Litcius/Paper detail

Multiscale analysis of count data through topic alignment

Julia Fukuyama, Kris Sankaran, Laura Symul

2022Biostatistics14 citationsDOI

Abstract

Summary Topic modeling is a popular method used to describe biological count data. With topic models, the user must specify the number of topics $K$. Since there is no definitive way to choose $K$ and since a true value might not exist, we develop a method, which we call topic alignment, to study the relationships across models with different $K$. In addition, we present three diagnostics based on the alignment. These techniques can show how many topics are consistently present across different models, if a topic is only transiently present, or if a topic splits into more topics when $K$ increases. This strategy gives more insight into the process of generating the data than choosing a single value of $K$ would. We design a visual representation of these cross-model relationships, show the effectiveness of these tools for interpreting the topics on simulated and real data, and release an accompanying R package, alto

Topics & Concepts

Computer scienceCount dataRepresentation (politics)Topic modelValue (mathematics)Process (computing)Data miningInformation retrievalData scienceMachine learningStatisticsMathematicsProgramming languageLawPoliticsPolitical sciencePoisson distributionGene expression and cancer classificationBioinformatics and Genomic NetworksData Analysis with R