Questions tagged [one-hot-encoding]

One-Hot Encoding is a method to encode categorical variables to numerical data that Machine Learning algorithms can deal with.

3
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4answers
26 views

Populate values for categorical data in their respective one-hot encoded columns

I have an csv file which have 100s of columns and rows. There two columns are my interest and based on that I need to create new columns in that csv file. Example: I have interested columns as below, ...
-1
votes
2answers
28 views

Creating one hot encoded columns while preserving other features

I've got the following data: dataset <- structure(list(id = structure(c(2L, 3L, 1L, 3L, 1L, 9L), .Label = c("215101", "215559", "216566", "217284", "219435", "220209", "220249", "220250", "...
0
votes
1answer
44 views

Drop level from one-hot-encoded column in Spark

If I already have a column created by OneHotEncoderEstimator how can I drop one of the levels on the fly? Say you have a column with 4 levels (one dropped for dependence) and you want to drop the ...
0
votes
0answers
25 views

Elementwise multiplication with pytorch weights

I am trying to build a simple "neural network" with just elementwise multiplication with weights. Just for this scenario I have a data with 5 features which only one is "1" and all the rest are "0" (...
0
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0answers
20 views

K-means with one-hot encoding vs. K-modes [on hold]

I have a clustering problem with categorical variables. Therefore, I am using k-modes, but it is very slow because the dataset is large. I ran the same data problem with k-means via one-hot encoding. ...
0
votes
0answers
18 views

How to store label values in pd.factorize followed by OneHotEncoding process?

I am trying to perform encoding on a large dataset. Here is the process so far. 1.separated numeric variables and categorical ones. X = df.select_dtypes(include=['int64', 'float64']) label_data ...
0
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0answers
8 views

tfRecord reading with padding, onehot on parser and VarLenFeature

Below is code piece of tfrecord file generation afterwards i am not able to write the function to retrieve back those values with applying Padding in X & OneHot in Y and along with epoch & ...
0
votes
0answers
24 views

Getting error in one hot encoding function implemented using np.eye()

My test and train directories are following train --class_0 --class_1 test --class_0 --class_1 train --class_0 --class_1 - test --class_0 --class_1 all classes contain 2 images as of ...
1
vote
1answer
53 views

Pandas - get_dummies with a selected set

With the following DataFrame: >>> df = pd.DataFrame(data={'category':['a','b','c'],'val':[1,2,3]}) >>> df category val 0 a 1 1 b 2 2 c 3 I'm ...
0
votes
0answers
35 views

How to use one hot encoded ouput vector with Dense to train a model in keras

I'm a newbie in machine learning. I have a image dataset which contains 6 classes each one with 800 train & 200 validation images. I'm using keras to train the model model. Previously I used ...
1
vote
2answers
44 views

Using “one hot” encoded dependent variable in random forest

I'm building a random forest in python using sklearn-learn, and I've applied "one hot" encoding to all of the categorical variables. Question: if I apply "one hot" to my DV, do I apply all of its ...
0
votes
1answer
19 views

Does one-hot encoding cause issues of unbalanced feature?

We know that in data mining, we often need one-hot encoding to encode categorical features, thus, one categorical feature will be encoded to a few "0/1" features. There is a special case that ...
3
votes
1answer
42 views

How do I “one hot encode” a Tensorflow Dataset?

Newby here... I loaded TF dataset as follows: dataset = tf.data.TFRecordDataset(files) dataset.map(extract_fn) The dataset contains a "string column" with some values and I want to "one hot" encode ...
0
votes
0answers
8 views

How to use OneHotEncoded data into Isolation Forest?

I have two columns in my dataframe and both are categorical. One of these columns contains misspellings and I want to do outlier detection in it and trying to use Isolation Forest. I have applied ...
0
votes
0answers
17 views

create one-hot encoded columns for binary numpy array values

I have a dataframe with one of the columns(XYZ) with values as numpy array I would like to convert the values in the array as oneHot encoded columns. Is there any simple way of doing that. Thanks ...
-1
votes
2answers
48 views

One-hot encoding in R- creating dataframe column names from variables in a loop [closed]

I am using a dataframe called "rawData" which has a column called "Season" with values ranging from 1 to 4. I am trying to use a loop to perform one-hot-encoding, i.e create 4 new columns called "...
2
votes
1answer
74 views

