Release Notes Version 8 0
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Version 8.0 of PLS_Toolbox and Solo was released in June, 2015.
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
Multi-Block, Model and Data Fusion Tool
- Multiblock Tool - Interface to view, manipulate, and join data. Can be used for data and model fusion, or multi-block modeling.
- Join multiple blocks of variables measured on the same samples (alignment based on labels, axis scales, or size).
- Automatically align and join time-based blocks of data (based on time axis scale).
- Optionally build models on one or more blocks and join outputs from those blocks (model fusion).
- Choose and apply block-specific preprocessing before joining.
- Save multiblock model to use to join new data, including application of defined preprocessing and models.
- After building model from joined data, Analysis automatically splits loadings into component block segments for ease of interpretation.
Analysis and Models
- MLSCA - Multi-level simultaneous component analysis method added.
- Shortcuts to Data Fusion methods Multiblock Tool and Hierarchical Model Builder
- Re-designed Analysis and Preprocessing menus for ease-of-use and consistency.
- ANN now supports custom cross-validation.
- PLSDA variance captured plot now available.
- Better handleing of full-rank PCA simca sub-models (where Q residuals are zero.)
Plotting
- Significantly faster selection "linking".
- Improve handling of zoom status in newer versions of Matlab.
- Better handling of font sizes on different screen sizes and platforms.
- Smarter plot style (e.g., scatter vs. bar) assumptions in "automatic" mode.
- Fix rearranging of controls issue with newer versions of Matlab.
- Added Compress **********
- Connect Classes button has drop-down menu to display connection types.
- Add logic to NORMALIZE score distance to maximum calibration value.
- Respect include field when calculating scores limit
- Show knn score distance limits on plotscores plots.
Importers
- omnicreadr - Reads OMNICix HDF5 image files.
- Improved importer behavior with mixed length data using matchvars during import.
- Updated libraries to use new labspec 6 components including 64 bit support.
- xlsreadr - Add support for joining sheets in rows using matchvars.
- Add support for using the same graphically-selected parsing options on ALL sheets.
Preprocessing
- glog Generalized Log Transform added to preprocessing options.
- pqnorm Probabilistic Quotient Normalization added to preprocessing options.
- glsw Clarified how ELS/EMM and EPO options are related
- Add support for handling missing data in both normaliz and mscorr (median only).
Other Interfaces
- Model Optimizer - Better handling of numeric data in comparison table, additional statistics, and improved handling of include field.
- Add better support for model groupings in PLSDA and SVMDA within model optimizer.
- Better help integration with newer version of Matlab.
- Hierarchical Model Builder - Add vertical scrolling.
New Command-line Features and Functions
Misc New Functions
- eemoutlier - New function for automatically removing outliers in fluorescence PARAFAC models.
- mlsca Multi-level Simultaneous Component Analysis.
- multiblock Create or apply a multiblock model for joining data.
Command-Line Changes
- matchvars - Add logic to speed up some cases of joins.
- mdcheck - Allow use of KNN as data replacement method (replace missing data with data from sample(s) which are closest).
- jmlimit - Better handle degenerate cases when multiple confidence levels are requested (return VECTOR of zeros instead of single zero).
- cov_cv - Changed from SVDS to SVD.
- histaxes - Fix for when NaN's are present in data.
- als - Sort components by variance captured (if no constraints otherwise defining order).
- confusionmatrix - Report additional quantities for each class: count, classification error, precision and F1 score..
- Standardize terminology: TP = count, TPR = proportion (rate) for confusion matrix quantities, and labels shown.
- comparemodels - Report the mean (class count weighted) of Classification Error, Precision, F1 Score for classification models.