Questions tagged [supervised-learning]

Supervised learning is the machine learning task of inferring a function from labeled training data. The training data consist of a set of training examples. In supervised learning, each example is a pair consisting of an input object (typically a vector) and a desired output value (also called the supervisory signal). A supervised learning algorithm analyzes the training data and produces an inferred function, which can be used for mapping new examples.

supervised-learning
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Harmonize Label Annotation when merging multiple datasets (ML)

I want to build a ML model for fake news detection. There are multiple datasets out there that use different labeling schemes. For example, the LIAR dataset allows for 6-ways classsification (true, ...
q.uijote's user avatar
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SMOTE for just the training for cross-validation of a Sequential Feature Selection Algorithm after a train/test split

`**Split a Train a Test Dataset** X_train, X_test, y_train, y_test = train_test_split(X_pre, y, random_state=0, stratify=y, ...
Andres Portocarrero's user avatar
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Supervised learning? or unsupervised learning? which one is correct?

I am currently working on an image classification task, and the process involves training with the desired target values, making it a supervised learning task. However, when training a model, such as ...
kyub's user avatar
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Using Reinforecement Learning or Not? How to solve specific optimization problem?

I have an optimization problem for which I have no idea how to find a solution. The concept involves receiving a simple observation (binary) at each timestep, making decisions accordingly, and ...
anzin1122's user avatar
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Getting TypeError while implementing the gradient descent code for regularized values

My Code (from coursera): def gradient_desc(X, Y, w_in, b_in, cost_f, grad_f, alp, num, lambda_): m = len(X) # An array to store cost J and w's at each iteration primarily for graphing later ...
SM Hamza Mehdi's user avatar
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How to handle tokens that don't have a label in an NLP task?

I'm working on training an NLP model to detect sensitive information in documents. There are 15 categories of sensitive information I'm attempting to predict. It seemed like adding another category ...
dunha2j's user avatar
1 vote
2 answers
283 views

How to normalize Imagenet dataset with pytroch?

I am trying to write a simple code to teach resnet50 on ImageNet dataset. I don't quite get why normalization does not work. When I use this transformation as data augmentation: train_transforms = ...
Chuck's user avatar
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Question on training with label and unlabeled data

I have a large labeled dataset with 26.7M reviews written in Modern standard Arabic, and I have another dataset but unlabeled with 16K reviews written in both Modern standard Arabic and colloquial ...
Reem's user avatar
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Why can't i change the shape or dimensions of my list?

target = [] images = [] flattened_data =[] these are 3 lists I made to append my dataset after the preprocessing, but haven't been able to do so until now because of the difference in the dimensions ...
abhi singh's user avatar
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Training using parameteric Q method

I am training the Q Agent using parametric Q method, now the problem method is start evaluating the before 200 episodes but in code I have checked the if condition is set to 200 episodes, I checked ...
Ehtisham's user avatar
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Is this the correct implementation of a MAML model?

I have used CLIP embeddings of image and text as the input and the output is a label ranging from 0 to 5 (6 way label). I tried to make an implemention of this multimodal 6 way classification using ...
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How to calculate an optimal Bayes estimator for a class sensitive loss function?

The Bayes estimator uses p(x, y) as a probability mass function over (X, Y ) where X = [n] and Y = [k] thus for every x∈X and every y∈Y, p(x, y) = 1. There is a k x k dimension cost matrix, C ∈ [0,∞) ...
CodeJuggler21's user avatar
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(semi) supervised learning; The custom trainings loop doesn't train the model properly. The training seems to ignore any weights

I try to code a semi-supervised model for a project besides the university. First I got a model which trained with the model.fit (I tested the model with supervised learning first). But for semi-...
Atrimurti's user avatar
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How can I discretize the output of a deep learning model?

I am trying to create a supervised trained model that outputs discrete values ranging from 1 to 50. To do this, I decided to solve the problem as a multiclassification problem. My approach is to use a ...
Nathaldien's user avatar
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How to train an autoencoder in a supervised manner?

I have two datasets, one numeric and one semantic information of the numeric ones. I want to train an autoencoder to give latent embeddings that should match the semantic dataset. That is: ae_model = ...
Rupshali Dasgupta's user avatar
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Numerical and Categorical Features in classification problem [closed]

I have a classification problem to figure out hotel cancellations (in python). I'm stuck in a problem of the first steps. I have some variables regarding hotel reservations, and some of them are: ...
Marteusa's user avatar
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When training on a sparse depth ground truth, how to predict smooth outputs for depth completion?

