Questions tagged [scikit-learn]

scikit-learn is a machine-learning library for Python that provides simple and efficient tools for data analysis and data mining, with a focus on machine learning. It is accessible to everybody and reusable in various contexts. It is built on NumPy and SciPy. The project is open source and commercially usable (BSD license).

Filter by
Sorted by
Tagged with
0
votes
0answers
7 views

How can I identify important features (leaks) in text classification using sklearn.naive_bayes.MultinomialNB

I am interested in identifying potential leaks in some text for a binary classification task. The reason being my suspicion of the high accuracy(96%), so I would like to see which words weigh the ...
0
votes
0answers
8 views

Confusion Matrix only considering predictions > threshold

The output layer of my network is model.add(Dense(2, activation=activations.softmax)) outputting a one hot encoded category prediction. model.predict therefore returns n predictions like [9....
-1
votes
0answers
10 views

Stanford Stanza NER Consolidation

while working with Stanford Stanza I came to the following problem. I want to initialize a scikit-learn CountVectorizer with Tokenized Features from the Stanza package. In some cases I want to set ...
-1
votes
0answers
20 views

Feature importances KNN

I have tried to use the importance feature on my coding. but i got some error. how do i fix it? # get importance importance = gs_knn_best.feature_importances_ Traceback (most recent call last): ...
0
votes
0answers
6 views

cannot import name '__check_build' (most likely due to a circular import)

i do my first ML programming and get into trouble in first step in importing that is an error: ''' cannot import name 'check_build' from partially initialized module 'sklearn' (most likely due to a ...
0
votes
0answers
7 views

Manual implementation and Scikit learn's tfidf transformer show different outputs?

I've been trying to implement the tfidf transformer from scratch, similar to the one implemented by sklearn. My IDf vectors are same as the sklearn version, but when I multiply TF and IDF and ...
0
votes
0answers
13 views

Low R2 but high MAPE

I'm currently working on a project where I have to solve a regression based problem. I basically have to try different models and compare the accuracy of each one. Until now I've tried Decision Trees, ...
-1
votes
1answer
22 views

Oversampling for text classification in python?

I have a text data frame that I want to classify. But I need to do oversampling first. Please find sample data below: df=[['I am going to class today','I am going to class today','I am going to class ...
1
vote
1answer
15 views

How do you find which words a trained naive bayes classifier uses to make decisions?

I have created a Naive Bayes classifier that uses the text of tweets from different politicians to predict their party. I used the sklearn MultinomialNB implementation. Here is my implementation: ...
0
votes
1answer
9 views

TypeError: join() argument must be str or bytes, not 'TextIOWrapper

I have features and a target variable which I am wanting to generate a Decision Tree. However, the code is throwing an error. Since the 'out file' did not generate an error, I figured there wouldn't ...
0
votes
2answers
29 views

Argument must be a string or number [ Label Encoding ]

I am trying to append my data frame to new data frame but I am getting a 'Argument must be a string or number ' error. # The encoders le = LabelEncoder() ohc = OneHotEncoder() for col in ...
0
votes
1answer
24 views

Associate color with number in matplotlib scatterplot

I'm using sklearn to do a kmeans cluster based on some retail data. We're using this cluster behind the scenes to segment customers (e.g., Blue customers are great, green customers have such-and-such ...
3
votes
1answer
28 views

Different kernels for different features - scikit-learn SVM

I am trying to build a classifier using sklearn.svm.SVC but I would like to train the kernel separately on different subsets of features to better represent the feature space (as described here). I ...
0
votes
0answers
5 views

Does BalancedRandomForestClassifier from imblearn library resample test examples during prediction?

I use BalancedRandomForestClassifier from imblearn library to deal with imbalanced data via biased bootstrap resampling during the test time. I just wonder if the test samples are resampled (...
0
votes
0answers
11 views

TimeSeries NLP: Using ARIMA with CountVectorizer

I'm practicing on the kaggle news headline dataset on the DJIA prices as exported from Yahoo Finance: https://www.kaggle.com/aaron7sun/stocknews#Combined_News_DJIA.csv There are not many discussions ...
0
votes
0answers
16 views

No point was within bandwidth of any seed. Try a different seeding strategy or increase the bandwidth (Means-Shift)

I am using Sklearn function of Means-shift algorithm to estimate the required number of clusters of my SIFT descriptor features. ms = MeanShift(bin_seeding = True) ms.fit(X) labels = ms....
-2
votes
2answers
26 views

