British Columbia, Canada) fire department has an annual cycle for hiring full-time firefighters. This paper optimizes the timing of the annual hiring period. A key issue is handling workplace absences, which can be covered by overtime cost or full-time hires.Design/methodology/approachShort-term and long-term absences patterns are analyzed according to season and age cohorts of the firefighters. These are then used in both an explanatory and time series model to predict future absences. The hiring schedule is optimized based on these predictions and additional constraints.FindingsThe current practice fares well in the analysis. For the time period studied, moving to earlier hiring dates appears beneficial. This analysis is robust with respect to various assumptions.Originality/valueThis is a case study where analytic techniques and machine learning are applied to an organizational practice that is not commonly analyzed. In this case, the previous method was not much worse than the optimized solution. The techniques used are quite general and can be applied to various organizational decision problems.
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来源期刊
International Journal of Emergency Services
International Journal of Emergency Services SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
2.00
自引率
11.10%
发文量
29
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