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 ...

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7 views

How to use feature selection and dimensionality reduction in Unsupervised learning?

I've been working on classifying emails from two authors. I've been successful in executing the same using supervised learning along with TFIDF vectorization of text, PCA and SelectPercentile feature ...
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0answers
11 views

Predicting future values based on date variable? Scikit-learn

I want to predict a future number of events based on some historical data. Am I doing this correctly? My data looks like this: Date_Order is just a count of each date in order. So the first date in ...
1
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0answers
8 views

error with persisted sklearn.feature_extraction.text.TfidfVectorizer

I persisted a TfidfVectorizer using the module joblib. The object that I run through the method fit_transform was a list of strings. The resulting matrix had a dimensionality of 263744 columns. I am ...
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1answer
15 views

Custom kernels for SVM, when to apply them?

I am new to machine learning field and right now trying to get a grasp of how the most common learning algorithms work and understand when to apply each one of them. At the moment I am learning on how ...
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1answer
31 views

Sorting in sparse matrix (Python 2.*)

I'm solving a task in coursera and get stuck with sorting in sparse matrix. The problem is: i make a support vector classification (sklearn.svm.SVC) clf = SVC(C=1, kernel='linear', ...
2
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1answer
23 views

The necessity of feature scaling before fitting a classifier in scikit-learn

I used to believe that scikit-learn's Logistic Regression classifier (as well as SVM) automatically standardizes my data before training. The reason I used to believe it is because of the ...
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0answers
20 views

What pre-processing methods do I need for Timestamp, Duration data for use with DBSCAN?

I have a month's worth of data that is in the form of: timestamp duration 0 2015-10-01 00:00:08 2912.0 1 2015-10-01 00:48:58 30.0 2 2015-10-01 00:49:58 229.0 3 2015-10-01 ...
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1answer
21 views

How to handle negative values of cosine similarities

I computed tf-idf of my documents based of terms. Then, I applied LDA to reduce the dimensionality of the terms: tfidf_vectorizer_desc = TfidfVectorizer(min_df=3, max_df=0.8, use_idf=True, ...
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0answers
13 views

How to install scikit-learn with version = 018.dev0 with pip?

I have installed scikit-learn by following command using pip pip install scikit-learn When I check the version its. >>> sklearn.__version__ '0.17.1' The installed scikit-learn and by ...
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0answers
8 views

Using SelectKBest on Text Data

I've got a corpus, and in order to improve the accuracy of some classifiers I am using, I would like to use SelectKBest for feature selection. Is there someway I could fit SelectKBest into my ...
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1answer
5 views

How can I pickle the best model from a grid search?

After I perform grid search CV, I would like to pickle the best model to use in the future. When I do something like grid_search = GridSearchCV(SVC_clf, parameters, n_jobs=-1, verbose=1, cv = 3) gs ...
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0answers
17 views

Scaling t-SNE to millions of observations in scikit-learn

t-SNE can supposedly scale to millions of observations (see here), but I'm curious how that can be true, at least in the Sklearn implementation. I'm trying it on a dataset with ~100k items, each with ...
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1answer
19 views

Remap kmeans labels_ based on sorted cluster_centers_

I'm using KMeans to cluster records in a data set based off of one column, cards, which is an int. However, the cluster labels returned are in an non-intuitive order (which is expected since it's an ...
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1answer
26 views

In Python, Need an Efficient way to map kdtree indexes to the values

I am using kdtree from scikit-learn with a very large data set. I can get kdtree to do the query in a somewhat reasonable time (20 minutes on my machine) but I can't map the indexes to the values ...
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1answer
26 views

Scikit-learn R2 always zero

I'm trying to test my Scikit-learn machine learning algorithm with a simple R^2 score, but for some reason it always returns zero. import numpy from sklearn.metrics import r2_score prediction = ...
1
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1answer
18 views

Python sklearn.linear_model: LinearRegression() ValueError occured when .predict()

My training matrix X has shape (5182, 19231) and y is a list of 1s and 0s with length 5182. My test matrix has shape (496, 5477). I stored them in seperate pickle files. Here is my code: def ...
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2answers
35 views

