modelMatSelection | R Documentation |
Retrieve topic-cell and region-topic assignments
modelMatSelection(object, target, method, all.regions = FALSE)
object |
Initialized cisTopic object, after the object@selected.model has been filled. |
target |
Whether dimensionality reduction should be applied on cells ('cell') or regions ('region'). Note that for speed and clarity reasons, dimesionality reduction on regions will only be done using the regions assigned to topics with high confidence (see binarizecisTopics()). |
method |
Select the method for processing the cell assignments: 'Z-score' and 'Probability'. In the case of regions, an additional method, 'NormTop' is available (see getRegionScores()). |
all.regions |
If target is region, whether to return a matrix with all regions or only regions belonging to binarized topics (see binarizecisTopics()). |
'Z-score' computes the Z-score for each topic assingment per cell/region. 'Probability' divides the topic assignments by the total number
of assignments in the cell/region in the last iteration plus alpha. If using 'NormTop', regions are given an score defined by: \beta_{w, k} (\log
\beta_{w,k} - 1 / K \sum_{k'} \log \beta_{w,k'})
.
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.