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 ...

0
votes
0answers
8 views

plot_2d_separator complains when using DataFrame object (AttributeError was raised)

I have few data points X collected as DataFrame object. Classes Y is a numpy array constructed depending on the values of the last column of X. I would like to visualize the decision boundaries ...
0
votes
1answer
18 views

Spark to Pandas

I have 220GB of data. I have read it into spark dataframe as 2 columns : JournalID and Text. Now I have 27 lacks rows in my dataframe. With NGram class, I have added two more columns Unigram and ...
2
votes
2answers
29 views

How to convert image from (32,32,3) to (1,3072)?

(Regarding image classification) What is the easiest way to convert a 32x32x3 image to a 1x3072 array such that 1024 are red, 1024 are green and 1024 are blue?
-2
votes
0answers
9 views

when i import sklearn then pycharm show me an error? what's the reason [on hold]

Traceback (most recent call last): File "C:/Users/Shigri/PycharmProjects/Python Tuts1/file1.py", line 1, in <module> import sklearn File "C:\Users\Shigri\AppData\Local\Programs\Python\...
1
vote
0answers
31 views

How to save the model while training and resume later in sklearn

I am using sklearn GridSearchCV to find the best parameters for my model. It's taking too long to fit. Is there way we can save the model while fitting and resume later. I know we can use pickle to ...
0
votes
0answers
21 views

Why do I get different scores from, what I think, is the same operation?

I have a pipeline which consists of a feature union object (num_cat_union) and linear regression. When I apply the feature union to my data and then gridsearch for linear regression I get a RMSE of ...
0
votes
1answer
13 views

How do I use sklearn.metrics.pairwise pairwise_distances with callable metric?

I'm doing some behavior analysis where I track behaviors over time and then create n-grams of those behaviors. sample_n_gram_list = [['scratch', 'scratch', 'scratch', 'scratch', 'scratch'], ...
-1
votes
0answers
16 views

Updating sklearn LabelEncoder

I've used sklearn.LabelEncoder to encode some items, but when feed it with some new items it throws error: ValueError: y contains previously unseen labels So, is there any method to update the label ...
4
votes
1answer
48 views

Multiple predictions

I have a df where I need to predict the dependent variable (numeric) for each day in the next 7 days. The train data is like: df.head() Date X1 X2 X3 Y ...
0
votes
1answer
11 views

Recursive feature elimination combined with nested (leave one group out) cross-validation in scikit

I want to do a binary classification for 30 groups of subjects having 230 samples by 150 features. I founded it very hard to implement especially when doing feature selection, parameters tunning ...
0
votes
1answer
8 views

How to extract and transfer learnt parameters in svm(scikit)?

I have trained SVM image classifier using sklearn. Assignment requirement is to make separate "prediction.py" function which takes an image and classifies it. Generally it's done by clf.predict() but ...
-1
votes
0answers
12 views

Sklearn pipeline - how to process data from multiple sources and drop rows

I am currently working a lot with sklearn pipelines to structure my machine learning workflows. However, I miss 2 very important features for which I cannot find a solution, even after extensive ...
0
votes
1answer
27 views

LeaveOneOut to determine k of knn

I want to know the best k for k-nearest-neighbor. I am using LeaveOneOut to divide my data into train and test sets. In the code below I have 150 data entries, so I get 150 different train and test ...
0
votes
0answers
7 views

Enron classification - reading emails the wrong way

currently i'm working a spam filter using sklearn, i'm wondering if i'm reading the dataaset in correctly? Using #3 bag of words for ham, spam and both #Explain fit_transform bag_of_words = ...
0
votes
1answer
24 views

How to choose the number of components PCA scikitliear

I'm trying to decompse my columns using PCA . I'm finding some difficulties about how to choose my n_components of the function PCA using scikit learn in python. I did this sc = StandardScaler() Z ...
1
vote
1answer
27 views

“TypeError: Singleton array cannot be considered a valid collection” using sklearn train_test_split

TypeError: Singleton array array(0.2) cannot be considered a valid collection. X = df.iloc[:, [1,7]].values y= df.iloc[:,-1].values from sklearn.model_selection import train_test_split X_train, ...
-1
votes
0answers
20 views

difference between .fit() and .cross_validate() - python

I have a dataframe of four numeric columns and they are X1, X2, X3, Y. I split it in 80% train and 20% test. There is no nan in the whole dataframe and now I need to create the model and evaluate it (...
0
votes
1answer
32 views

