Privacy is a major good for users of personalized services such as recommender systems. When applied to the field of health informatics, privacy concerns of users may be amplified, but the possible utility of such services is also high. Despite availability of technologies such as k-anonymity, differential privacy, privacy-aware recommendation, and personalized privacy trade-offs, little research has been conducted on the users' willingness to share health data for usage in such systems. In two conjoint-decision studies (sample size n=521), we investigate importance and utility of privacy-preserving techniques related to sharing of personal health data for k-anonymity and differential privacy. Users were asked to pick a preferred sharing scenario depending on the recipient of the data, the benefit of sharing data, the type of data, and the parameterized privacy. Users disagreed with sharing data for commercial purposes regarding mental illnesses and with high de-anonymization risks but showed little concern when data is used for scientific purposes and is related to physical illnesses. Suggestions for health recommender system development are derived from the findings.
翻译:隐私是个人化服务(如建议系统)用户的一项重大好处。当应用到健康信息学领域时,用户的隐私关切可能会扩大,但这类服务的可能用途也很高。尽管存在k-匿名、隐私差异、隐私意识建议和个人化隐私权衡等技术,但对于用户分享健康数据供此类系统使用的意愿的研究很少。在两项共同决策研究(抽样规模为n=521)中,我们调查了与分享个人健康数据有关的隐私保护技术的重要性和效用,这些技术涉及分享k-匿名和差异性隐私。要求用户根据数据接收者、共享数据的好处、数据类型和参数化隐私选择首选的共享情景。用户不同意为商业目的分享有关精神疾病和高度去匿名风险的数据,但在将数据用于科学目的和与身体疾病有关时很少表示关注。健康建议系统开发建议系统的建议来自调查结果。