Pytorch LSTM: Target Dimension in Calculating Cross Entropy Loss

I've been trying to get an LSTM (LSTM followed by a linear layer in a custom model), working in Pytorch, but was getting the following error when calculating the loss: Assertion cur_target >= 0 &...
0
votes
0answers
21 views

Scaling outputs in multi-hot encoding and using class weights

I have a recurrent neural network to classify sequential data. Not all samples have the same relevance to the prediction, others include multiple classes at once. For example a sequence of words ...
0
votes
2answers
40 views

Keras one-hot-encoder

I have an array, and use the to_categorical function in keras: labels = np.array([1,7,7,1,7]) keras.utils.to_categorical(labels) I get this response: array([[0., 1., 0., 0., 0., 0., 0., 0.], [0.,...
0
votes
1answer
45 views

Cross Entropy Loss for One Hot Encoding

CE-loss sums up the loss over all output nodes Sum_i[ - target_i*log(output_i) ]. The derivative of CE-loss is: - target_i/output_i. Since for a target=0 the loss and derivative of the loss is ...
0
votes
0answers
29 views

One hot encoding of 1 million category

For a language model, I have to predict a word for a given sequence of words. My vocabulary contains 1 million words. I'm trying to predict the words from it. I tried to use one hot encoding using ...
0
votes
2answers
31 views

One hot encoding huge 3D array

As the title my data looks like this: ["test", "bob", "romeo"] - etc just random words I have converted them into numbers based on position in alphabet for each letter in the word so now it would be: ...
0
votes
0answers
14 views

Categorical variables with apache-spark [duplicate]

I'm currently trying to transforming my features before a kmean algorithm with apache-spark. I used a stringIndexer and the one hot encoder to transform some categorical variables into numbers. One of ...
2
votes
2answers
38 views

create new column with data in a column

So here is my data in pandas Movie Tags 0 War film tank;plane 1 Spy film car;plane i would like to create new column with the tag column with 0 and 1 and add a prefix like 'T_' to ...
-1
votes
1answer
27 views

How to handle large Sets of categorical Data

I'm a beginner in machine learning. i have a large Data Set with lots of categorical data. The data is nominal. I want to apply algorithmns like SVM and decision tree with Python and scikit-learn to ...
0
votes
1answer
54 views

One-hot encoding in pyspark with Multiple 1's in a row

I have a Python dataframe final_df as follows: The rows have duplicate ID values. How can I have a one-hot encoded output as follows using pyspark? I have converted it into a spark dataframe: ...
0
votes
1answer
63 views

Integer to array of bits and back to integer ((multi)-one-hot encoding based on bit values in RGB image)

I am working with a data set that is annotated for pixel-wise classification. In the pixel-label images the classes are encoded by RGB values as follows: RGB=0b00...1000=0x000008: main text body ...
0
votes
0answers
12 views

Does it make sense to apply a weight factor after OneHot Encoding?

After encoding 3 categorical variables, I have a DataFrame containing 3000 columns, each with values 0 or 1. This DataFrame also has native numeric columns (normalized between 0 and 1). categorical ...
0
votes
1answer
33 views

Multi-label classification: decoding one hot vector

I am currently working on a multi-label classification problem where I am trying to classify images of fruits. Once I convert categories with one hot encoding how would I decode after I train my ...
3
votes
4answers
59 views

Encode numbers into categorical vectors

I have an vector of integers y <- c(1, 2, 3, 3) and now I want to convert it into an list like this (one hot encoded): 1 0 0 0 1 0 0 0 1 0 0 1 I tried to find a solution with to_categorical but ...
0
votes
3answers
46 views

How can I one-hot encode my dataset with several categorical variables in R?

Does anyone know how I can better clean up this data so I can run a logistic regression on it? I am trying to one-hot encode the variables with multiple categories like race, workclass, etc (as shown ...
-1
votes
1answer
37 views

inverse the binarized dataframe to original categorical values after un-pickling

I am trying to solve a classification problem where the label column contains string values. Steps followed in Training the model :- Converted the dataframe to binarized values using pandas....
3
votes
3answers
79 views

One Hot Encoding for top categories, NA, and remaining subsumed as 'others' in R

I want to one hot encode my variables only for the top categories and NA and 'others'. So in this simplified example, hot encoding b where freq > 1 and NA: id <- c(1, 2, 3, 4, 5, 6) b <- c(NA, ...
1
vote
1answer
93 views

