FMLens: Towards Better Scaffolding the Process of Fund Manager Selection in Fund Investments

Longfei Chen;Chen Cheng;He Wang;Xiyuan Wang;Yun Tian;Xuanwu Yue;Wong Kam-Kwai;Haipeng Zhang;Suting Hong;Quan Li
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Abstract

The fund investment industry heavily relies on the expertise of fund managers, who bear the responsibility of managing portfolios on behalf of clients. With their investment knowledge and professional skills, fund managers gain a competitive advantage over the average investor in the market. Consequently, investors prefer entrusting their investments to fund managers rather than directly investing in funds. For these investors, the primary concern is selecting a suitable fund manager. While previous studies have employed quantitative or qualitative methods to analyze various aspects of fund managers, such as performance metrics, personal characteristics, and performance persistence, they often face challenges when dealing with a large candidate space. Moreover, distinguishing whether a fund manager's performance stems from skill or luck poses a challenge, making it difficult to align with investors’ preferences in the selection process. To address these challenges, this study characterizes the requirements of investors in selecting suitable fund managers and proposes an interactive visual analytics system called FMLens. This system streamlines the fund manager selection process, allowing investors to efficiently assess and deconstruct fund managers’ investment styles and abilities across multiple dimensions. Additionally, the system empowers investors to scrutinize and compare fund managers’ performances. The effectiveness of the approach is demonstrated through two case studies and a qualitative user study. Feedback from domain experts indicates that the system excels in analyzing fund managers from diverse perspectives, enhancing the efficiency of fund manager evaluation and selection.
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FMLens:在基金投资中为基金经理遴选过程提供更好的支架
基金投资行业严重依赖基金经理的专业知识,他们承担着代表客户管理投资组合的责任。凭借他们的投资知识和专业技能,基金经理比市场上的普通投资者获得了竞争优势。因此,投资者更愿意将投资委托给基金经理,而不是直接投资于基金。对于这些投资者来说,他们最关心的是选择合适的基金经理。虽然以往的研究采用了定量或定性的方法来分析基金经理的各个方面,如绩效指标、个人特征和绩效持久性,但在处理较大的候选人空间时,他们往往面临挑战。此外,区分基金经理的业绩是源于技能还是运气,是一项挑战,这使得基金经理很难在选择过程中与投资者的偏好保持一致。为了应对这些挑战,本研究描述了投资者在选择合适的基金经理时的要求,并提出了一个名为FMLens的交互式可视化分析系统。该系统简化了基金经理的选择过程,允许投资者从多个维度有效地评估和解构基金经理的投资风格和能力。此外,该制度还赋予投资者审查和比较基金经理业绩的权力。通过两个案例研究和一个定性用户研究证明了该方法的有效性。领域专家的反馈表明,该系统善于从多个角度分析基金经理,提高了基金经理评价和选择的效率。
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