Questions tagged [hyperparameters]

Machine Learning engines use hyper-parameters for their learning phase behaviour. Different values thus modify the learner's model ability to generalise and avoid overfitting and/or bias towards a given DataSET training-phase observed values.

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can't pickle _thread.RLock objects when running tune of ray packge for python (hyper parameter tuning)

I am trying to do a hyper parameter tuning with the tune package of Ray. Shown below is my code: # Disable linter warnings to maintain consistency with tutorial. # pylint: disable=invalid-name # ...
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22 views

How to random search in a specified grid in caret package?

I wonder it is possible to use random search in a predefined grid. For example, my grid has alpha and lambda for glmnet method. alpha is between 0 and 1, and lambda is between -10 to 10. I want to use ...
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22 views

AUC of Random forest model is lower after tuning parameters using hypergrid search and CV with 10 folds

The AUC value I received without tuning the hyperparameter was higher. I have used the same training data could there be something I am missing here or some valid explanation. The data is an average ...
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37 views

How to determine optimal number of layers and activation function(s)

So I am working on the MNIST and Boston_Housing datasets using keras, and I was wondering how I would determine the optimal number of layers and activation functions for each layer. Now, I am not ...
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10 views

How to increase the number of True Positive and decrease the number of False positive in a MLP Classifier?

I have a simple MLPC Classifier : classifier = MLPClassifier(solver='lbfgs', alpha=1e-5, hidden_layer_sizes=(5, 2), random_state=...
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2answers
65 views

Hyperparameter tuning locally — Tensorflow Google Cloud ML Engine

Is it possible to tune hyperparameters using ML Engine to train the model locally? The documentation only mentions training with hyperparameter tuning in the cloud (submitting a job), and has no ...
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Bayesian Model-Based Optimization with priors

Is there any way to choose a priori parameters to implement some kind of transfer learning in MLR(Hyperopt) Bayesian optimization by Gaussian process? My intention is to use the last month ...
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16 views

Error in ctree_control … unused argument.. in R

I would like to add 2 hyper parameters to my ctree model. Here is the code that runs: library(party) dat1 <- fread('https://archive.ics.uci.edu/ml/machine-learning-databases/abalone/abalone.data',...
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13 views

scikit learn nested cross-validation: standardize outer cv test set based on scaler fitted in inner cv

suppose that you are using the classical nested cross-validation approach, where the inner loop is for example a grid search that optimize the parameters of a pipeline, and that pipeline also contains ...
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23 views

issues with fmin hyperparameter search result with hyperopt package in neural net model

I'm using hyperopt package to do hyperparameter search for my deep neural net. Below is my code. My dataset is too big for here. I'm using the iris dataset to show the issue. from sklearn import ...
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50 views

How to tune hyper parameters of LightGBM using bayesian optimization with rmse as metric

I'm trying to tune hyperparameters of a LightGBM model with RMSE as metric. lgbBO = BayesianOptimization(lgb_eval, { 'num_leaves': (24, 45), 'feature_fraction': (0.1, 0.9), 'bagging_fraction': (...
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36 views

optunity: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()

I'm not getting a toy example running, the following codes works fine import optunity import optunity.metrics import sklearn.svm %matplotlib inline import numpy as np import matplotlib.pyplot as plt ...
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1answer
48 views

Different models do incremental fit for RNN model while hyperparameter tuning

I am quite new to deep learning and I was studying this RNN example. After completing the tutorial, I decided to see the effect of various hyperparameters such as the number of nodes in each layer ...
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1answer
34 views

reinitializing keras model weights after each training pass

I noticed few similar questions similar to this one in Stack-overflow, but none has an answer .. I have a simple Keras model: def create_model(x_train, y_train, x_val, y_val): # building the ...
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54 views

How many iterations for model-based optimization (in mlrMBO) are necessary?