Pandas - Replace NaN with two different values

I'm trying to replace my NaN value in my DataFrame. I would like to replace 60% of the NaN by one value and 40% by another. I read the documentation of fillna method but I don't find. Any idea ? ...
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0answers
15 views

Equivalent package in JAVA for Python Scikitlearn Preprocessing

Python has this awesome package sklearn.preprocessing which offers pretty useful function to preprocess input data. I was wondering if there is an equivalent for this package in JAVA? Thanks
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3answers
39 views

About the specific shapes of learning curves

My model throws up learning curves as I have shown below. Are these fine? I am a beginner and all across the internet I see that as training examples increase the Training score should decrease and ...
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0answers
11 views
-1
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0answers
33 views

Which python model would fit this data?

I have the following data set: state gender age amount 1 0 20 0 1 0 30 0 1 1 40 100 1 1 50 100 0 0 60 100 0 0 70 100 0 ...
0
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1answer
24 views

Unsupervised Learning Grid Search using Scikit-Learn

I am getting an error for the following code: import numpy as np import matplotlib.pyplot as plt from sklearn.datasets import load_digits from sklearn.neighbors import KernelDensity from ...
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1answer
6 views

Python sklearn classification: customize objective score function

How to customize the score function in sklearn package? For example, in the binary classification problem, instead of setting score as "percentage of all correctly predicted labels", set it as ...
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0answers
20 views

Non-linear regression for a 32 variable dataset

I have a dataset with 32 variables and want to find an algorithm to connect these 32 variables to the the 33rd column (result). I tried linear regression but it's far too simple not a good fit. ...
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0answers
8 views

Scikitlearn-tfidfvectorizer - Save output as Python dictionary

Could anyone please help me out? I want to save the output of tfidfvectorizer as Python dictionary. Basically in the below format. Is there any method available? Thanks in advance! [1, 2, 3],[’a’, ...
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1answer
12 views

f1 score of all classes from scikits cross_val_score

I'm using cross_val_score from scikit-learn (package sklearn.cross_validation) to evaluate my classifiers. If I use f1 for the scoring parameter, the function will return the f1-score for on class. To ...
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0answers
11 views

Are predict and transform methods over scikit transformers and estimators thread safe?

We are saving a model generated by fitting training data over a scikit Pipeline. The pipeline consists of Union of vectorizers, and finally a LR classifier. We intend to deserialize the model saved ...
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0answers
17 views

Project linear discriminants to actual units scikit-learn

Based on this example for the Iris dataset, is it possible to project the LDs back to the original units? In this case the units are centimeters (cm) of petals and sepals. import matplotlib.pyplot ...
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2answers
32 views

How to change parameters of a scikit learn function dynamically i.e. find best parameter

I am trying to do dimensionality reduction using PCA function of sklearn, specifically from sklearn.decomposition import PCA def mypca(X,comp): pca = PCA(n_components=comp) pca.fit(X) ...
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0answers
23 views

One class SVM, got all -1

I am doing a binary classification that only returns "yes" or "no" for the image. As I only got iamge of one class, so I wanna classify between "Target" and " Outlier". For example, I am classifying ...
1
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1answer
36 views

ValueError: cannot copy sequence with size 821 to array axis with dimension 7

So I fed the testing data, but when I try to test it with clf.predict() it just gives me an error. So I want it to predict on the data that i give, which is the last close price, the moving averages. ...
1
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1answer
27 views

scikit-learn / Gaussian Process is not scale invariant

I'm testing Gaussian Process regression with the library scikit-learn and am unhappy with the confidence intervals it gives me. That made me realize that these were not scale invariant: if the ...
1
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1answer
29 views

Access the underlying (tree_) object of a single tree in a Random-Forest model (Python, scikit-learn)

I am working on project where I need to convert a Random Fores model to a rule-based model or (if-then) based model. I have now created my model and it is well tuned. The problem I face is that I ...
1
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1answer
20 views

How to get the first canonical correlation from sklearn's CCA module?

