Lead recommendations for financial products such as funds or ETF is potentially challenging in investment space due to changing market scenarios, and difficulty in capturing financial holder's mindset and their philosophy. Current methods surface leads based on certain product categorization and attributes like returns, fees, category etc. to suggest similar product to investors which may not capture the holder's investment behavior holistically. Other reported works does subjective analysis of institutional holder's ideology. This paper proposes a comprehensive data driven framework for developing a lead recommendations system in holder's space for financial products like funds by using transactional history, asset flows and product specific attributes. The system assumes holder's interest implicitly by considering all investment transactions made and collects possible meta information to detect holder's investment profile/persona like investment anticipation and investment behavior. This paper focusses on holder recommendation component of framework which employs a bi-partite graph representation of financial holders and funds using variety of attributes and further employs GraphSage model for learning representations followed by link prediction model for ranking recommendation for future period. The performance of the proposed approach is compared with baseline model i.e., content-based filtering approach on metric hits at Top-k (50, 100, 200) recommendations. We found that the proposed graph ML solution outperform baseline by absolute 42%, 22% and 14% with a look ahead bias and by absolute 18%, 19% and 18% on completely unseen holders in terms of hit rate for top-k recommendations: 50, 100 and 200 respectively.
翻译:由于不断变化的市场情景,以及难以掌握金融持有人的思维和哲学,对金融产品,如资金或ETF等的牵头建议在投资空间具有潜在的挑战性。目前的方法基于某些产品分类和属性,如收益、收费、类别等,呈现出基于某些产品分类和属性(如收益、收费、类别等)的线索,向投资者建议类似产品,而投资者可能无法整体地捕捉持有人的投资行为。其他报告的工作对机构持有人的意识形态进行了主观分析。本文件提出了一个综合数据驱动框架,以便利用交易历史、资产流动和产品特定属性,为资金等金融产品的持有人空间开发一个牵头建议系统。该系统通过考虑所有投资交易,隐含了持有人的兴趣,并收集了可能的元信息,以探测持有人的投资概况/人,如投资预期和投资行为等。 本文侧重于框架的持有人建议组成部分,即利用各种属性,对金融持有人和资金进行双面图表代表,进一步采用图表模型,然后将数据预测模型用于未来时期的排序建议。拟议方法的绩效与基线模型比较,即考虑在Top-k(50,200,200)上基于内容的筛选方法,以及18页(100%)的绝对比例)的拟议基线建议,我们发现18页的18页前的18页的18页的公式中的拟议的18比。