Abstract and 1. Introduction

2. Background

2.1 Amortized Stochastic Variational Bayesian GPLVM

2.2 Encoding Domain Knowledge through Kernels

3. Our Model and Pre-Processing and Likelihood

3.2 Encoder

4. Results and Discussion and 4.1 Each Component is Crucial to Modifies Model Performance

4.2 Modified Model achieves Significant Improvements over Standard Bayesian GPLVM and is Comparable to SCVI

4.3 Consistency of Latent Space with Biological Factors

4. Conclusion, Acknowledgement, and References

A. Baseline Models

B. Experiment Details

C. Latent Space Metrics

D. Detailed Metrics

D DETAILED METRICS

We report the latent metrics for the first two experiments, taking the mean and standard deviation across trained models from three different seeds. Blue columns correspond to batch metrics and Green columns correspond to cell-type metrics.

D.1 ABLATION STUDY

D.2 BENCHMARKING

This paper is available on arxiv under CC BY-SA 4.0 DEED license.

Authors:

(1) Sarah Zhao, Department of Statistics, Stanford University, ([email protected]);

(2) Aditya Ravuri, Department of Computer Science, University of Cambridge ([email protected]);

(3) Vidhi Lalchand, Eric and Wendy Schmidt Center, Broad Institute of MIT and Harvard ([email protected]);

(4) Neil D. Lawrence, Department of Computer Science, University of Cambridge ([email protected]).