• 可解释性
    【HR术语】什么是预测性人力资源分析?(What is predictive HR analytics?) 什么是预测性人力资源分析? 预测性人力资源分析是人力资源部门用来分析过去和现在的数据以预测未来结果的一种技术工具。预测性人力资源分析以数字化方式挖掘数据,提取、剖析和归类信息,然后识别模式、不规则性和相关性。通过统计分析和预测建模,分析可实现有关人力资源职能的数据驱动决策。 预测性人力资源分析系统让人想起蚯蚓。蚯蚓吸收天然废料和残渣,排出营养丰富的肥沃土壤。预测性分析也是如此,它吸收未使用的原始数据,并将其转化为适用的信息,为更明智的业务决策提供支持。 人力资源预测分析实例 以下是当今组织如何应用人力资本预测分析的一些示例: 招聘。预测分析可帮助人力资源专业人员确定最有效的顶尖人才来源。通过分析成功招聘的历史数据,企业可以将招聘工作重点放在能产生最佳效果的平台和渠道上。 留住员工。预测模型可以分析员工数据,如绩效考核、缺勤率和任期,以识别有离职风险的员工。这样,人力资源部门就可以采取积极措施,如提供职业发展机会或解决工作场所的问题,留住有价值的人才。 劳动力规划。预测分析可以通过考虑退休率、人员流动和新兴行业趋势等因素,预测公司未来的技能缺口。然后,人力资源部门可以制定培训和发展计划,弥补这些差距,确保员工队伍保持竞争力。 员工绩效管理。预测性人力资源分析可根据历史绩效数据预测团队成员的未来绩效。这有助于人力资源团队识别可能成为关键职位潜在接班人的高绩效人员,并帮助他们发现其他人可能落后的原因。 员工参与和福利。预测分析能够发现影响员工敬业度的问题。人力资源专业人员可以通过监控工作量和工作时间等因素,识别可能面临职业倦怠或其他心理健康问题风险的人员。然后,人力资源部门可以为有需要的人提供有针对性的支持和资源。 预测性分析如何帮助人力资源部门? 预测性人力资源分析可以帮助组织预测挑战,从而可以: 避免风险 减少人为错误 预测将在组织中茁壮成长的典型员工情况 加强招聘实践 鼓励实现最佳工作绩效 最终,预测性人力资源分析可帮助人力资源领导者做出清晰明确的决策,从而增加整体利润,提高员工的积极性、忠诚度、参与度和工作效率。 预测性和描述性人力资源分析有何不同? 描述性人力资源分析包括检查历史人力资源数据,以全面了解组织内发生了什么及其原因。 而预测性人力资源分析则不局限于此,而是通过分析历史数据和过去的趋势来预测未来会发生什么,从而使组织有机会采取预防措施或抓住出现的机遇。同时使用预测性和描述性两种人员分析形式的组织,都能为自己带来最大的影响。 如何成功实施预测性人力资源分析系统? 人力资源领导者可以利用以下技巧率先实施有效的预测性人力资源分析: 确定业务目标。人力资源领导者可以与团队合作,确定公司的长期目标,团队成员也可以帮助确定支持实现这些目标的相关指标。 确保透彻理解。预测性人力资源分析是一个复杂的领域,不熟悉数据科学的人力资源专业人员可能会对此感到畏惧。然而,为整个人力资源团队提供一致且多样化的学习选择,可以减轻他们对这一主题的不适感,加深理解,并鼓励员工持续发展。方法之一是鼓励人力资源团队熟悉每种分析算法的基本推理。人力资源部门还可以让数据科学家或人力资源数据分析师参与进来,以确保预测分析流程的最佳运作。 解决道德问题。为了避免对员工的不公平歧视待遇,预测分析团队可以预先防范可能出现的道德问题。公司可能会有意或无意地虐待员工中的特定人群,或者由于不正当的数据驱动推理而偏袒某些团队成员。因此,透明地遵守公司的行为准则和人力资源道德准则至关重要。员工需要知道他们的雇主是公平对待他们的,这样他们才会有参与感,才会有茁壮成长的动力。 利用预测分析的力量。人力资源领导者可以通过将预测分析应用于特定目标,最大限度地发挥其作用。例如,人力资源领导者可以结合预测分析来设计有效的职业发展计划,以解决能力差距和未来的能力需求问题,从而按照员工所希望的学习轨迹对其进行培训。 预测性人力资源分析如何改善企业文化? 预测性人力资源分析提供了一种方法,可帮助领导者做出明智的决策,从而培养一支充满热情和高绩效的员工队伍。有效、合乎道德地使用人力资源分析,可以使公司有能力识别、雇佣、吸引和留住符合公司文化并乐于为公司发展做出贡献的高素质专业人才。 为企业选择合适的预测性人力资源分析工具 选择合适的人员分析软件是人力资源专业人士和企业必须迈出的关键一步,这样他们才能收获人力资源预测分析的所有回报。 工具的选择应符合具体的业务需求、资源和目标。要做出明智的决定,有几个关键点需要牢记: 集成。工具能否与现有人力资源系统无缝集成?兼容性和数据传输的便捷性对于准确的预测建模至关重要。 可扩展性。合适的工具能够随着企业的扩张而扩展人力资源预测分析工作。 用户友好界面。寻找能够提供直观的仪表盘、可视化和报告功能的工具,使人力资源专业人员能够轻松访问和解释洞察力。 可解释性。确保工具对其预测做出解释。这样,您的人力资源团队就能理解为什么会做出某些预测,并采取适当的行动。 数据安全性和合规性。人力资源数据通常包括敏感和机密信息。确保工具遵守数据隐私法规,并有保护数据的安全措施。 支持和培训。考虑工具供应商提供的支持和培训水平。充分的培训和持续的支持对人力资源团队有效使用工具并最大限度地发挥其优势至关重要。 成本和投资回报率。评估总体拥有成本,包括许可费用、实施成本和持续维护费用。通过估算工具的洞察力如何对人力资源成果和组织绩效产生积极影响,计算潜在的投资回报。 用户反馈和评论。向使用过该工具的人力资源专业人士征求反馈意见,并阅读行业内其他组织的评论。他们的经验可以为了解工具的优缺点提供宝贵的见解。 通过仔细考虑这些因素,您可以为您的人力资源团队提供一个预测性劳动力分析工具,从而增强决策能力,推动人力资源战略,促进整体业务成功。 以下为文章原文: What is predictive HR analytics? Predictive HR analytics is a tech tool that HR uses to analyze past and present data to forecast future outcomes. Predictive HR analytics digitally digs through data to extract, dissect, and categorize information and then identify patterns, irregularities, and correlations. Through statistical analysis and predictive modeling, analytics enables data-driven decisions regarding HR functions. Predictive HR analytics systems are reminiscent of the earthworm. The worm ingests natural waste material and residue and excretes nutrient-rich, fertile soil. Predictive analytics, too, intakes unused, raw data and transforms it into applicable information that supports wiser business decisions. Predictive HR analytics examples Here are some examples of how organizations today apply human capital predictive analytics: Recruitment. Predictive analytics helps HR professionals identify the most effective sources of top talent. By analyzing historical data on successful hires, organizations can focus their