# radiant.model 1.6.7 - Fixed documentation for decision tree sensitivity analysis - Added a warning in case an integer overflow occurs in decision analysis calculations - Fixed an issue where loading a yaml file for decision analysis could overwrite an existing tree structure - Fixed issues with Permutation Importance, Prediction, and Partial Dependence plots with stepwise regression is used. Applies to both logistic and linear regression # radiant.model 1.6.6 * Require Shiny 1.8.1. Adjustments related to icon-buttons were made to address a breaking change in Shiny 1.8.1 * Reverting changes that removed `req(input$dataset)` in different places # radiant.model 1.6.3 * Fix for change in vip package metric name for r2 # radiant.model 1.6.0 * Added scaling factor for profit calculations in Model > Evaluate Classification * Replace dplyr::all_equal with all.equal due deprecation warning * Using "Radiant for R" in UI to differentiate from "Radiant for Python" * Check if the value of mtry for random forest is less than 0 or larger than the number of variables in the model * Addressed a package documentation issue due to a change in roxygen2 # radiant.model 1.5.0 * Improvements to screenshot feature. Navigation bar is omitted and the image is adjusted to the length of the UI. * Removed all references to `aes_string` which is being deprecated in ggplot * Replaced "size" argument, deprecated in ggplot2, with "linewidth" * Added functionality to create pdp plots, prediction plots (pred_plot), and permutation importance plots (varimp) for most available models. Prediction plots are convenient to quickly check for possible interactions which would take longer to generate using PDP * Added AUC and Adjusted Pseudo R-squared to model fit metrics for logistic regression # radiant.model 1.4.10 * Fix when parsing commands using strsplit on ';' * Use `dplyr::near` to avoid issues with user-provided probabilities not summing to 1 due to machine tolerance # radiant.model 1.4.8 * gsub("[\x80-\xFF]", "", text) is no longer valid in R 4.2.0 and above. Non-asci symbols will now be escaped using stringi # radiant.model 1.4.6 * Added option to create screenshots of settings on a page. Approach is inspired by the snapper package by @yonicd * Download decision analysis and decision tree plots generated using mermaid (DiagrammeR) to png format # radiant.model 1.4.4 * Fix for change in input format for XGBoost that broke cross-validation # radiant.model 1.4.3 * Fix for breaking change in as.vector for data.frames in the development version of R # radiant.model 1.4.2 * Fixed `is_empty` function clash with `rlang` * Adjustments to work with the latest version of `shiny` and `bootstrap4` # radiant.model 1.4.1 * Fixed an issue where variables used in Decision Analysis with a one letter label caused problems evaluating the tree correctly * Provide easier access to payoffs, probabilities, etc. from a solved Decisions Analysis tree # radiant.model 1.4.0 * Allow jitter in regression plots with scatter * Log transformation of nnet::multinom estimates is no longer needed # radiant.model 1.3.16 * Remove missing values from _tidy_ model output # radiant.model 1.3.15 * Allow user to include or exclude variables from the coefficient plot in linear and logistic regression * Fix for error on R-dev in _Model > Collaborative filtering_ ("Error in xtfrm.data.frame(x) : cannot xtfrm data frames") # radiant.model 1.3.14 * Fix for issue introduced by version 0.7.0 of the broom package related to degrees of freedom in linear regression * Fix for NoLD issue (XGBoost) identified by CRAN on Linux * Fix for NoLD issue (XGBoost) identified by CRAN on Solaris # radiant.model 1.3.12 * Fix for _Model > Decision analysis_. Indent levels could be affected when the input file contains blank lines * Improvement in calculating PDP for categorical variables in plot.gbt based on suggestion by @benmarchi (https://github.com/radiant-rstats/radiant.model/issues/4) # radiant.model 1.3.9 * Minor adjustments in anticipation of dplyr 1.0.0 # radiant.model 1.3.8 * Fix for cv.rforest when the max of `mtry` exceeds the number of explanatory variables * Fix to write.coeff when one or more coefficients have a missing value * Use weighted mean and sd in write.coeff function when needed * Added flexibility in using constants while defining the spec for other randomly generated variables # radiant.model 1.3.5 * Adding `OR%` change as a columns in output for _Model > Logistic regression_ and the `write.coeff` function * Restrict max number of levels in a "groupable" variable used in _Model > Evaluate classification_ and _Model > Multinomial logistic regression_ to no more than 50 * Avoid rounding the profit measures in _Model > Evaluate classificiation_ # radiant.model 1.3.2 * Improvements to cv.gbt to allow previously setup evaluation functions to be used in cross validation for hyper parameter tuning * Random Forest module using the `ranger` package. Includes a `cv.rforest` function for tuning using cross-validation * Gradient Boosted Trees module using the `xgboost` package. Includes a `cv.gbt` function for tuning using cross-validation. For convenience, all data.frame-to-matrix-conversion is handled by radiant * Partial Dependence Plots for all trees-based estimation modules and for neural networks * `onehot` function to make converting a data.frame with categorical variables to a matrix a bit easier # radiant.model 1.3.0 * Allow specification of multiple summary functions in _Model > Simulate > Repeat_ * Documentation updates to link to new video tutorials * Use `patchwork` for grouping multiple plots together * Allow formula input for `logistic` and `regress` functions * Adjust correlation plot for NB to accommodate changes in _Basics > Correlation_ * Fix for repeated simulation (_Model > Simulate > Repeat_) where "Variables to re-simulate" and "Output variables" were not always updated correctly when the set of available variables changed # radiant.model 1.2.7 * Fix prediction issue when using I(x^2) in a stepwise estimation process and x is removed * Fix issue finding .as_int and .as_num when use radiant through shiny server # radiant.model 1.2.5 * Option to drop the intercept for _Model > Multinomial Logistic Regression_ * Provide access to the variables in a dataset during simulation and repeated simulation. # radiant.model 1.2.2 * Various fixes related to stepwise estimation of Multinomial, Logistic, and Linear regression model (e.g., VIF calculation, models with only an intercept, perfect multicollinearity, etc.). # radiant.model 1.2.1 * Fix to ensure environment is not attached as an attribute to data frames generated in the _Model > Simulate_ tool # radiant.model 1.2.0 * Update action buttons that initiate calculations when one or more relevant inputs are changed. When, for example, a model should be re-estimated, a spinning "refresh" icon will be shown * Add option to use a formula for the `regress` function * Improved description of standardization process used. Added link to [Gelman 2008](http://www.stat.columbia.edu/~gelman/research/published/standardizing7.pdf) * Added an influence plot that shows standardized residuals and cooks-distance # radiant.model 1.1.10 * Fix for `nobs` in _Model > Multinomial logistic regression_. * Fix for `write.coeff` for use with _Model > Multinomial logistic regression_ * Fix for decision trees that reference sub-trees. Environment to evaluate the tree is now explicitly provided. This will now also work with (sub) trees loaded from .yaml files * Decision analysis now allows basic formulas in all parts of the tree * Added confusion matrix and misclassification error for _Model > Multinomial Logistic regression (MNL)_ * Fix for saving multiple residual series for MNL * Added a module for Multinomial Logistic regression (MNL) in the _Model > Estimate_ menu * Fix for confusion matrix which couldn't find find the selected dataset in the web-interface * Documentation fixes and updates * Improved checks for variables that show no variation * Numerous small code changes to support enhanced auto-completion, tooltips, and annotations in shinyAce 0.4.1 * Automatically fix faulty spacing in user input in Model > Decision Analysis # radiant.model 1.0.0 * Keyboard shortcut (Enter) when defining variable in Model > Simulate * Allow series of type ts and date in models and prediction * Autocompletion for functions in Model > Simulate * Require shinyAce 0.4.0 # radiant.model 0.9.9.3 * Don't use simulation variables when their type is not selected * Provide auto-completion for variables and relevant functions in the Simulate > Functions input * Keyboard shortcuts for add a defined variable (i.e., press enter after adding the last input value) # radiant.model 0.9.9.2 * Fix for variable definition in _Model > Simulate_ where names of discrete random variables were not properly 'fixed' * Fix for variable selection in _Model > Decision analysis > Sensitivity_ # radiant.model 0.9.9.0 * Allow any variable in the prediction dataset to be used to customize a prediction when using _Predict > Data & Command_ * Fix for `write.coeff` when interactions, quadratic, and/or cubic terms are included in a linear or logistic regression * Rescale predictions in `cv.nn` so RMSE and MAE are in the original scale even if the data were standardized for estimation * Rename `scaledf` to `scale_df` for consistency * Fix for plot sizing and printing of missing values in collaborative filtering * Fix for `cv.nn` when weights are used in estimation * Improve documentation for cross-validation of `nn` and `crtree` models (i.e., `cv.nn` and `cv.crtree`) * Fixes for breaking changes in dplyr 0.8.0 * Fix to download tables from _Model > Evaluate classificiation_ * Use an expandable `shinyAce` input for the formula and function inputs in _Model > Simulate_ * Fixes for repeated simulation with grid-search * Use `test` instead of `validation` # radiant.model 0.9.8.0 * Option to add user defined function to simulations. This dramatically increases the