3.8 Proceedings Paper

Amortized Inference with User Simulations

出版社

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3544548.3581439

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simulation models; inverse modeling; amortized inference

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There has been significant progress in simulation models for predicting human behavior, but determining parameter values and the time-consuming parameter inference remain challenges. This study explores amortized inference as a solution to dramatically reduce inference time and demonstrates its effectiveness in analyzing large-scale datasets for human-computer interaction tasks. The study also highlights emerging opportunities and challenges in applying amortized inference in HCI.
There have been significant advances in simulation models predicting human behavior across various interactive tasks. One issue remains, however: identifying the parameter values that best describe an individual user. These parameters often express personal cognitive and physiological characteristics, and inferring their exact values has significant effects on individual-level predictions. Still, the high complexity of simulation models usually causes parameter inference to consume prohibitively large amounts of time, as much as days per user. We investigated amortized inference for its potential to reduce inference time dramatically, to mere tens of milliseconds. Its principle is to pre-train a neural proxy model for probabilistic inference, using synthetic data simulated from a range of parameter combinations. From examining the efficiency and prediction performance of amortized inference in three challenging cases that involve real-world data (menu search, point-and-click, and touchscreen typing), the paper demonstrates that an amortized-inference approach permits analyzing large-scale datasets by means of simulation models. It also addresses emerging opportunities and challenges in applying amortized inference in HCI.

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