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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How to tune hyperparameters of SVM — Is splitting the data set into train and validation applicable in unsupervised learning?

I am having a tough time implementing all the steps of setting up support vector machine (SVM) for unsupervised learning. My data set is labelled but for educational purposes I am learning ...
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16 views

Process finished with exit code 134 (interrupted by signal 6: SIGABRT) in Scikit Optimize

I am doing a hyperparameter optimization task on a LSTM using the gp_minimize package of the scikit optimize library. My code logic does not have any bugs and is working perfectly on it's own. When I ...
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17 views

Keras bayesian hyperparameter optimization issue

I am trying to make a optimize a seeded model that uses this database: https://www.kaggle.com/aaron7sun/stocknews I tried following the instructions in here: How to use hyperopt for hyperparameter ...
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23 views

Why 'max_bin' doesn't affect lightgbm CV error?

I am using lightgbm for regression with 'rmse' metrics. I want to tune 'max_bins' for regularisation. when change 'max_bin' I didn't see any changes in CV error. I tried until 2 still did not observe ...
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17 views

How to handle Hyperopt AssertionError in adaptive_parzen_normal?

I am using hyperopt to search over a space to help tune the hyperparamters of a neural network. The space I am searching over is: space = { 'latent_dim1': hp.qloguniform('latent_dim1', np.log(30)...
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18 views

How to implement Scikit GridSerachCV with fit_generator in keras

I want to perform a hyperparameter sweep using scikit-wrapper GirdSearchCV on this GitHub repository. For which I am trying to run GridSearchCV on using the scikit-wrapper: from sklearn....
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22 views

Amazon SageMaker hyperparameter tuning error for built-in algorithm using the Python SDK

When using the Python SDK to start a SageMaker hyperparameter tuning job using one of the built-in algorithms (in this case, the Image Classifier) with the following code: # [...] Some lines elided ...
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27 views

Is it right to run a k-fold cross validation multiple times on different split of my dataset?

I have to find the best hyperparameter C and gamma of an SVM(rbf kernel). I use a for loop to find the best parameters c and gamma using different seed each time. Then i use as best parameters the ...
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43 views

(TalosReturnError) Talos Make sure that input model returns 'out, model' model.fit()

I am trying to tune my hyper parameters of CNN model by using talos library but I am getting error of make sure function return model and out. But in my function in am returning my both of the ...
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26 views

Randomized Search Get param not implemented

I am training my cnn model on some images and want to add randomized search for hyper parameter optimization but I am having trouble in using randomized search of hyper parameters. I am sharing my ...
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34 views

Fast Grid Search for Holt-Winters alpha/beta/gamma parameters

I have implemented the Holt-Winters model via Statsmodels in my script and I can make predictions with it but I manually set the alpha beta and gamma hyperparameters. According to you, what would be ...
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LinearSVC hyperparameters Optimization using HyperOpt on python

i am try to optimize a LinearSVC hyperparameter C by using HyperOpt library on python and i don't know which range to put to the C. I am using the loguniform distribution implemented in the HyperOpt ...
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25 views

Different validation accuracy in different training sessions in keras [duplicate]

I trained a keras model on Mnist keeping the training and model hyperparameters same. The training and validation data was exactly same. I got five different accuracies- 0.71, 0.62, 0.59, 0.52, 0.46 ...
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Hyperparameter optimization for Embedding layer network with keras functional API(model = (input,output))?

I want to do hyperparameter optimization for a neural network containing embedding layers and a dense network, there are two functions, one to preprocess the data which is a data frame and it divides ...
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2answers
36 views

cloud_ml_engine scaleType implementation

I'm trying to implement the functionality of google cloud ml engine's hyperparameter tuning using scikit-optimize (skopt). I'm unsure how to consistently convert ml-engine's scaleType to skopt.space....
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63 views

How to save the best hyperopt optimized keras models and its weights?