Confidence level smaller than 0 with python linear regression

My have the share prices df2[x] below as Y: 2018-09-05 6.22 2018-09-06 6.19 2018-09-07 6.22 2018-09-10 6.24 2018-09-11 6.24 ... 2018-12-05 4.65 2018-12-14 0.00 short position ...
-1
votes
0answers
15 views

With sklearn CountVectorizer getting TypeError integer argument expected, got float

I am building a document-term matrix within my virtual machine in a HathiTrust Data Capsule using scikit-learn's method CountVectorizer. Given the following lines of code, where meta[HATHI] is list of ...
-4
votes
0answers
21 views

Can I run predict method of sklearn SVR by myself?

I know that SVR even in sklearn follows this equation: ![SVR](https://chart.googleapis.com/chart?cht=tx&chl=y_n=\sum_{i\in%20SV}\alpha_ik(\bf{x}_i,\bf{x}_n)%20+\b), (intercept b doesn't show up, ...
-4
votes
0answers
11 views

Compute the score of naive bayes (GaussianNB) from this code

from sklearn import svm from sklearn.multiclass import OneVsRestClassifier clf = OneVsRestClassifier(svm.SVC(gamma=0.01, C=100., probability=True, class_weight='...
3
votes
2answers
31 views

How to get N numbers of data points which are nearest from a cluster's center?

I want to get N nearest data points from center (based on Euclidean Distance) in each cluster after deploying K-means algorithm. I am able to get the indices of data points using np.where(km.labels_ =...
0
votes
0answers
26 views

ImportError: cannot import name libsvm on importing svm

I am facing an error when I am trying to import svm: from sklearn import svm Error: ImportError: cannot import name libsvm I have tried uninstalling and reinstalling sklearn, but the error still ...
2
votes
2answers
55 views

Why can't I predict new data using SVM and KNN?

I'm new to machine learning and I just learned KNN and SVM with sklearn. How do I make a prediction for new data using SVM or KNN? I have tried both to make prediction. They make good prediction only ...
0
votes
1answer
32 views

not able to read a saved machine learning model in flask on a remote Ubuntu server

I have saved a Machine Learning model as 'finalized_model.sav' which I am using on a flask app. When I am running the below lines of code on my local desktop, it is running perfectly but running the ...
-3
votes
1answer
14 views

recommendation for clustering algorithm for time-series data

I am new to cluster analysis and am using the Python sklearn.cluster module to analyze my data. I am not having any luck so far so I want to ask for a recommendation. My data consists of event ...
0
votes
1answer
22 views

using featuretools to create “time window features”

I was trying to automate the creation of "row window features", using featuretools package but I couldn't find an easy way to create them. What I mean with "row window features" is that for each ...
0
votes
1answer
27 views

Getting error on running the trained Machine Learning model

I have a dataset containing columns 'studentDetails' and 'studentId'. I trained my model on this dataset and saved it. When I am training the model and saving the trained model, then loading the ...
0
votes
1answer
14 views

How to disable ConvergenceWarning using sklearn?

I'm using GridSearchCV to optimize hyper-parameters for SVM. I set the maximum number of iterations because I can't wait several hours to get result. I know there will be convergence warnings. I just ...
0
votes
2answers
55 views

Counting frequency of keywords with sklearn only yields zeros

I am trying to run a Python code that counts the frequency of certain pre-defined keywords in a text. However, I only get zeros when running the script posted below (i.e. the script does not count any ...
-2
votes
0answers
28 views

Apply only the transformers into from a sklearn Pipeline [on hold]

I would like to fit a sklearn Pipeline and then apply only the transformers. Something along the lines of: from sklearn.preprocessing import StandardScaler pip = Pipeline([ ('scaler', ...
0
votes
1answer
43 views

Should I build a different model for each subset

I have a dataset which has categorical variable class I am trying to solve a regression problem I am not understanding whether I should build a model on entire dataset and consider variable class as ...
1
vote
1answer
21 views

Scale values in range (0, 1)

I want to scale my values in range (0, 1), but without getting the values 0 and 1, like at MinMax Scaler. I was thinking that probably adding something to the MinMax Scaler function like: x_scaled[...
-3
votes
0answers
16 views

