Fourier Basis Density Model
About
We introduce a lightweight, flexible and end-to-end trainable probability density model parameterized by a constrained Fourier basis. We assess its performance at approximating a range of multi-modal 1D densities, which are generally difficult to fit. In comparison to the deep factorized model introduced in [1], our model achieves a lower cross entropy at a similar computational budget. In addition, we also evaluate our method on a toy compression task, demonstrating its utility in learned compression.
Alfredo De la Fuente, Saurabh Singh, Johannes Ball\'e• 2024
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Word Prediction | LAMBADA | Accuracy29.46 | 112 | |
| Language Modeling | GPT-2 Evaluation Set | Hyper-Prior BPT248.1 | 20 |
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