In scikit-learn for Python, there is a module call cross_decomposition with a canonical correlation analysis (CCA) class. I have been trying to figure out how to give the class 2 multidimensional ...
0
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1answer
45 views

Python: cross validation The truth value of an array with more than one element is ambiguous. Use a.any() or a.all() [on hold]

I am using this function to do cross-validation sklearn.cross_validation.train_test_split p = 0.3 for i in range(0, trials): x, y = cross_validation.train_test_split(A, test_size = p, ...
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0answers
17 views

Gridsearchcv with skflow/TF learn runs forever even if grid is just one point

I am trying to do a gridsearch over steps, learning_rate and batch_size of a DNN regression. I've tried to do this with the simple example, the Boston dataset shown here boston example however, I ...
0
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0answers
19 views

Testing unsupervised KMeans

I'm using the sklearn tutorials on text clustering to find any interesting grouping on reviews of beers. So far it has been working out fine for me, however when it comes to testing, or finding the ...
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0answers
22 views

Error in OLS using statsmodels

I am trying to do a simple OLS regression. It worked for a long time, but now suddenly nothing works. My dataset looks like this (just an exert): Then I try this regression: m1 = ...
1
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0answers
30 views

How do perform grid search for xgboost in python?

I have some classification problem in which I want to use xgboost. I have the following: alg = xgb.XGBClassifier(objective='binary:logistic') And I am testing it log loss with: ...
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0answers
16 views

Spark+Sklearn : How to create a predictive model using both of frameworks?

Due to limited visualization features on Spark like displaying number of samples per node , I am trying to create a model using Sklearn to generate the decision tree, and Spark as a dataset and ...
0
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1answer
26 views

Confusion Matrix changing with every interation

I am constructing a Confusion Matrix for six classes and I am using scikit_learn confusion matrix as the base code for plotting the matrix. I am facing the problem that whenever I re-train the Linear ...
0
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0answers
28 views

KeyError while using UnbalancedDataset package to over-sample a dataset (in pandas.index.IndexEngine.get_loc)

I am trying to use UnbalancedDataset to over-sample my data. Following the sklearn convention, I have X,y as the feature matrix and target vector. These are of the pandas.core.frame.DataFrame type ...
2
votes
2answers
51 views

Is there anyway to know the progress in sklearn GridSearch

For grid search is always time consuming, so I want to see how much it run now. For example ,it might output paramsXXX processed paramsYYY processed ...
0
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0answers
24 views

Convert pandas sparse dataframe to sparse numpy matrix for sklearn use?

I have some data, around 400 million rows, some features are categorical. I apply pandas.get_dummies to do one-hot encoding, and I have to use sparse=Trueoption because the data is a little ...
2
votes
2answers
79 views

Machine Learning (tensorflow / sklearn) in Django?

I have a django form, which is collecting user response. I also have a tensorflow sentences classification model. What is the best/standard way to put these two together. Details: tensorflow model ...
0
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0answers
18 views

Scikit Learn - Interpreting regressor predictions

I'm a bit lost about interpreting an SGDRegressor's predictions. I am predicting as follows: from sklearn.preprocessing import StandardScaler import numpy as np from sklearn.linear_model import ...
0
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1answer
30 views

3d Array error in Sklearn

So im trying to get data about the stocks, the close price and moving averages 50, 100, 200. I got an another array which then is the label which is buy or sell. It was worked out on a dataframe along ...
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1answer
19 views

Python/Scikit Lear - Can't handle mix of multiclass and continuous

I'm trying to fit an SGDRegressor to my data and then check the accuracy. The fitting works fine, but then the predictions are not in the same datatype(?) as the original target data, and I get the ...
0
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1answer
13 views

SciKit Learn - Bad SGDClassifier accuracy

I'm trying to model some data with SGDClassifier, but for some reason I get horrible accuracy. I'm quite new to this, so I don't really understand why. Here's my code: from sklearn.preprocessing ...
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0answers
11 views

Can not make implementation of new estimator for grid search in scikit-learn

I was doing some researches in text analyzing with scikit-learn when I was faced with a problem. I created a new estimator for grid search: class DataJoiner(BaseEstimator): def __init__(self, ...