OneHotEncoder on multiple columns belonging to same categories

I have multiple columns consisting of categorical variables which are in the form of integer values ranging from 0-4. But, all columns belong to the same category. I tried using OneHotEncoder from ...
0
votes
0answers
25 views

Missing values during One Hot Encoding

I am using get_dummies command to generate dataset of 1/0 for my categorical variables. Although I know my data contains values from 0 to 6, my current sample does not contain the entire range from 0 ...
-1
votes
2answers
36 views

One hot encoding for multi level categorical data-set

My Dataset is as following: Symptoms (X) :: Condition (Y) fever, headache, blindnes :: wagner syndrom tooth pain,fever , sweet urine :: ...
0
votes
0answers
15 views

One hot encode with reference value in Pandas [duplicate]

I am trying to create one-hot-encode features from a group by operation. The table below is the result of a grupby operation on the original table. It looks like this: user_id event ...
0
votes
0answers
28 views

Non-negative matrix factorization (NMF) on mixed data using 1-hot encoding

from a standpoint of interpretation, can I use NMF on one-hot encoded categorical data for dimension reduction? I have mixed data and was thinking about one-hot encoding the categorical features and ...
1
vote
0answers
34 views

How to convert label data with None values to OneHot using LabelBinarizer sklearn

I have label data that same of the values are np.nan. I want to convert the data to OneHot vector using LabelBinarizer, and the np.nan will convert to zero-array. But I get an error. I success to ...
3
votes
1answer
23 views

Encode multiple label in DataFrame

Given a list of list, in which each sublist is a bucket filled with letters, like: L=[['a','c'],['b','e'],['d']] I would like to encode each sublist as one row in my DataFrame like this: a b ...
1
vote
1answer
38 views

How to add one hot vectors?

I have a few one hot vectors(more than 2) of size 48 each. How can I add them? Is there any specific method or simple arithmetic addition? If arithmetic addition then how should I handle the carry bit?...
1
vote
1answer
45 views

Implement a Verilog $onehot task in Chisel

Is there a straightforward way to check a 1-hot bus encoding in Chisel? My current solution seems a bit ugly. Can I do better? val range = Output (Vec (num, Bool())) val outSum = io.range map ( p =&...
0
votes
1answer
17 views

Pandas convert Series of strings to Series of lists of strings (of size 1) for encoding

I know the title is confusing, but let me explain. I'm trying to prepare Series' for a sklearn.MultiLableBinarizer, with each string being a separate user id I want to one-hot-encode. Erroneously, it ...
2
votes
2answers
32 views

Find unique values in a character vector separated by commas and then one-hot encoding

Basically I have a vector of strings separated by commas. I'm looking to one-hot encode using the unique values of the strings. I believe I have to first find the unique values (separated by commas) ...
2
votes
5answers
67 views

R - How to one hot encoding a single column while keep other columns still?

I have a data frame like this: group student exam_passed subject A 01 Y Math A 01 N Science A 01 Y Japanese A 02 N ...
-1
votes
2answers
212 views

Create dummy variables from string with multiple values

I have a data set with a column that contains multiple values, separated by a ;. name sex good_at 1 Tom M Drawing;Hiking 2 Mary F Cooking;Joking 3 Sam M Running 4 ...
0
votes
1answer
178 views

One-hot-encoded labels___multi-hot-encoded output_Keras

I have a 1D-image with 1x2048 pixels as input and 32 classes for which I have defined a layer of 32 filters with the same size of the image(1x2048) which are L1-regularized. My image examples are one-...
0
votes
1answer
41 views

Creating One-Hot Encoder. CountVectorizer returns error with ArrayType(IntergerType, true)

I try to create a one hot encoder for the following input data : +------+--------------------+ |userid| categoryIndexes| +------+--------------------+ | 24868| [7276]| | 35335| ...
-1
votes
1answer
78 views

How to avoid dummy variable trap for multiple category in one column

I am working on a regression problem. I have a categorical column which has 24 categorical value.One-hot encoding is showing too many dummy variable. Is there a way to avoid multiple dummy variable ...
0
votes
1answer
37 views

one-hot encoded Keras CNN output not as expected

I have a simple problem to solve in which there are 32 filters which are the same size as the image(1x2048). Therefore, the filter's weights will be multiplied one by one with the pixels rather than ...