Machine Learning permeates many industries, which brings new source of benefits for companies. However within the life insurance industry, Machine Learning is not widely used in practice as over the past years statistical models have shown their efficiency for risk assessment. Thus insurers may face difficulties to assess the value of the artificial intelligence. Focusing on the modification of the life insurance industry over time highlights the stake of using Machine Learning for insurers and benefits that it can bring by unleashing data value. This paper reviews traditional actuarial methodologies for survival modeling and extends them with Machine Learning techniques. It points out differences with regular machine learning models and emphasizes importance of specific implementations to face censored data with machine learning models family.In complement to this article, a Python library has been developed. Different open-source Machine Learning algorithms have been adjusted to adapt the specificities of life insurance data, namely censoring and truncation. Such models can be easily applied from this SCOR library to accurately model life insurance risks.
翻译:机器学习为公司带来了新的利益来源,但是,在人寿保险行业中,机器学习并未被广泛用于实践,因为过去几年的统计模型表明,机器学习具有风险评估的效率,因此保险人可能难以评估人工智能的价值,因此,保险人可能会在评估人工智能的价值方面遇到困难。侧重于修改人寿保险行业,随着时间的推移,强调保险人使用机器学习的利害关系,以及它通过释放数据价值可以带来的利益。本文审查了生存模型的传统精算方法,并用机器学习技术将其推广。该文件指出了与定期机器学习模型的不同之处,并强调了与机器学习模型大家庭一起应对受审查数据的具体实施的重要性。除了这一文章之外,还开发了一个Python图书馆。已经调整了不同的开放源机器学习算法,以适应人寿保险数据的具体特性,即审查和检索。这些模型很容易从SCOR图书馆中应用,以准确模拟人寿保险风险。