IEEE VIS 2024 Content: “Show Me What’s Wrong!”: Combining Charts and Text to Guide Data Analysis

“Show Me What’s Wrong!”: Combining Charts and Text to Guide Data Analysis

Beatriz Feliciano - Feedzai, Lisbon, Portugal

Rita Costa - Feedzai, Lisbon, Portugal

Jean Alves - Feedzai, Porto, Portugal

Javier Liébana - Feedzai, Madrid, Spain

Diogo Ramalho Duarte - Feedzai, Lisbon, Portugal

Pedro Bizarro - Feedzai, Lisbon, Portugal

Room: Bayshore II

2024-10-14T16:00:00ZGMT-0600Change your timezone on the schedule page
2024-10-14T16:00:00Z
Exemplar figure, described by caption below
The interface guides the analysis of financial multi-dimensional datasets through multiple levels of detail exploration. It is composed of (A) a region where the alert is segmented in the subgroups that compose it (A.1, A.2, A.3, A.4, A.5, and A.6) and where groups that require more attention (in this case, A.5) are highlighted in red; (B) an automatically generated text summary of a selected area (A.3) that provides a broad understanding of the group; and (C) an interactive graphical representation of all the data points of the selected area to explore information in detail.
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Abstract

Analyzing and finding anomalies in multi-dimensional datasets is a cumbersome but vital task across different domains. In the context of financial fraud detection, analysts must quickly identify suspicious activity among transactional data. This is an iterative process made of complex exploratory tasks such as recognizing patterns, grouping, and comparing. To mitigate the information overload inherent to these steps, we present a tool combining automated information highlights, Large Language Model generated textual insights, and visual analytics, facilitating exploration at different levels of detail. We perform a segmentation of the data per analysis area and visually represent each one, making use of automated visual cues to signal which require more attention. Upon user selection of an area, our system provides textual and graphical summaries. The text, acting as a link between the high-level and detailed views of the chosen segment, allows for a quick understanding of relevant details. A thorough exploration of the data comprising the selection can be done through graphical representations. The feedback gathered in a study performed with seven domain experts suggests our tool effectively supports and guides exploratory analysis, easing the identification of suspicious information.