Python-sklearn: splitting new table

Sklearn splits csv or other tables for testing. Before that how could I split table buy a rule? For example 'I want to reduce records in a new table by criteria of student_name column'.
-1
votes
1answer
14 views

Print top terms per cluster in AffinityPropagation in Sklearn

I have very simple AffinityPropagation model function for some text clustering: def fit_affprop(X, damping=0.5): affprop = AffinityPropagation(affinity='euclidean', damping=damping) affprop....
2
votes
0answers
32 views

How to combine additional features with tfidf vector

I am using the following method to train a linear regressor to predict retweets of tweets. I am using 'text' as the feature and 'retweet_count' as the target to be predicted. However, I have several ...
0
votes
0answers
25 views

Spyder throws AttributeError: 'NoneType' object has no attribute 'modules' when importing DBSCAN 3 times

I am using Spyder 3.3.2 and scikit-learn Version: 0.20.1. I am running a script that starts importing DBSCAN by: from sklearn.cluster import DBSCAN The first two times I run the script, it works ok....
0
votes
0answers
26 views

Can sklearn.preprocessing.KBinsDiscretizer with strategy='quantile' drop the duplicated bins?

I used sklearn.preprocessing.KBinsDiscretizer(n_bins=10, encode='ordinal') to discretize my continuous feature. The strategy is 'quantile', by defalut. But my data distribution is actually not ...
1
vote
0answers
49 views

RuntimeError: dictionary changed size during iteration when I load sklearn model

When I attempt to load a sklearn logistic regression model from pickle using the following code def _feed(gpu): log_info("prediction process started") model = pickle.load(open(model_path, 'rb'...
0
votes
0answers
20 views

How to pass spatio-temporal data into sklearn models?

I am new to machine learning and trying to master my first steps with scikit-learn. I would like to calculate an interpolation, based on spatio-temporal sensor data. I have a larger number of ...
0
votes
1answer
40 views

Apply the quartile cuts from the train data to the test data

Are there any existing python functions to get the quartile cuts from the train data and apply to test data. import pandas as pd import numpy as np d = {'col1': np.arange(1, 100, 1)} train = pd....
-1
votes
0answers
9 views

dbscan cluster count sensitivity to parameters

I used sklearn's implementation of dbscan on one-dimensional data (actually a time series of producer price index values between april 2008 and dec 2014 from quandl). When playing around with eps and ...
0
votes
0answers
70 views

Python Linear Regression always 100 % accuracy

Hey guys i have an issue with my exam project. I am trying to create a very simple Stock predicter, using a web-api called Iextrading, that returns me the stocks for Telsa the last 5 years in json ...
3
votes
1answer
29 views

Using ideas from HashEmbeddings with sklearn's HashingVectorizer

Svenstrup et. al. 2017 propose an interesting way to handle hash collisions in hashing vectorizers: Use 2 different hashing functions, and concatenate their results before modeling. They claim that ...
-1
votes
0answers
32 views

Weight sharing for logistic regression

Is there any way to enable weight sharing in logistic regression model in sklearn? Example: Say I have a dataframe which consists of 10,000 samples with 5 features and 10 classes, I train with cross-...
3
votes
1answer
48 views

Linear regression in scikit-learn

I started learning maching learning on Python using Pandas and Sklearn. I tried to use the LinearRegression().fit method : import numpy as np import pandas as pd import matplotlib.pyplot as plt ...
0
votes
1answer
34 views

Linear Regression without Least Squares in sklearn

I am working with the LinearRegression module from sklearn.linear_model and I want to compute the parameters of my Linear Regression model without using Least Squares. For example, I would like to ...
-4
votes
1answer
47 views

How can solve this issue “cannot be considered a valid collection”

I'm running this code below but I'm getting an error that may probably come from this line of code X_train, X_test, y_train, y_test = train_test_split(X, y, random_state=random_state, test_size=...
0
votes
0answers
51 views

getting different scaling in sklearn grid search

I'm trying to set a GridSearchCV in sklearn that uses a TimeSeriesSplit with data normalized on the training set. What I did is to create a TransformerMixin called DivisorTransform that gets the ...
1
vote
2answers
25 views

KNN query data dimension must match training data dimension

I'm trying Bag of Words problem with a dataset which has two columns - summary and solution. I'm using KNN for it. The train dataset has 91 columns and the test dataset has 15 columns. To generate ...