flexibility of the simulation tool * Ensure variable and dataset names are valid for R (i.e., no spaces or symbols), "fixing" the input as needed * Cross validation functions for decision trees (`cv.crtree`) and neural networks(`cv.nn`) that can use various performance metrics for during evaluation e.g., `auc` or `profit` * Option to add square and cube terms in _Model > Linear regression_ and _Model > Logistic regression_. * Option to pass additional arguments to `shiny::runApp` when starting radiant such as the port to use. For example, radiant.model::radiant.model("https://github.com/radiant-rstats/docs/raw/gh-pages/examples/demo-dvd-rnd.state.rda", port = 8080) * Avoid empty string showing up in auto-generated code for model prediction (i.e., `pred_data` or `pred_cmd`) * Fix for VIF based on `car` for `regress` and `logistic` * Load a state file on startup by providing a (relative) file path or a url. For example, radiant.model::radiant.model("https://github.com/radiant-rstats/docs/raw/gh-pages/examples/demo-dvd-rnd.state.rda") * Don't live-update the active tree input to make it easier to save edits to a new tree without adding edits to the existing tree (Model > Decision analysis) * Fix for NA error when last line of a decision analysis input is a node without a payoff or probability * Load input (CMD + O) and Save input (CMD + S) keyboard shortcuts for decision analysis # radiant.model 0.9.7.0 ## Major changes * Using [`shinyFiles`](https://github.com/thomasp85/shinyFiles) to provide convenient access to data located on a server ## Minor changes * Fix for simulations that use a data set as part of the analysis * Replace non-ASCII characters in example datasets * Remove `rstudioapi` as a direct import * Revert from `svg` to `png` for plots in `_Report > Rmd_ and _Report > R_. `svg` scatter plots with many point get to big for practical use on servers that have to transfer images to a local browser * Removed dependency on `methods` package # radiant.model 0.9.5.0 ## Major changes * Various changes to the code to accommodate the use of `shiny::makeReactiveBinding`. The advantage is that the code generated for _Report > Rmd_ and _Report > R_ will no longer have to use `r_data` to store and access data. This means that code generated and used in the Radiant browser interface will be directly usable without the browser interface as well. * Improved documentation and examples # radiant.model 0.9.2.3 ## Bug fixes * Fix for https://github.com/radiant-rstats/radiant/issues/53 # radiant.model 0.9.2.2 ## Major changes * Show the interval used in prediction for _Model > Regression_ and _Model > logistic_ (e.g., "prediction" or "confidence" for linear regression) * Auto complete in _Model > Decision analysis_ now provides hints based on the current tree input and any others defined in the app. It also provides suggestions for the basic element of the tree (e.g., `type: decision`, `type: chance`, `payoff`, etc.) * Updated user messages for _Model > Decision analysis_ when input has errors # radiant.model 0.9.2.1 ## Major changes * Default interval for predictions from a linear regression is now "confidence" rather than "prediction" * `Estimate model` button indicates when the output has been invalidated and the model should be re-estimated * Combined _Evaluate classification_ Summary and Plot into Evaluate tab * Upload and download data using the Rstudio file browser. Allows using relative paths to files (e.g., data or images inside an Rstudio project) ## Minor changes * Require `shinyAce` 0.3.0 in `radiant.data` and `useSoftTabs` for _Model > Decision Analysis_ # radiant.model 0.9.1.0 ## Major changes * Add Poisson as an option for _Model > Simulate_ ## Bug fixes * Fix for [#43](https://github.com/radiant-rstats/radiant/issues/43) where scatter plot was not shown for a dataset with less than 1,000 rows * Fixed example for logistic regression prediction plot * Fix for case weights when minimum response value is 0 # radiant.model 0.9.0.15 ## Minor changes * Allow character variables in estimation and prediction * Depend on DiagrammeR 1.0.0 # radiant.model 0.9.0.13 ## Major changes * Residual diagnostic plot for Neural Network regression * Improved handling of case weights for logistic regression and neural networks ## Minor changes * Show number of observations used in training and validation in _Model > Evaluate classification_ * Use Elkan's formula to adjust probabilities when using `priors` in `crtree` (`rpart`) * Added options to customize tree generated using `crtree` (based on `rpart`) * Better control of tree plot size in `plot.crtree` * Cleanup of `crtree` code * Improved printing of NN weights * Option to change font size in NN plots * Keyboard shortcut: Press return when cursor is in textInput to store residuals or predictions ## Bug fixes * Fix for tree labels when (negative) integers are used # radiant.model 0.9.0.8 ## Minor changes * Cleanup of lists returned by `evalbin` and `confusion` * Add intercept in coefficient tables that