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ssdtools 2.1.0.9000

  • Same as previous version.

ssdtools 2.1.0

CRAN release: 2024-10-21

  • Added ssd_xxmulti_fitdists() functions to accept object of class fitdists.
  • Set ssd_xxmulti(..., lnorm.weight = 0) (instead of 1) to avoid incorrect values with do.call("ssd_xxmulti", c(..., estimates(fits)) if fits does not include the log-normal distribution.

ssdtools 2.0.0

CRAN release: 2024-10-09

ssdtools v2.0.0, which now includes David Fox and Rebecca Fisher as co-authors, is the second major release of ssdtools.

Major Changes

The following changes are major in the sense that they could alter previous hazard concentrations or break code.

Model Fitting and Averaging

Modifications

The following arguments were added to ssd_hc() and ssd_hp()

  • multi_est = TRUE to calculate model averaged estimates treating the distributions as constituting a single mixture distribution (previously it was effectively FALSE).
  • method_ci = "weighted_samples" to specify whether to use "weighted_samples", "weighted_arithmetic", "multi_free" or "multi_fixed" methods to generate confidence intervals (previously it was effectively "weighted_arithmetic").

In addition the data frame returned by ssd_hc() and predict() now includes a column proportion with values between 0 and 1 as opposed to a column percentage with between 0 and 100.

Finally, with censored data confidence intervals can now only be estimated by non-parametric bootstrapping as the methods of parametrically bootstrapping censored data require review.

Minor Changes

The remaining changes are minor.

Model Fitting

Modifications

The following arguments of ssd_fit_dists() were changed to reduce the chances of the lnorm_lnorm bimodal distribution being dropped from the default set:

  • min_pmix = ssd_min_pmix(nrow(data)) so that by default min_pmix is 0.1 or 3/nrow(data) if greater.
  • at_boundary_ok = TRUE.
  • computable = TRUE.

These changes also allowed the min_pboot = 0.95 argument to be changed from 0.80 for all bootstrapping functions.

It is worth noting that the second two changes also reduce the chances of the BurrIII distribution being dropped.

In addition rescale = TRUE now divides by the geometric mean of the minimum and maximum positive finite values as opposed to dividing by the geometric mean of the maximum finite value to improve the chances of convergence although ssd_fit_bcanz() no longer rescales by default.

Other minor modifications to the model fitting functions include

  • estimates.fitdists() now includes weights in returned parameters as well as an all_estimates = FALSE argument to allow parameter values for all implemented distributions to be included.
  • delta = 7 instead of delta = 9.21 to ensure weight of included models at least 0.01.
  • seeds are now allocated to bootstrap samples as opposed to distributions (which results in a speed gain when there are more cores than the number of distributions).
  • lnorm and gompertz initial values are offset from their maximum likelihood estimates to avoid errors in optim().

The following functions and arguments were also added:

Fixes
Deprecations

The following functions and arguments were deprecated:

Plotting

Perhaps the biggest plotting change is that ssd_plot_cdf() now plots the average SSD together with the individual distributions if average = NA.

In addition, the following functions and arguments were added.

and the following functions deprecated

Data

The following data sets were removed

  • ccme_data and ccme_boron (available in ssddata package).
  • pearson1000 data set.

ssdtools 1.0.6

CRAN release: 2023-09-07

  • Fix CRAN ATLAS error

ssdtools 1.0.5

CRAN release: 2023-08-29

  • Stopped predict and hc/hp test errors on linux.

ssdtools 1.0.4

CRAN release: 2023-05-17

  • Added contributors.
  • Now tests table values to 6 significant figures.
  • Fixed bug that was not preserving NaN (returning NA_real_) for cumulative distribution and quantile functions.

ssdtools 1.0.3

CRAN release: 2023-04-12

  • Replaced size = 0.5 with linewidth = 0.5 in geom_hcintersect() and geom_xribbon().
  • Replaced aes_string() with aes() in examples (and internally).
  • Removed use of tidyverse package.
  • Now tests values to 12 significant digits.
  • Fixed description of ssd_hp() to be percent affected rather than percent protected.

ssdtools 1.0.2

CRAN release: 2022-05-14

  • Fixed bug that was producing estimates of 0 for lower HCx values for log-normal mixture model with rescaled data spanning many orders of magnitude.

ssdtools 1.0.1

CRAN release: 2022-04-10

ssdtools 1.0.0

CRAN release: 2022-04-01

ssdtools version 1.0.0 is the first major release of ssdtools with some important improvements and breaking changes.