recruitment efforts on the platforms and channels that yield the best results. Employee retention. Predictive models can analyze employee data, such as performance reviews, absenteeism, and tenure, to identify people at risk of leaving the company. This allows HR to take proactive measures, such as offering career development opportunities or addressing workplace concerns, to retain valuable talent. Workforce planning. Predictive analytics can forecast future skill gaps within a company by considering factors like retirement rates, turnover, and emerging industry trends. HR can then develop training and development programs to fill these gaps and ensure the workforce remains competitive. Employee performance management. Predictive HR analytics can forecast a team member’s future performance based on historical performance data. This helps the HR team identify high-performing people who could be potential successors for critical roles, and can help them discover why others may be lagging behind. Employee engagement and wellbeing. Predictive analytics has the ability to uncover issues that affect employee engagement. HR professionals can identify people who may be at risk of burnout or other mental health issues by monitoring factors like workload and working hours. HR can then provide targeted support and resources to those in need. How does predictive analytics help human resources? Predictive HR analytics assists organizations in anticipating challenges so they can: Avoid risk Reduce human error Forecast the typical employee profile that’ll thrive in the organization Enhance recruitment practices Encourage optimal work performance Ultimately, predictive HR analytics helps HR leaders make crystal-clear decisions that can increase overall profit and nurture employee motivation, retention, engagement, and productivity. What is the difference between predictive and descriptive HR analytics? Descriptive HR analytics involves examining historical HR data to get a thorough understanding of what has happened within an organization and why. Predictive HR analytics, on the other hand, goes beyond this and analyzes historical data and past trends to predict what will happen in the future—giving an organization the chance to take preventive measures or to seize opportunities as they arise. Organizations that use both predictive and descriptive forms of people analytics set themselves up to achieve the greatest impact. How do you implement a successful predictive HR analytics system? HR leaders can spearhead effective predictive HR analytics using the following tips: Define business objectives. HR leaders can collaborate with their teams to identify long-term company goals, with team members also helping determine the relevant metrics that support the achievement of these objectives. Ensure a thorough understanding. Predictive HR analytics is a complex field, and HR professionals unfamiliar with data science can feel intimidated by it. However, providing consistent and diverse learning options for your entire HR team can mitigate their discomfort with the subject, elevate understanding, and encourage continual employee development. One way to do this is to encourage your HR team to familiarize themselves with the fundamental reasoning driving each analytics algorithm. HR can also involve a data scientist or bring an HR data analyst on board to ensure optimal functioning of the predictive analytics process. Address ethical considerations. To avoid unfair