can be downloaded for linear and logistic regression or using `write.coeff` * Convert logicals to factors in `crtree` to avoid labels < 0.5 and >= 0.5 * Improved labeling of decision tree splits in `crtree`. The tooltip (aka hover-over) will contain all levels used, but the tree label may be truncated as needed ## Bug fixes * Fix input reset when screen size or zoom level is changed # radiant.model 0.9.0.4 * Renamed `ann` to `nn`. The `ann` function is now deprecated # radiant.model 0.9.0.3 ## Major changes * Prediction confidence interval provided for logistic regression based on blog post by [Gavin Simpson] (https://www.fromthebottomoftheheap.net/2017/05/01/glm-prediction-intervals-i/) * Argument added to `logistic` to specify if profiling or the Wald method should be used for confidence intervals. Profiling will be used by default for datasets with fewer than 5,000 rows # radiant.model 0.9.0.2 ## Minor changes * Left align tooltip in DiagrammeR plots (i.e., _Model >Decision Analysis_ and _Model > Classification and regression trees_) * Add information about levels in tree splits to tooltips (_Model > Classification and regression trees_) ## Bug fixes * Fix to ensure DiagrammeR plots are shown in Rmarkdown report generate in _Report > Rmd_ or _Report > R_ # radiant.model 0.9.0.1 ## Major changes * Added option to generate normally distributed correlated data in Model > Simulate * Added option to generate normally distributed simulated data with exact mean and standard deviation in Model > Simulate * Long lines of code generated for _Report > Rmd_ will be wrapped to enhance readability ## Minor changes * Default names when saving Decision Analysis input and output are now based on tree name * Allow browser zoom for tree plots in Model > Decision Analysis and Model > Classification and Regression Trees * Enhanced keyboard shortcuts for estimation and reporting * Applied `styler` to code ## Bug fixes * Grid search specs ignored when _Model > Simulate > Repeat_ is set to `Simulate` * The number of repetitions in Model > Simulate was NA when grid search was used * Fix for large weights that may cause an integer overflow * Minor fix for coefficient plot in `plot.logistic` * Fixed state setting for decision analysis sensitivity input * Fixed for special characters (e.g., curly quote) in input for Model > Decision Analysis * Check that costs are not assigned to terminal nodes in Decision Analysis Trees. Specifying a cost is only useful if it applies to multiple nodes in a branch. If the cost only applies to a terminal node adjust the payoff instead * Ensure : are followed by a space in the YAML input to Model > Decision Analysis # radiant.model 0.8.7.4 ## Minor change * Upgraded dplyr dependency to 0.7.1 * Upgraded tidyr dependency to 0.7 ## Bug fix * Fix in `crs` when a tibble is passed # radiant.model 0.8.3.0 ## Major change * Added option to use robust standard errors in _Linear regression_ and _Logistic regression_. The `HC1` covariance matrix is used to produce results consistent with Stata ## Minor changes * Moved coefficient formatting from summary.regress and summary.logistic to make result$coeff more easily accessible * Added F-score to _Model > Evaluate classification > Confusion_ ## Bug fixes * Fixed RSME typo * Don't calculate VIFs when stepwise regression selects only one explanatory variable # radiant.model 0.8.0.0 ## Major changes * Added Model > Naive Bayes based on e1071 * Added Model > Classification and regression trees based on rpart * Added Model > Collaborative Filtering and example dataset (data/cf.rda) * Various enhancements to evaluate (binary) classification models * Added Garson plot and moved all plots to the ANN > Plot tab ## Minor changes * Improved plot sizing for Model > Decision Analysis * Show progress indicators if variable acquisition takes some time * Expanded coefficient csv file for linear and logistic regression * Show dataset name in output if dataframe passed directly to analysis function * As an alternative to using the Estimate button to run a model you can now also use CTRL-enter (CMD-enter on mac) * Use ALT-enter as a keyboard short-cut to generate code and sent to _Report > Rmd_ or _Report > R_ * Improved documentation on how to customize plots in _Report > Rmd_ or _Report > R_ ## Bug fixes * Multiple tooltips in sequence in Decision Analysis * Decision Analysis plot size in PDF was too small * Replace histogram by distribution in regression plots * Fix bug in regex for overlapping labels in variables section of Model > Decision Analysis * Fixes for model with only an intercept (e.g., after stepwise regression) * Update Predict settings when dataset is changed * Fix for predict when using center or standardize with a command to generate the predictions * Show full confusion matrix even if some elements are missing * Fix for warnings when creating profit and gains charts * Product dropdown for Model > Collaborative filtering did not list all variables ## Deprecated * Use of *_each is deprecated