Fitting

An important change to the functionality of ssd_fit_dists() was to switch from model fitting using fitdistrplus to TMB which has resulted in improved handling of censored data. Although it was hoped that model fitting would be faster this is currently not the case.

As a result of the change the fitdists objects returned by ssd_fit_dists() from previous versions of ssdtools are not compatible with the major release and should be regenerated.

BCANZ

As a result of an international collaboration British Columbia and Canada and Australia and New Zealand selected a set of recommended distributions for model averaging and settings when generating final guidelines.

The distributions are {r} > ssd_dists_bcanz() [1] "gamma" "lgumbel" "llogis" "lnorm" "lnorm_lnorm" "weibull"

The ssd_fit_bcanz() and ssd_hc_bcanz() functions were added to the package to facilitate the fitting of these distributions and estimation of hazard concentrations using the recommended settings.

Convergence

In the previous version of ssdtools a distribution was considered to have converged if the following condition was met

  1. stats::optim() returns a code of 0 (indicating successful completion).

In the new version an additional two conditions must also be met

  1. Bounded parameters are not at a boundary (this condition can be turned off by setting at_boundary_ok = TRUE or the user can specify different boundary values - see below)
  2. Standard errors are computable for all the parameter values (this condition can be turned off by setting computable = FALSE)

Censored Data

Censoring can now be specified by providing a data set with one or more rows that have

  • a finite value for the left column that is smaller than the finite value in the right column (interval censored)
  • a zero or missing value for the left column and a finite value for the right column (left censored)

It is currently not possible to fit distributions to data sets that have

  • a infinite or missing value for the right column and a finite value for the left column (right censored)

Rows that have a zero or missing value for the left column and an infinite or missing value for the right column (fully censored) are uninformative and will result in an error.

Akaike Weights

For uncensored data, Akaike Weights are calculated using AICc (which corrects for small sample size). In the case of censored data, Akaike Weights are calculated using AIC (as the sample size cannot be estimated) but only if all the distributions have the same number of parameters (to ensure the weights are valid).

Weighted Data

Weighting must be positive with values <= 1000.

Distributions

Previously the density functions for the available distributions were exported as R functions to make them accessible to fitdistrplus. This meant that ssdtools had to be loaded to fit distributions. The density functions are now defined in C++ as TMB templates and are no longer exported.

The distribution, quantile and random generation functions are more generally useful and are still exported but are now prefixed by ssd_ to prevent clashes with existing functions in other packages. Thus for example plnorm(), qlnorm() and rlnorm() have been renamed ssd_plnorm(), ssd_qlnorm() and ssd_rlnorm().

The following distributions were added (or in the case of burrIII3 readded) to the new version

  • burrIII3 - burrIII three parameter distribution
  • invpareto - inverse pareto (with bias correction in scale order statistic)
  • lnorm_lnorm log-normal/log-normal mixture distribution
  • llogis_llogis log-logistic/log-logistic mixture distribution

The following arguments were added to ssd_fit_dists()

  • rescale (by default FALSE) to specify whether to rescale concentrations values by dividing by the largest (finite) value. This alters the parameter estimates, which can help some distributions converge, but not the estimates of the hazard concentrations/protections.
  • reweight (by default FALSE) to specify whether to reweight data points by dividing by the largest weight.
  • at_boundary_ok (by default FALSE) to specifying whether a distribution with one or more parameters at a boundary has converged.
  • min_pmix (by default 0) to specify the boundary for the minimum proportion for a mixture distribution.
  • range_shape1 (by default c(0.05, 20)) to specify the lower and upper boundaries for the shape1 parameter of the burrIII3 distribution.
  • range_shape2 (by default the same as range_shape2) to specify the lower and upper boundaries for the shape2 parameter of the burrIII3 distribution.
  • control (by default an empty list) to pass a list of control parameters to stats::optim().