I would like to use model-based optimization within the mlr-Package in R (mlrMBO) to tune my hyperparameters. How many iterations are recommended here? I have read that the number of necessary ...
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1answer
21 views

Error when trying to do 'Hyperparameter Optimization' using Parallel Computing in MATLAB

I am trying to optimize the function fitrsvm. But when I set 'true' to the 'UseParallel' property, I am getting a error. This is the code: . . svm_model = fitrsvm(X,Y,... 'OptimizeHyperparameters','...
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63 views

specify scoring metric in GridSearch function with hypopt package in python

I'm using Gridsearch function from hypopt package to do my hyperparameter searching using specified validation set. The default metric for classification seems to be accuracy (not very sure). Here I ...
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102 views

GridSearch for doc2vec model built using gensim

I am trying to find best hyperparameters for my trained doc2vec gensim model which takes a document as an input and create its document embeddings. My train data consists of text documents but it ...
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27 views

How to get all metrics for a SageMaker Hyperparameter tuning job?

SageMaker does offer a HyperparameterTuningJobAnalytics object, but it only contains the final objective metric value. Here is example code. tuner = sagemaker.HyperparameterTuningJobAnalytics(...
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97 views

Keras hyperparameter tuning with hyperas using manual metric

I'm using the hyperas document example to tune the network parameters but based on f1 score instead of accuracy. I'm using the following implementation for f1 score: from keras import backend as K ...
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1answer
28 views

Tune Model Hyperparameters module on Azure ML delivering poor results

Results obtained from running 'Tune Model Hyperparameters' on Azure ML provide me a worse metric result (in my case RMSE) than the one I obtained running the algorithm with default parameters. In ...
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75 views

Best way to perform hyper-parameter search with Keras and GPUs?

I'm currently wanting to do a hyper-parameter search on a simple Keras neural net I have. My current plan is to use the sklearn GridSearchCV feature, and use keras.utils.multi_gpu_model to split it ...
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1answer
45 views

Hyperparameter metric in Google Cloud ML should contain the `val` prefix?

When defining the hyperparameter metric for Google Cloud ML I can use mean_squared_error, but should I be using val_mean_squared_error instead if I want it to be comparing the validation set accuracy? ...
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1answer
113 views

naive bayes accuracy increasing as increasing in the alpha value

I'm using naive Bayes for text classification and I have 100k records in which 88k are positive class records and 12krecords are negative class records. I converted sentences to unigrams and bigrams ...
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33 views

h2o Distributed Random Forest maximum features parameter

I am hyperparameter tuning a random forest and I would like to tune the parameter regarding the maximum features of each tree. By sklearn's documentation it is: The number of features to consider ...
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31 views

How to use google hyperparameter tuning tool on the cloud while performing the training on a local machine/PC

I was looking into the documentation about how to perform hyperparameter tuning using Google's Machine learning cloud. Therefore, what I found so far is tutorials about deploying models into the ML ...
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53 views

XGBoost converging on high depth and child weight

I'm using XGBoost for a time series forecasting problem. I've been performing gridsearch with time series cross validation. Oddly, the gridsearch is repeatedly converging on a high number of trees and ...
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28 views

Error when using MlBayesOpt in R: Infinite values of the Deviance Function,

When using the xgb_cv_opt function from the MlBayesOpt package in R I get the following error after four rounds. Error in GP_deviance(param_init_200d[i, ], X, Y, nug_thres, corr = corr) : Infinite ...
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51 views

Issue encountered with hyperas

I created a hyperas model for hyperparameters tuning like this: import keras from sklearn.preprocessing import StandardScaler from sklearn.model_selection import train_test_split from hyperopt ...
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55 views

Regarding hyperparameters optimization using Hyperas

In Hyperas, in order to load in data, we should use a def data() function, where data is split into train, test set. In this case, how do I implement cross validation? I do not see a cv=10 when ...
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156 views

Sklearn MLP Classifier Hidden Layers Optimization (RandomizedSearchCV)

I have the following parameters set up : parameter_space = { 'hidden_layer_sizes': [(sp_randint.rvs(100,600,1),sp_randint.rvs(100,600,1),), (sp_randint.rvs(100,600,1),)], 'activation': ['...
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1answer
356 views

Sklearn MLP Classifier Hyperparameter Optimization (RandomizedSearchCV)

I have the following parameters set up : parameter_space = { 'hidden_layer_sizes': [(sp_randint(100,600),sp_randint(100,600),), (sp_randint(100,600),)], 'activation': ['tanh', 'relu', '...
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41 views

Can I reference on a variable within a python dictionary? How do I programm a gridsearch for hyperparameters depending on each other?

