Leveraging GANs to Improve Continuous Path Keyboard Input Models
AuthorsAkash Mehra, Jerome R. Bellegarda, Ojas Bapat, Partha Lal, Xin Wang
Leveraging GANs to Improve Continuous Path Keyboard Input Models
AuthorsAkash Mehra, Jerome R. Bellegarda, Ojas Bapat, Partha Lal, Xin Wang
Continuous path keyboard input has higher inherent ambiguity than standard tapping, because the path trace may exhibit not only local overshoots/undershoots (as in tapping) but also, depending on the user, substantial mid-path excursions. Deploying a robust solution thus requires a large amount of high-quality training data, which is difficult to collect/annotate. In this work, we address this challenge by using GANs to augment our training corpus with user-realistic synthetic data. Experiments show that, even though GAN-generated data does not capture all the characteristics of real user data, it still provides a substantial boost in accuracy at a 5:1 GAN-to-real ratio. GANs therefore inject more robustness in the model through greatly increased word coverage and path diversity.
Path-Constrained Mixture-of-Experts
July 6, 2026research area Methods and Algorithms, research area Speech and Natural Language Processing
Sparse Mixture-of-Experts (MoE) architectures route each token through a subset of experts at each layer independently. We propose viewing MoE computation through the lens of expert paths—the sequence of expert selections a token makes across all layers. This perspective reveals that, despite N^L possible paths for N experts across L layers, tokens in practice cluster into a small fraction of paths that align with linguistic function, yet the…
Apple sponsored the 45th International Conference on Acoustics, Speech, and Signal Processing (ICASSP) in May 2020. With a focus on signal processing and its applications, the conference took place virtually from May 4 - 8. Read Apple’s accepted papers below.