It also worth noting that the default value of

  • computable argument was switched from FALSE to TRUE to enforce stricter requirements on convergence (see above).
Subsets of Distributions

The following were added to handle multiple distributions

  • ssd_dists() to specify subsets of the available distributions.
  • delta argument (by default 7) to the subset() generic to only keep those distributions within the specified AIC(c) difference of the best supported distribution.

Burrlioz

The function ssd_fit_burrlioz() was added to approximate the behaviour of Burrlioz.

Hazard Concentration/Protection Estimation

Hazard concentration estimation is performed by ssd_hc() (which is wrapped by predict()) and hazard protection estimation by ssd_hp(). By default confidence intervals are estimated by parametric bootstrapping.

To reduce the time required for bootstrapping, parallelization was implemented using the future package.

The following arguments were added to ssd_hc() and ssd_hp()

  • delta (by default 7) to only keep those distributions within the specified AIC difference of the best supported distribution.
  • min_pboot (by default 0.90) to specify minimum proportion of bootstrap samples that must successfully fit.
  • parametric (by default TRUE) to allow non-parametric bootstrapping.
  • control (by default an empty list) to pass a list of control parameters to stats::optim().

and the following columns were added to the output data frame

  • wt to specify the Akaike weight.
  • method to indicate whether parametric or non-parametric bootstrap was used.
  • nboot to indicate how many bootstrap samples were used.
  • pboot to indicate the proportion of bootstrap samples which fitted.

It also worth noting that the

  • dist column was moved from the last to the first position in the output data frame.

Censored Data

Confidence intervals cannot be estimated for interval censored data.

Weighted Data

Confidence intervals cannot be estimated for unequally weighted data.

Goodness of Fit

The pvalue argument (by default FALSE) was added to ssd_gof() to specify whether to return p-values for the test statistics as opposed to the test statistics themselves.

Plotting

There have also been some substantive changes to the plotting functionality.

Added following functions

Made the following changes to ssd_plot()

  • added bounds (by default c(left = 1, right = 1)) argument specify how many orders of magnitude to extend the plot beyond the minimum and maximum (non-missing) values.
  • added linetype (by default NULL) argument to specify line type.
  • added linecolor (by default NULL) argument to specify line color.
  • changed default value of ylab from “Percent of Species Affected” to “Species Affected”.

Renamed - GeomSsd to GeomSsdpoint. - StatSsd to StatSsdpoint

Soft-deprecated - geom_ssd() for geom_ssdpoint(). - stat_ssd(). - ssd_plot_cf() for fitdistrplus::descdist().

Data

ssddata

The dataset boron_data was renamed ccme_boron and moved to the ssddata R package together with the other CCME datasets.

The ssddata package provides a suite of datasets for testing and comparing species sensitivity distribution fitting software.

Data Handling Functions

Added

Miscellaneous

  • npars() now orders by distribution name.
  • All functions and arguments that were soft-deprecated prior to v0.3.0 now warn unconditionally.

Generics

  • Implemented the following generics for fitdists objects

    • glance() to get the model likelihoods, information-theoretic criteria etc.
    • augment() to return original data set.
    • logLik() to return the log-likelihood.
    • summary.fitdists() to summarize.

ssdtools 0.3.7.9000

  • Same as previous version.

ssdtools 0.3.7

CRAN release: 2021-10-27

  • fix unequal indentation of Rmd ```

ssdtools 0.3.6

CRAN release: 2021-09-22

ssdtools 0.3.5

CRAN release: 2021-09-03

  • Bump requirement to R >= 4.1 because of actuar package.

ssdtools 0.3.4

CRAN release: 2021-05-14

  • Update Apache License url to https.

ssdtools 0.3.3

CRAN release: 2021-02-19

  • Increased requirement that R >= 3.5 due to VGAM.
  • Modified comma_signif() so that now rounds to 3 significant digits by default and only applies scales::comma() to values >= 1000.
  • Soft-deprecated the ... argument to comma_signif().

ssdtools 0.3.2

CRAN release: 2020-09-02

  • Fix moved URLs.

ssdtools 0.3.1

CRAN release: 2020-09-01

  • Internal changes only.

ssdtools 0.3.0

CRAN release: 2020-07-09

Breaking Changes

  • Soft-deprecated ‘burrIII3’ distribution as poorly defined.
  • Soft-deprecated ‘pareto’ distribution as poor fit on SSD data.