discriminatory treatment of employees, predictive analytics teams can pre-empt possible ethical issues that may arise. Companies could intentionally or unintentionally mistreat specific demographics within the workforce or perhaps show favoritism to certain team members due to illegitimate data-driven reasoning. Thus, transparently adhering to the company’s code of conduct and the HR code of ethics is paramount. People need to know that their employers are treating them fairly to feel engaged and motivated to thrive. Harness the power of predictive analytics. HR leaders can maximize predictive analytics by applying it to specific objectives. For example, HR leaders can incorporate predictive analytics to design an effective career development program that addresses competency gaps and future competency needs, allowing them to train people in their desired learning trajectory. How can predictive HR analytics improve company culture? Predictive HR analytics offers a way to help leaders make informed decisions that nurture an enthusiastic and high-performing workforce. Effective and ethical use of HR analytics can empower companies to identify, hire, engage, and retain quality professionals who align with the company culture and are excited to contribute to its growth. Choosing the right predictive HR analytics tool for your business Selecting the right people analytics software is a crucial step for HR professionals and organizations to take, so that they’re able to reap all the rewards of HR predictive analytics. The choice of tool should align with specific business needs, resources, and objectives. There are a few key things to keep in mind to be able to make an informed decision: Integration. Can the tool seamlessly integrate with your existing HR systems? Compatibility and ease of data transfer are essential for accurate predictive modeling. Scalability. The right tool will be able to expand your predictive HR analytics efforts as your organization expands. User-friendly interface. Look for tools that offer intuitive dashboards, visualizations, and reporting features, making it easy for HR professionals to access and interpret insights. Explainability. Ensure that the tool provides explanations for its predictions. That way, your HR team can understand why certain predictions are made and take appropriate actions. Data security and compliance. HR data often includes sensitive and confidential information. Make sure the tool adheres to data privacy regulations and has security measures to protect your data. Support and training. Consider the level of support and training provided by the tool’s vendor. Adequate training and ongoing support are essential for HR teams to effectively use the tool and maximize its benefits. Cost and ROI. Evaluate the total cost of ownership, including licensing fees, implementation costs, and ongoing maintenance expenses. Calculate the potential return on investment by estimating how the tool’s insights can positively impact HR outcomes and organizational performance. User feedback and reviews. Seek feedback from HR professionals who have used the tool and read reviews from other organizations in your industry. Their experiences can provide valuable insights into the tool’s strengths and weaknesses. By carefully considering these factors, you can empower your HR team with a predictive workforce analytics tool that enhances decision-making, drives HR strategies, and contributes to overall business success.