I am trying to train a CNN-based depth completion model (Github Link) and am having some general problems training the model. My basic procedure is to downsample my depth and input, upsample the ...
corrosive's user avatar
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KL divergence loss goes to zero while training VAE

I am trying to train a supervised variational autoencoder to perform classification for a noisy dataset. I am using a fully connected encoder and decoder where uses the z as input for an MLP. I'm ...
Akbari's user avatar
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2 answers
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Read content of several txt files into python

I have two folders, each folder contains words in various .txt files, one folder is named 'good' while the other is named 'bad', I want to write a python script that will import all the data into a ...
highclef's user avatar
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What could cause the incorrect number of linear predictors in the multinom family of a multinomial GAM?

Consider the following model modeling nine genotypes (integer numbers) by their growth pattern (The ratio of plant height growth over plant diameter growth) over time (in day of the year). m2 <- ...
Bertold Mariën's user avatar
3 votes
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Pytorch - Training loss not changing with simple CNN model

In an image classification task of around 15 classes, the classes are rathe simple, categorized by color. Not some very high level detail. The graphs of loss and accuracy over 100 epochs I am using ...
AlgoManiac's user avatar
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555 views

Gradient Descent Function in Machine Learning

I am enrolled in the Machine Learning Specialization course by Andrew Ng on Coursera, where I encountered this function implementing the Gradient descent algorithm. def gradient_descent(x, y, w_in, ...
Rhythm Dutta's user avatar
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3 answers
245 views

Curve fitting of the laser beam radius W(z) versus propagation distance z

I am taking 5 measurements of the laser beam radius at various distances between 1-200 cm. Without knowing where the beam waist Wo is, I am trying to use the curve_fit() function to find the opt value ...
Kelia's user avatar
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How to Systematically Tune UMAP Hyperparameters for Supervised Learning

I have a question about using Uniform Manifold Approximation and Projection (UMAP) for feature extraction. In my project I am using two tabular datasets both containing around 10000 samples. One has ...
serkanardaa's user avatar
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Which learning method is applicable to the following case?

I have a system to determine user behavior during driving a vehicle. While driving, system records driver actions and logs data from various car sensors. Using this data in a supervised learning ...
LadyLyanna's user avatar
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1 answer
43 views

How to evaluate how similar 5 datapoints are to 1 target datapoint

I am struggling to wrap my head around a problem I need to resolve. Say that we have a cars dataset (1) with many different cars that have different features (id, age, mileage, color, model,...). On ...
naseriani's user avatar
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1 answer
52 views

Random Forest score ambiguity

https://drive.google.com/file/d/1Za1PIjx3_14hZ3qYyEXmtqiQiHw3Mo_D/view?usp=share_linkWhy does random forest score differ from r2-score since random forest uses r2-score for evaluation?[enter image ...
Sachin manjrekar's user avatar
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1 answer
195 views

Which ML algorithm can find pairs in two datasets?

I have two datasets for which I need to find matching pairs. In dataset 1 I have reported data from payment providers, which will result in bank payouts. Each record contains a monetary amount, ...
reikje's user avatar
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Issues when loading a sequential model in Python

I had trained and saved the following sequential architecture model = Sequential([layers.Resizing(IMG_SIZE, IMG_SIZE), # Resize of the image layers.Rescaling(1./255), # Image rescaling of a factor 1./...
Ant2198's user avatar
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Which model should i use to be able to achieve accurate predictions based on a large amount of data?

I have been trying to build a model that would consider a independent variable such as "age" to predict the level of efficacy of an individual. I have achieved a 0.049 r2 scored by using ...
Ikal's user avatar
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2 votes
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452 views

Testing all possible features for regressions with scikit-learn

Is there a way to test all possible combination of features to see which combination gives the highest coefficient strength for a set of features that I am interested in with scikit-learn? For example,...
griefter's user avatar
1 vote
1 answer
218 views

Stacking ensemble of classifiers in a chain

I have the following human activity recognition sample dataset: df = pd.DataFrame( { 'mean_speed': [40.01, 3.1, 2.88, 20.89, 5.82, 40.01, 33.1, 40.88, 20.89, 5.82, 40.018, 23.1], 'max_speed':...
arilwan's user avatar
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Supervised ML to extract keywords from short texts

I have a lot training data ready and looking for an ML algorithm to replace the current algorithms. The input is a paragraph containing a short biography of a person and the output is their dates of ...
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Do unsupervised machine learning model features need to be independent?