I optimized my keras model using hyperopt. Now how do we save the best optimized keras model and its weights to disk. My code: from hyperopt import fmin, tpe, hp, STATUS_OK, Trials from sklearn....
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Hyperparameters obtained from Scikit-Optimize run outside of optimazation dosen't provide same RMSE

I have used the scikit-optimize package to do a Bayesian optimization using the Gaussian process (using gp_minimize function). I already did the optimazation using the validation set and wrote the ...
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71 views

ClientError: train channel is not specified with AWS object_detection_augmented_manifest_training using ground truth images

I have completed a labelling job in AWS ground truth and started working on the notebook template for object detection. I have 2 manifests which has 293 labeled images for birds in a train and ...
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Grid search with GridSearchCV - scikit-learn (Hyperparameter Tuning) using ImageDataGenerator (keras)?

How can I perform hyperparameter tuning when my image inputs are through ImageDataGenerator? My training and test data are not in the form of arrays (X_train, Y_train etc). I want to tune my ...
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1answer
67 views

Not all points are within the bounds of the space error in Scikit-Optimize

I am attempting to do a hyper-parameter optimization task on a LSTM model (purly Tensorflow) using the scikit optimize package. I am using the Bayesian optimization method using Gaussian Processes (...
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42 views

Which aquasition function to use for gp_minimize in Scikit-Optimize?

I am trying to perform a hyper-parameter optimization task on a LSTM (purely Tensorflow) using the Scikit-Optimize package. I am not familiar with Bayesian optimization or Bayesian functions. This ...
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2answers
52 views

purpose of 'num_samples' in Tune of Ray package for hyperprameter optimization

I am trying to perform a hyper parameter optimization task for a LSTM (pure Tensorflow) with Tune. I followed their example on the hyperopt algorithm. In the example they have used the below line ...
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23 views

AWS Sagemaker autotune job fails for objective=multi:softmax but works fine for objective=binary:logistic

I am experimenting with AWS Sagemaker automatic model tuning which optimises hyperparameters and gives the best model. What I have: I am able to create and deploy a model successfully for objective=...
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1answer
65 views

ap_uniform_sampler() missing 1 required positional argument: 'high' in Ray Tune package for python

I am trying to use the Ray Tune package for hyperparameter tuning of a LSTM implemented using pure Tensorflow. I used the hyperband scheduler and HyperOptSearch algorithms for this and I am also using ...
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20 views

how to compare two hyper parameters in a hierarchical model?

In one hierarchical model, we have two hyer parameters: dnorm(A_mu, 0.25^-2) and dnorm (B_mu, 0.25^-2). In this case, 0.25 is the sd, I use the fixed number. A_mu and B_mu represent the mean of group ...
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36 views

AWS Blazing text supervised hyperparameter not logging objective metric

I am running a Hyperparameter tuning job using Sagemakers built in training image for Blazing text (blazingtext:latest) however when my jobs complete they only log out #train accuracy: ... 06:00:36 ##...
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25 views

Data split in train, validation and test in subject independent 10-fold cross validation?

I am working on emotion analysis. Recent papers in this area perform subject independent k-fold cross validation. But I have not seen any paper which uses validation set. They only mention train set ...
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1answer
103 views

qloguniform search space setting issue in Hyperopt

I am working on using hyperopt to tune my ML model but having troubles in using the qloguniform as the search space. I am giving the example from official wiki and changed the search space. import ...
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2answers
43 views

Hyper-parameter tuning when you don't have an access to the test data

I'm building models for SQUAD (Stanford Question Answering) dataset (https://rajpurkar.github.io/SQuAD-explorer). Stanford doesn't release its test set. It only provides us with training and dev ...
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1answer
48 views

LSTM hyperparameters not available in model.summary() after loading model

I try to load a LSTM model (created by Keras) after using the command: model_json = model.to_json() with open("model.json", "w") as json_file: json_file.write(model_json) with the ...
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1answer
67 views

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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44 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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1answer
30 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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1answer
44 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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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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173 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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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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43 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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40 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
51 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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46 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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1answer
62 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
36 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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1answer
130 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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1answer
156 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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37 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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187 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
38 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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97 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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67 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? ...