Introduction to cell representation learning via contrastive learning
组织者
演讲者
周涛
时间
2024年01月04日 21:00 至 21:30
地点
Online
摘要
ScRNA-seq methods generate a wealth of high-dimensional data characterizing the heterogeneity of cell populations. Representation learning methods are routinely used to analyze these complex, high-dimensional data by projecting them into lower dimensional embeddings. This facilitates the interpretation and interrogation of the structures, dynamics, and regulation of cell heterogeneity. This week, we will focus on contrastive learning methods and introduce some of the latest work in this field. By understanding the latest methods, it helps us to further explore the possibility of applying the natural vector method in single-cell data representation in the future.