    可解释性
    2024年03月05日
  • 可解释性
    2024年人力资源和招聘系统的十大重要趋势 在充满活力的人才与人员成功技术领域,2023 年已被证明是在经济逆风中仍能保持韧性和增长的一年。Fosway Group 的 " 9-Grid for Talent & People Success "揭示了 10 大市场趋势,揭示了该行业的发展轨迹、挑战和新兴机遇。 1. 技能智能正在崛起 随着领先雇主寻求更加以人为本、包容、公平、智能和灵活的方法,传统的人才管理实践正在停滞不前。根据 Fosway 的最新报告,技能智能和人才市场因其提供透明度和灵活性、增强组织内个人能力的能力而受到越来越多的关注。 2. 个性化的关键作用 个性化是将人才管理转变为人才与人才成功的核心支柱。人工智能通过自然语言处理分析情感,将人才体验的创新提升到了一个新的水平。这种创新加速了团队、个人和领导之间的大规模对话,强调了进一步个性化以解决战略性人力资源问题和个人/团队层面支持的必要性。 3. 人工智能是一场变革 尽管人工智能被炒得沸沸扬扬,但事实证明,人工智能对于关键的人员体验,包括技能、参与、职业、学习和内部流动性,都具有变革性。人工智能能够推断技能、将人们与导师联系起来、将个人与项目或工作联系起来,并对职业抱负做出回应,这正在改变员工体验和人力资源生产力的游戏规则。 4. 将人才流程嵌入工作场所工具 人们期望人力资源解决方案能将人才流程嵌入日常工具和工作空间(如 Microsoft Teams 和 Slack),这已成为标准配置。这种 "无头 "集成已成为买家的基本要求,可增强绩效支持、人才流动、技能发展和员工参与度。 5. Copilot 的出现 随着微软为Microsoft Office 365推出Copilot,在日常软件中引入协同驾驶功能有望推动对协同驾驶人力资源功能的需求。员工如何应对工作应用程序中的嵌入式人工智能支持将可能成为一个决定性的时刻,特别是对于员工体验中的接触点而言。 6. 劳动力战略决策是关键要素 虽然人才与人员成功解决方案的重点往往是员工能力的提升,但人才与人员成功、劳动力智能和组织战略决策之间的关系至关重要。全面的劳动力智能是人力资源部门在行政领导层中获得一席之地的关键所在,有助于制定业务战略并调整劳动力的能力以支持业务战略。 7. 数据连接的挑战 尽管同类最佳解决方案在分析方面取得了进步,但人力资源孤岛之间缺乏数据连接仍然是一个重大挑战。在问题得到解决之前,全面数据洞察力的全部价值可能无法实现,从而给组织带来风险。 8. 可解释的人工智能日益重要 随着人工智能相关法规的成熟,透明度和可解释性变得至关重要。人工智能和嵌入式智能的发展需要无偏见和透明的运营证明,尤其是英国、欧洲和美国政府对监管的态度越来越积极主动。 9. 激发参与(和奖励) 在大流行病以及向混合和远程工作转变之后,企业正在重新思考员工的参与和绩效问题。人才解决方案在实现持续绩效、优化团队内部关系和参与度方面发挥着至关重要的作用。不断变化的人口结构和新一代员工的期望进一步强调了对创新解决方案的需求。 10. 证明人力资源的增值作用 整合整个人才和人力资源生态系统的数据和工作流程仍具有挑战性,而将商业智能与人员智能相结合则是缺失的一环。随着经济形势的恶化,人力资源的投资和战略也备受关注。展示对底线的实际业务影响是一项重大挑战,而将人员智能和劳动力智能与业务成果联系起来,则成为人力资源部门在高管会议上获得一席之地的关键。
    可解释性
    2023年12月22日