I'm training an unsupervised machine learning model and want to make sure my features are as useful as possible! Do unsupervised machine learning model featured need to be independent? For example, I ...
mangokitty's user avatar
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Do Expectation Maximization always have to converge after a finite number of iterations if the implementation is correct?

I'm trying to understand how this could be possible, I know EM algorithm has the property to increase the likelihood for each step. However, this does not imply convergence. My question is, if the ...
tu_1329's user avatar
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1 answer
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Not sure if I'm answering the wrong question or wrongly answering the right question. Need suggestions please [closed]

Thank you for taking the time to read my post. I'm in a bit of a limbo here and really need some intervention. I have been working on an individual project. It is a supervised learning regression ...
Hasnain's user avatar
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2 votes
1 answer
193 views

How to pickle or otherwise save an RFECV model after fitting for rapid classification of novel data

I am generating a predictive model for cancer diagnosis from a moderately large dataset (>4500 features). I have got the rfecv to work, providing me with a model that I can evaluate nicely using ...
Jim's user avatar
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1 answer
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UnboundLocalError: local variable 'dist' referenced before assignment

I am trying to train a model for supervised learning for Hidden Markov Model (HMM)and test it on a set of observations however, keep getting this error. The goal is to predict the state based on the ...
maximus's user avatar
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2 answers
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KNN Python implementation

this is what shows when i try running my code: FutureWarning: Unlike other reduction functions (e.g. skew, kurtosis), the default behavior of mode typically preserves the axis it acts along. In SciPy ...
Walid's user avatar
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K-Nearest Neighbor - how many reference points/features?

I want to use KNN to create a training model (I will use other ML models as well), but i'm just wondering... I have around 6 features, with a total of let's say 60.000 (60 thousand) reference points (...
Questions123's user avatar
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1 answer
129 views

How to deal with Tensorflow model.predict() value error?

I am getting the following error in my code WARNING:tensorflow:Model was constructed with shape (None, 3) for input KerasTensor(type_spec=TensorSpec(shape=(None, 3), dtype=tf.float32, name='...
MOHD SAAD's user avatar
-1 votes
1 answer
71 views

Can we train of a binary classifier with "A" to classify "a"?

I have a maybe naive question of the appropriateness in the use of binary classification. This is a hypothetical example, so forgive me if it is too coarse. Let’s say I want to train a support vector ...
PPM's user avatar
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Can the mlr package be used to make predictions based on data from a panel study?

I am planning to do a supvervised machine learning project where I use data from a longitudinal study (panel study). The goal is to use the 2004 and 2009 predictors to predict the 2014 outcomes. I ...
Mangus's user avatar
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1 answer
969 views

Train data and test data that have target column

I'm trying to make some predictive model using Baking Dataset - Marketing Targets from kaggle here is the link : https://www.kaggle.com/datasets/prakharrathi25/banking-dataset-marketing-targets The ...
Jovian Aditya's user avatar
-1 votes
1 answer
88 views

Decision Trees in Random forest Algorithm

Hi I'm a beginner to random forest algorithm in Machine Learning. According to what I have read in theory, it works on majority vote concept for classification problems. But can it be possible that ...
ZAbbas's user avatar
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-3 votes
1 answer
129 views

Overfitting in data frame that some rows repeated

I have a machine learning problem in a logistic regression algorithm. That I have a data frame where some rows and features are repeated like the below table: feature 1 feature 2 feature 3 ... ...
Poorya Alishah Kamandi's user avatar
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1 answer
606 views

TypeError: '<' not supported between instances of 'str' and 'bool' although info doesn't have bool in sklearn column transformer

There are similar questions asked before on stackoverflow, however, none of them could fix my problem. I don't understand why info() clearly doesn't output a "bool" but sklearn is outputting ...
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prediction line is too underfit

I have a question regarding how to update w,b in linear regression After I tried to train more loops, the result of w,b doesn't seem to get close to the training set. I'm not sure what I did wrong in ...
Mad_S_Eyes's user avatar
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203 views

Is it appropriate to GridSearchCV to pick best regression model and scaler then auto-feed to an ML pipeline?

Dataset is to predict a float outcome, no classifications. 200 samples, 50 features imports import pandas as pd from sklearn.neighbors import KNeighborsRegressor from sklearn.gaussian_process import ...
Drew Sanislo's user avatar
-2 votes
1 answer
452 views

Find similarity between rows of a dataframe in Python

For Example in one classification problem's dataset we have 50 categories so it will be difficult for model to predict these many classes. So to avoid this i want to combine target variable's rows ...
Bhaskar's user avatar

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