Logistic Regression sklearn with categorical Output

i have to train a model with logistic Regression in sklearn. I saw everywhere that the outcome has to be binary but my label is good, bad or normal. I have 12 features and i don't know how can i deal ...
0
votes
0answers
17 views

sklearn ColumnTransformer multiplecolumns

I have csv file with data ie: a_home_team,b_away_team,c_home_score,d_away_score,e_was_et Arizona Coyotes,Montreal Canadiens,1,4,False Colorado Avalanche,Florida Panthers,3,4,True loading data: ...
1
vote
1answer
28 views

Building n-grams for token level text classification

I am trying to classify multiclass data at the token-level using scikit-learn. I already have a train and test split. The tokens occurs in batches of the same class, e.g. first 10 tokens belonging to ...
0
votes
1answer
26 views

slightly different results on scikit-learn decision trees regression

The 2 codes below should IMO deliver exactly the same output, but they don't, even though the results differ only marginally. The train_test split is fixed with a specified random_state which AFAIU ...
0
votes
2answers
24 views

sklearn Pipeline: argument of type 'ColumnTransformer' is not iterable

I am attempting to use a pipeline to feed an ensemble voting classifier as I want the ensemble learner to use models that train on different feature sets. For this purpose, I followed the tutorial ...
3
votes
1answer
32 views

How to perform multiclass multioutput classification using lstm

I have multiclass multioutput classification (see https://scikit-learn.org/stable/modules/multiclass.html for details). In other words, my dataset looks as follows. node_name, timeseries_1, ...
0
votes
1answer
21 views

How to get a new pandas' column with clusters names/numbered according to its clustering group using scikit, TfidfVectorizer or not

I am new to scikit. I have a pandas DataFrame with 1 column containing text that I want to cluster. As an end result I would like to have my dataframe showing an extra column with the cluster gourp it ...
1
vote
2answers
15 views

Using scaler in Sklearn PIpeline and Cross validation

I previously saw a post with code like this: scalar = StandardScaler() clf = svm.LinearSVC() pipeline = Pipeline([('transformer', scalar), ('estimator', clf)]) cv = KFold(n_splits=4) scores = ...
1
vote
0answers
17 views

How to optimize use of n_jobs within nested sklearn objects?

I am running an ensemble model using StackingClassifier with xgboost and several other classifiers and would like to take advantage of the most number of cores available at all times (96 in my case). ...
0
votes
0answers
10 views

skopt's gp_minimize() function raises ValueError: array must not contain infs or NaNs

I am currently using the skopt (scikit-optimize) package for hyperparameter tuning of a neural network (I am trying to minimize -1* accuracy). It seems to run fine (and successfully prints to the ...
-2
votes
0answers
9 views

Confusion matrix,classification report and recall [closed]

I train my model using Linear regression then used to print the confusion matrix and classification report but i am not understanding how to read and understand the values and my model is how much ...
1
vote
1answer
11 views

How to view a regression tree? [duplicate]

I am wanting to visualize my decision tree applied to regression (only this plot for classification worked) what is going wrong that only the values appear but not the tree built itself?
0
votes
1answer
17 views

Resizing numpy arrays to use train_test_split sklearn function?

I am trying to splits my data using test_train_split from sklearn. My data consists of a numpy.ndarray for both images and facial points. However I have realized they are both different shapes with ...
1
vote
1answer
31 views

Pythonic way to access data from a tuple?

I am working with sklearn's partial_dependency function. I am aware of the plot_partial_dependency function, but I am not interested in using it. I want to, for each feature in my dataset, determine ...
0
votes
1answer
18 views

Tensorflow | ValueError: No gradients provided for any variable

I am trying to do a time series prediction with Bitcoin. I loaded my data and scaled it. When I tried to fit the data. It returns this error. There are others questions regarding the same error, but ...
0
votes
0answers
17 views

What is the best practice for wrtting custom module in pytorch?

class TfidfEmbeds(BaseEmbeds): # Input just placeholder def __init__(self, _=None): super().__init__() self.tfidf = TfidfVectorizer().fit([" ".join(i) for i in train_data]) ...
0
votes
1answer
28 views

How to improve performance for imbalanced dataset using SVM

I am trying to classify data at the token-level using scikit-learn. I already have a train and test split. The data is in the following \t seperated format: ----------------- token label ------...
0
votes
0answers
22 views

why do people fit gridsearchcv with train test set?

