How data science workers work with data
Michael Muller, Ingrid Lange, et al.
CHI 2019
Foraging among similar variants of the same artifact is a common activity, but computational models of Information Foraging Theory (IFT) have not been developed to take such variants into account. Without being able to computationally predict people's foraging behavior with variants, our ability to harness the theory in practical ways - such as building and systematically assessing tools for people who forage different variants of an artifact - is limited. Therefore, in this paper, we introduce a new predictive model, PFIS-V, that builds upon PFIS3, the most recent of the PFIS family of modeling IFT in programming situations. Our empirical results show that PFIS-V is up to 25% more accurate than PFIS3 in predicting where a forager will navigate in a variationed information space.
Michael Muller, Ingrid Lange, et al.
CHI 2019
Andreea Danielescu, David Piorkowski
CHI 2022
Q. Vera Liao, Biplav Srivastava, et al.
CHI 2017
David Piorkowski, Sean Penney, et al.
VL/HCC 2017