chainer_chemistry.models.Regressor

class chainer_chemistry.models.Regressor(predictor, lossfun=<function mean_squared_error>, metrics_fun=None, label_key=-1, device=-1)[source]

A simple regressor model.

This is an example of chain that wraps another chain. It computes the loss and metrics based on a given input/label pair.

Parameters:
  • predictor (Link) – Predictor network.
  • lossfun (function) – Loss function.
  • metrics_fun (function or dict or None) – Function that computes metrics.
  • label_key (int or str) – Key to specify label variable from arguments. When it is int, a variable in positional arguments is used. And when it is str, a variable in keyword arguments is used.
  • device (int) – GPU device id of this Regressor to be used. -1 indicates to use in CPU.
predictor

Predictor network.

Type:Link
lossfun

Loss function.

Type:function
y

Prediction for the last minibatch.

Type:Variable
loss

Loss value for the last minibatch.

Type:Variable
metrics

Metrics computed in last minibatch

Type:dict
compute_metrics

If True, compute metrics on the forward computation. The default value is True.

Type:bool
__init__(predictor, lossfun=<function mean_squared_error>, metrics_fun=None, label_key=-1, device=-1)[source]

Initialize self. See help(type(self)) for accurate signature.

Methods

__init__(predictor[, lossfun, metrics_fun, …]) Initialize self.
add_hook(hook[, name]) Registers a link hook.
add_link(name, link) Registers a child link to this chain.
add_param(name[, shape, dtype, initializer]) Registers a parameter to the link.
add_persistent(name, value) Registers a persistent value to the link.
addgrads(link) Accumulates gradient values from given link.
children() Returns a generator of all child links.
cleargrads() Clears all gradient arrays.
copy([mode]) Copies the link hierarchy to new one.
copyparams(link[, copy_persistent]) Copies all parameters from given link.
count_params() Counts the total number of parameters.
delete_hook(name) Unregisters the link hook.
disable_update() Disables update rules of all parameters under the link hierarchy.
enable_update() Enables update rules of all parameters under the link hierarchy.
get_device()
init_scope() Creates an initialization scope.
initialize([device]) Initialization of the model.
links([skipself]) Returns a generator of all links under the hierarchy.
load_pickle(filepath[, device]) Load the model from filepath of pickle file, and send to device
namedlinks([skipself]) Returns a generator of all (path, link) pairs under the hierarchy.
namedparams([include_uninit]) Returns a generator of all (path, param) pairs under the hierarchy.
params([include_uninit]) Returns a generator of all parameters under the link hierarchy.
predict(data[, batchsize, converter, …]) Predict label of each category by taking .
register_persistent(name) Registers an attribute of a given name as a persistent value.
repeat(n_repeat[, mode]) Repeats this link multiple times to make a Sequential.
save_pickle(filepath[, protocol]) Save the model to filepath as a pickle file
serialize(serializer) Serializes the link object.
to_cpu() Copies parameter variables and persistent values to CPU.
to_gpu([device]) Copies parameter variables and persistent values to GPU.
to_intel64() Copies parameter variables and persistent values to CPU.
update_device([device])
zerograds() Initializes all gradient arrays by zero.

Attributes

compute_metrics
local_link_hooks Ordered dictionary of registered link hooks.
update_enabled True if at least one parameter has an update rule enabled.
within_init_scope True if the current code is inside of an initialization scope.
xp Array module for this link.