Cutting out the Middle-Man: Training and Evaluating Energy-Based Models without Sampling
Grathwohl, Will, Wang, Kuan-Chieh, Jacobsen, Jorn-Henrik, Duvenaud, David, Zemel, Richard
We present a new method for evaluating and training unnormalized density models. Our approach only requires access to the gradient of the unnormalized model's log-density. We estimate the Stein discrepancy between the data density p(x) and the model density q(x) defined by a vector function of the data. We parameterize this function with a neural network and fit its parameters to maximize the discrepancy. This yields a novel goodness-of-fit test which outperforms existing methods on high dimensional data. Furthermore, optimizing $q(x)$ to minimize this discrepancy produces a novel method for training unnormalized models which scales more gracefully than existing methods. The ability to both learn and compare models is a unique feature of the proposed method.
Feb-14-2020
- Country:
- North America
- United States > California (0.04)
- Canada > Ontario
- Toronto (0.14)
- Asia > Middle East
- Jordan (0.04)
- North America
- Genre:
- Research Report > Promising Solution (0.34)
- Industry:
- Health & Medicine > Therapeutic Area (0.36)