I want to optimize Hyperparmeters for my customised sklearn model using randomizedsearchCV. Unfortunately there are two parameters depending on each other. Meaning: the size of n_unit is ...
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2answers
144 views

Is it okay to have non-trainable params in machine learning? [closed]

When building a model for machine learning, is it okay to have non-trainable params? Or does this create errors in the model? I'm confused as to what non-trainable params actually are and how to fix ...
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44 views

Exactly the same score values for different Hyperparamter Configuration sklearn RandomizedSearchCV

I am trying to find optimal Hyperparameter configuration for a sklearn pipeline of a customised unsupervised model which transforms my data into vector representations, which is then used in a ...
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1answer
19 views

Python - Using GridSearchCV with NLTK

I'm a little unsure as to how I can apply SKLearn's GridSearchCV to a random forest I'm using with NLTK. How to use GridSearchCV normally is discussed here, however my data is formatted differently to ...
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1answer
185 views

Exhaustive Grid Search for feature selection

I've been working with several ranking feature selection approaches. As you may know, these type of algorithms rank the features according to some specific method (e.g., statistical, sparse learning, ...
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153 views

Compare ways to tune hyperparameters in scikit-learn

This post is about the differences between LogisticRegressionCV, GridSearchCV and cross_val_score. Consider the following setup: import numpy as np from sklearn.datasets import load_digits from ...
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58 views

mlr: Tune model parameters with validation set

Just switched to mlr for my machine learning workflow. I am wondering if it is possible to tune hyperparameters using a separate validation set. From my minimum understanding, makeResampleDesc and ...
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27 views

Sklearn GridSearchCV Delay

I am using this code to do a grid search grid_search = GridSearchCV(gbm, param_grid, scoring='neg_mean_squared_error', n_jobs=-1, cv=predefined_split, verbose=2) grid_result = grid_search.fit(df[...
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1answer
157 views

Hyper-parameter optimization in tensorflow object detection API

Is there any way to specify hyper-parameter optimisation like Hyperopt or other in the config file of object detection API to fine tune the model?
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97 views

Python / GPyOpt: Optimizing only one argument

I´m currently trying to find the minimum of some function f(arg1, arg2, arg3, ...) via Gaussian optimization using the GPyOpt module. While f(...) takes many input arguments, I only want to optimize a ...
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1answer
30 views

both max_iter_predict=1 and max_iter_predict=10 in GaussianProcessClassifier give the same results

What is max_iter_predict responsible for? When I try different values (from 1 to 50), the result still doesn't change.
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27 views

Hyperparameter Optimization on unstable Network Performance

I am training a neural network on imagery data. It has an input two convolutional, one fully connected and one output layer. The activation functions are relus and I am using an Adam Optimizer and ...
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89 views

joblibsystemerror while hyperparameter tuning of catboost

I am trying to find the optimal values of Catboost classifier using GridsearchCV from sklearn. from catboost import CatBoostClassifier from sklearn.grid_search import GridSearchCV cb_model = ...
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27 views

CNN weights getting stuck

This is a slightly theoretical question. Below is a graph the plots the loss as the CNN is being trained. Y axis is MSE and X axis is number of Epochs. Description of CNN: class Net(nn.Module): ...
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83 views

Running h2o Grid search on R

I am running h2o grid search on R. The model is a glm using a gamma distribution. I have defined the grid using the following settings. hyper_parameters = list(alpha = c(0, .5), ...
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1answer
46 views

How to decide the range for the hyperparameter space in SVM tuning? (MATLAB)

I am tuning an SVM using a for loop to search in the range of hyperparameter's space. The svm model learned contains the following fields SVMModel: [1×1 ClassificationSVM] C: 2 ...
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2answers
172 views

Neural network immediately overfitting

I have a FFNN with 2 hidden layers for a regression task that overfits almost immediately (epoch 2-5, depending on # hidden units). (ReLU, Adam, MSE, same # hidden units per layer, tf.keras) 32 ...
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180 views

Hyperparameter tuning using MLR package

I want to tune hyperparameters for random forest using the MLR package. I have a few questions: 1) How do I decide which of the parameters I should tune? I heard something about keeping num.trees as ...