The Implementation of Recommender Systems for Mental Health Recovery Narratives: Evaluation of Use and Performance.

IF 4.8 2区 医学 Q1 PSYCHIATRY
Jmir Mental Health Pub Date : 2024-03-29 DOI:10.2196/45754
Emily Slade, Stefan Rennick-Egglestone, Fiona Ng, Yasuhiro Kotera, Joy Llewellyn-Beardsley, Chris Newby, Tony Glover, Jeroen Keppens, Mike Slade
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引用次数: 0

Abstract

Background: Recommender systems help narrow down a large range of items to a smaller, personalized set. NarraGive is a first-in-field hybrid recommender system for mental health recovery narratives, recommending narratives based on their content and narrator characteristics (using content-based filtering) and on narratives beneficially impacting other similar users (using collaborative filtering). NarraGive is integrated into the Narrative Experiences Online (NEON) intervention, a web application providing access to the NEON Collection of recovery narratives.

Objective: This study aims to analyze the 3 recommender system algorithms used in NarraGive to inform future interventions using recommender systems for lived experience narratives.

Methods: Using a recently published framework for evaluating recommender systems to structure the analysis, we compared the content-based filtering algorithm and collaborative filtering algorithms by evaluating the accuracy (how close the predicted ratings are to the true ratings), precision (the proportion of the recommended narratives that are relevant), diversity (how diverse the recommended narratives are), coverage (the proportion of all available narratives that can be recommended), and unfairness (whether the algorithms produce less accurate predictions for disadvantaged participants) across gender and ethnicity. We used data from all participants in 2 parallel-group, waitlist control clinical trials of the NEON intervention (NEON trial: N=739; NEON for other [eg, nonpsychosis] mental health problems [NEON-O] trial: N=1023). Both trials included people with self-reported mental health problems who had and had not used statutory mental health services. In addition, NEON trial participants had experienced self-reported psychosis in the previous 5 years. Our evaluation used a database of Likert-scale narrative ratings provided by trial participants in response to validated narrative feedback questions.

Results: Participants from the NEON and NEON-O trials provided 2288 and 1896 narrative ratings, respectively. Each rated narrative had a median of 3 ratings and 2 ratings, respectively. For the NEON trial, the content-based filtering algorithm performed better for coverage; the collaborative filtering algorithms performed better for accuracy, diversity, and unfairness across both gender and ethnicity; and neither algorithm performed better for precision. For the NEON-O trial, the content-based filtering algorithm did not perform better on any metric; the collaborative filtering algorithms performed better on accuracy and unfairness across both gender and ethnicity; and neither algorithm performed better for precision, diversity, or coverage.

Conclusions: Clinical population may be associated with recommender system performance. Recommender systems are susceptible to a wide range of undesirable biases. Approaches to mitigating these include providing enough initial data for the recommender system (to prevent overfitting), ensuring that items can be accessed outside the recommender system (to prevent a feedback loop between accessed items and recommended items), and encouraging participants to provide feedback on every narrative they interact with (to prevent participants from only providing feedback when they have strong opinions).

心理健康康复叙述推荐系统的实施:使用和性能评估。
背景:推荐系统有助于将大量项目缩小到较小的、个性化的项目集。NarraGive是首个针对心理健康康复叙事的混合推荐系统,它根据叙事内容和叙事者的特点(使用基于内容的过滤)以及叙事对其他类似用户的有益影响(使用协同过滤)来推荐叙事。NarraGive被整合到了 "在线叙事经历"(NEON)干预中,这是一个提供访问NEON康复叙事集的网络应用程序:本研究旨在分析NarraGive中使用的3种推荐系统算法,为未来使用推荐系统对生活经历叙事进行干预提供参考:我们使用最近发布的推荐系统评估框架来构建分析结构,通过评估不同性别和种族的准确性(预测评分与真实评分的接近程度)、精确性(推荐叙事的相关性比例)、多样性(推荐叙事的多样性程度)、覆盖率(可推荐的所有可用叙事的比例)和不公平性(算法是否对弱势参与者的预测准确性较低)来比较基于内容的过滤算法和协同过滤算法。我们使用了 NEON 干预的两项平行组、候补名单对照临床试验(NEON 试验,N=739;NEON for NEON 试验,N=739)中所有参与者的数据:N=739; NEON for other [eg, nonpsychosis] mental health problems [NEON-O] trial:N=1023).这两项试验都纳入了曾使用过或未使用过法定心理健康服务的自述有心理健康问题的人。此外,NEON 试验的参与者在过去 5 年中曾自述患有精神病。我们的评估使用了试验参与者在回答经过验证的叙述反馈问题时提供的李克特量表叙述评分数据库:NEON和NEON-O试验的参与者分别提供了2288个和1896个叙事评分。每个评分叙述的中位数分别为 3 分和 2 分。在NEON试验中,基于内容的过滤算法在覆盖率方面表现较好;协同过滤算法在准确性、多样性以及性别和种族不公平方面表现较好;两种算法在准确性方面都没有较好的表现。在NEON-O试验中,基于内容的过滤算法在任何指标上都没有更好的表现;协同过滤算法在性别和种族方面的准确性和不公平性上表现更好;在准确性、多样性或覆盖率方面,两种算法都没有更好的表现:结论:临床人群可能与推荐系统的性能有关。推荐系统容易受到各种不良偏差的影响。减少这些偏差的方法包括:为推荐系统提供足够的初始数据(以防止过度拟合)、确保可在推荐系统外访问项目(以防止访问项目与推荐项目之间形成反馈循环),以及鼓励参与者对他们与之互动的每个叙述提供反馈(以防止参与者仅在有强烈意见时才提供反馈)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Jmir Mental Health
Jmir Mental Health Medicine-Psychiatry and Mental Health
CiteScore
10.80
自引率
3.80%
发文量
104
审稿时长
16 weeks
期刊介绍: JMIR Mental Health (JMH, ISSN 2368-7959) is a PubMed-indexed, peer-reviewed sister journal of JMIR, the leading eHealth journal (Impact Factor 2016: 5.175). JMIR Mental Health focusses on digital health and Internet interventions, technologies and electronic innovations (software and hardware) for mental health, addictions, online counselling and behaviour change. This includes formative evaluation and system descriptions, theoretical papers, review papers, viewpoint/vision papers, and rigorous evaluations.
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