TY - UNPB
T1 - Provectories: Embedding-based Analysis of Interaction Provenance Data
AU - Walchshofer, Conny
AU - Hinterreiter, Andreas
AU - Xu, Kai
AU - Stitz, Holger
AU - Streit, Marc
PY - 2020/12
Y1 - 2020/12
N2 - Understanding user behavior patterns and visual analysis strategies is a long-standing challenge. Existing approaches rely largely on time-consuming manualprocesses such as interviews and the analysis of observational data. While it is technically possible to capture a history of user interactions and application states, it remains difficult to extract and describe analysis strategies based on interaction provenance. In this paper, we propose a novel visual approach to meta-analysis of interaction provenance. We capture single and multiple user sessions as graphs of high-dimensional application states. Our meta-analysis is based on two different types of two-dimensional embeddings of these high-dimensional states: layouts based on (i) topology and (ii) attribute similarity. We applied these visualization approaches to synthetic and real user provenance data. From our visualizations, we were able to extract patterns for data types and analytical reasoning strategies.
AB - Understanding user behavior patterns and visual analysis strategies is a long-standing challenge. Existing approaches rely largely on time-consuming manualprocesses such as interviews and the analysis of observational data. While it is technically possible to capture a history of user interactions and application states, it remains difficult to extract and describe analysis strategies based on interaction provenance. In this paper, we propose a novel visual approach to meta-analysis of interaction provenance. We capture single and multiple user sessions as graphs of high-dimensional application states. Our meta-analysis is based on two different types of two-dimensional embeddings of these high-dimensional states: layouts based on (i) topology and (ii) attribute similarity. We applied these visualization approaches to synthetic and real user provenance data. From our visualizations, we were able to extract patterns for data types and analytical reasoning strategies.
UR - https://osf.io/mtfxn/
U2 - 10.31219/osf.io/mtfxn
DO - 10.31219/osf.io/mtfxn
M3 - Preprint
T3 - OSF Preprints
BT - Provectories: Embedding-based Analysis of Interaction Provenance Data
ER -