I have seen several kernels made by some people that they fit the train/test set into the gridsearchcv with the cv is not None. I don't get why do they do that i mean what i get is that cross ...
0
votes
2answers
21 views

Understanding Coefficient of Determination

I was going through the documentation to understand the Coefficient of Determination and from the document i got an understanding that Coefficient of Determination is nothing but R x R (correlation ...
0
votes
0answers
31 views

automatically spot the difference - pandas dataframe

I have a dataframe that has hundreds of columns and thousands of rows. I'm running a test that adds a new column onto the dataframe and it's supposed to match one of the others. df['test_A'] = ... ...
-1
votes
1answer
32 views

Updating an LGBM model with new data

I want to use additional data to 'update' an already trained Light Gradient Boosting Model (LGBM). Is there a way to do that? I am looking for an approach that uses the Skealrn API and thus can be ...
-1
votes
1answer
30 views

Assigning variables returned by Sklearn train_test_split()

I was confused about using train_test_split() in sklearn. Here is a code snippet of something I've tried: X = example_df.drop('features', axis=1) y = example_df['price'] y_test, X_train, X_test, ...
0
votes
1answer
12 views

Is there a way to define the fraction of each label I want in sci-kit learn cross validation?

I've written a simple Python script that uses sklearn.neural_network.MLPClassifier and sklearn.model_selection.GridSearchCV to make predictions about binary classification data, each point being ...
0
votes
1answer
19 views

Sklearn Voting ensemble with models using different features and testing with k-fold cross validation

I have a data frame with 4 different groups of features. I need to create 4 different models with these four different feature groups and combine them with the ensemble voting classifier. ...
0
votes
1answer
8 views

Is negative_mean_squared greater the more accuracy or less computes to more accuracy?

-0.567 -4.235 Which of the above negative_mean_squared error value computes to more accuracy?
-2
votes
1answer
13 views

There are the normalized values of the davies_bouldin_score coefficient in scikit-learn?

Is this measure normalized between 0 and 1? At https://scikit-learn.org/stable/modules/generated/sklearn.metrics.davies_bouldin_score.html I understand that it is not normalized but is this in scikit-...
0
votes
0answers
16 views

Does sklearn.multioutput.MultiOutputClassifier treats each label independently of one another?

Based on the doc on https://scikit-learn.org/stable/modules/multiclass.html#multiclass, there is a section where it states; Multilabel classification: classification task labelling each sample with x ...
-1
votes
0answers
13 views

How to make this classification report look justified, as it is not proper?

' precision recall f1-score support\n\n 0 1.00 1.00 1.00 93824\n 1 0.69 0.67 0.68 163\n\n accuracy ...
0
votes
0answers
8 views

Is there a limit for the input size of dtw_path?

from tslearn.metrics import dtw_path import pandas as pd from tslearn.utils import to_time_series I am using the dtw_path package to synchronize timeseries. The timeseries have a shape of (x,7), as ...
-1
votes
0answers
22 views

Using sklearn's make_pipeline output doesn't match between test dataframe and output dataframe

I have a simple sklearn pipeline defined as below and I create a train_test split to fit and test my model. The R2-score looks good as well as MAE and RMSE. The predictions are also close when I ...
-1
votes
0answers
18 views

Problem with xgboost and feature engineering [closed]

I've started working on an NLP project, which requires labeled data (68 categories). I already made a prediction model with xgboost, and I used tf-idf for feature engineering. I got 96% as training ...
0
votes
0answers
11 views

How to test a cross validated sklearn.linear_model trained with a TimeSeriesSplit

I can not really grasp the idea of how to test a model that was trained in a time series manner. In my case I have weekly data of an integer value that should either be classified as 0 or 1. I have no ...
0
votes
1answer
29 views

How do I fix Module not found error in Python?

In python when using plotly and sklearn I installed both packages and checked that their locations were added to my system environment variables but I still get the error "No module named 'plotly'" ...
0
votes
0answers
11 views

obtaining kernel characteristics from Kernel Density Estimation (sklearn)

In the sklearn example, the synthesized data has been sampled from the weighted sampling of two gaussian distributions with mean and std of [0,1] and [5, 1] responsible for 30% and 70% of the samples ...

1
2 3 4 5
393