Release Notes Version 7 9

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Version 7.9 of PLS_Toolbox and Solo was released in October, 2014.

For general product information, see PLS_Toolbox Product Page. For information on Solo, see Solo Product Page.

(back to Release Notes PLS Toolbox and Solo)

New Features in Solo and PLS_Toolbox

  • The release of Matlab 2014b includes a major update to the graphical infrastructure. PLS_Toolbox/Solo 7.9 has undergone significant updates to be compatible with Matlab 2014b.
  • Multiple fixes for Mac stability and speed.
  • Improved warning management.

BUG FIXES & ENHANCEMENTS

  • ASCA
Allow plotting of variable effects on either RAW data or PREPROCESSED data.
  • baseline
Improved basline options for min/max subtraction.
  • browse
Allow dropping of Image Processor data.
  • clipboard_image
Fix copying image to clipboard for Mac.
  • corrmap
Add abilit to copy and or save data.
  • crossval
Improved handling of crossvalidation switching between iterations & venetian blind width.
  • doegui
Add ability to save confusion matrix data.
  • exportfigure
Updates for MS Office 2013.
  • flucut
New tool that allows interpolation instead of just missing data replacement of scatter.
  • modelselectorgui
Add scrolling screen capture for taking images of long (left-right) models.
  • modeloptimizergui
Several updates and fixes for better preprocessing iteration.
  • opusreadr
Multiple updates for error checking and new format.
  • parsexml
Enable base64 compression.
  • PLSDA
Assure all model object fields are copied over from parent model to predictions.
  • preprocess
Haar transform added to preprocessing.
  • SVM
Add decision function values to model as model.detail.svm.decfnvals and model.detail.svm.decfnvals_pred.