The fundamental goal of business data analysis is to improve business decisions using data. Business users often make decisions to achieve key performance indicators (KPIs) such as increasing customer retention or sales, or decreasing costs. To discover the relationship between data attributes hypothesized to be drivers and those corresponding to KPIs of interest, business users currently need to perform lengthy exploratory analyses. This involves considering multitudes of combinations and scenarios and performing slicing, dicing, and transformations on the data accordingly, e.g., analyzing customer retention across quarters of the year or suggesting optimal media channels across strata of customers. However, the increasing complexity of datasets combined with the cognitive limitations of humans makes it challenging to carry over multiple hypotheses, even for simple datasets. Therefore mentally performing such analyses is hard. Existing commercial tools either provide partial solutions or fail to cater to business users altogether. Here we argue for four functionalities to enable business users to interactively learn and reason about the relationships between sets of data attributes thereby facilitating data-driven decision making. We implement these functionalities in SystemD, an interactive visual data analysis system enabling business users to experiment with the data by asking what-if questions. We evaluate the system through three business use cases: marketing mix modeling, customer retention analysis, and deal closing analysis, and report on feedback from multiple business users. Users find the SystemD functionalities highly useful for quick testing and validation of their hypotheses around their KPIs of interest, addressing their unmet analysis needs. The feedback also suggests that the UX design can be enhanced to further improve the understandability of these functionalities.
翻译:商业数据分析的根本目标是利用数据改进商业决策; 商业用户经常作出决定,以达到关键业绩指标(KPI),如增加客户保留或销售,或降低成本; 然而,由于数据集日益复杂,加上人的认知局限性,因此难以跨越多个假设假设,即使是简单的数据集。 因此,进行这种分析是困难的。 现有的商业工具要么提供部分解决方案,要么无法完全满足商业用户的需要。 我们在这里提出四个功能,使商业用户能够互动地学习数据集之间的关系和理由,从而便利数据驱动的决策。 我们在系统D中实施这些功能,一个互动直观数据分析系统,使商业用户能够对数据进行实验,即使对于简单的数据集也是如此。 因此,在精神上进行这种分析是困难的。