Major Changes

  • Reparameterized ‘llogis’ distribution in terms of locationlog and scalelog.
  • Reparameterized ‘burrIII3’ distribution in terms of lshape1, lshape2 and lscale.
  • Reparamaterized ‘burrIII2’ distribution in terms of locationlog and scalelog.
  • Reparamaterized ‘lgumbel’ distribution in terms of locationlog and scalelog.
  • Reparamaterized ‘gompertz’ distribution in terms of llocation and lshape.
  • Standardized handling of arguments for d,p,q,r and s functions for distributions.

Minor Changes

  • rdist() functions now use length of n if length(n) > 1.
  • Added slnorm() to get starting values for ‘dlnorm’ distribution.

Internal Changes

  • Switch to C++ implementation for distributions.

ssdtools 0.2.0

CRAN release: 2020-04-15

Breaking Changes

  • Changed computable (whether standard errors must be computable to be considered to have converged) to FALSE by default.
  • Enforces only one of ‘llogis’, ‘llog’ or ‘burrIII2’ in all sets (as identical).

Major Changes

  • Deprecated ‘burrIII2’ for ‘llogis’ as identical.
  • Replaced ‘burrIII2’ for (identical) ‘llogis’ in default set.
  • Fixed bug in rllog() that was causing error.
  • Fixed parameterisation of ‘lgumbel’ that was causing it to fail to fit with some data.

Minor Changes

  • Provides warning message about change in default for ci argument in predict function.
  • Only gives warning about standard errors not being computable if computable = TRUE.
  • Uses tibble package to create tibbles.
  • Removed dependency on checkr.

ssdtools 0.1.1

CRAN release: 2020-01-24

  • Fix test for CRAN R 3.5

ssdtools 0.1.0

CRAN release: 2020-01-13

Breaking Changes

  • Default distributions changed to ‘burrIII2’, ‘gamma’ and ‘lnorm’ from ‘gamma’, ‘gompertz’, ‘lgumbel’, ‘llog’, ‘lnorm’ and ‘weibull’.
  • Changed implicit behaviour of ssd_hc() and predict() where ci = TRUE to explicit ssd_hc(ci = FALSE) and predict(ci = FALSE).
  • Replaced shape and scale arguments to llog() with lshape and lscale.
  • Replaced location and scale arguments to lgumbel() with llocation and lscale.

Major Features

  • Added Burr Type-III Two-Parameter Distribution (burrIII2).
  • Added ssd_hp() to calculate hazard percent at specific concentrations.
  • Added ssd_exposure() to calculate proportion exposed based on distribution of concentrations.
  • Optimized predict() and added parallel argument.
  • Tidyverse style error and warning messages.

Minor Features

  • ssd_fit_dists() now checks if standard errors computable.
  • Added Burr Type-III Three-Parameter Distribution (burrIII3).
  • Added sdist(x) functionality to set starting values for distributions.
  • Added ssd_plot_cdf() to plot cumulative distribution function (equivalent to autoplot())
  • nobs() for censored data now returns a missing value.
  • Default ssd_fit_dists() distributions now ordered alphabetically.

Deprecated

  • Deprecated ssd_hc() argument hc = 5L for percent = 5L.
  • Deprecated dllog() etc for dllogis().
  • Deprecated ssd_cfplot() for ssd_plot_cf().

Bug Fixes

  • Fixed llog distribution with small concentrations.
  • Ensured concentrations below 1 have 1 significant figure in plots.

ssdtools 0.0.3

CRAN release: 2018-11-25

  • added citation
  • Added ssdtools-manual vignette
  • Changed predict() and ssd_hc() nboot argument from 1001 to 1000
  • Added hc5_boron data object
  • No longer export ssd_fit_dist() as ssd_fit_dists() renders redundant
  • geom_hcintersect() now takes multiple values
  • More information in DESCRIPTION
  • Added CRAN badge
  • Removed dependencies: dplyr, magrittr, plyr, purrr
  • Moved from depends to imports: VGAM, fitdistrplus, graphics, ggplot, stats
  • Moved from imports to suggests: tibble

ssdtools 0.0.2

CRAN release: 2018-10-14

  • Added contributors
  • Added hex

ssdtools 0.0.1

  • Initial Release