Questions tagged [machine-learning]

Machine learning algorithms build a model of the training data. The term "machine learning" is vaguely defined; it includes what is also called statistical learning, reinforcement learning, unsupervised learning, etc. ALWAYS ADD A MORE SPECIFIC TAG.

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Why detections count is not equal to unique truth count in YOLOv4 test result report?

I trained model using YOLOv4 on GPU, CUDNN and openCV (python) with AlexeyAB\Darknet with multi-label on windows environment. These labels are 25 classes (from 0 to 24). Then I test the model and I ...
N.white's user avatar
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Multiclass proper scoring rule decomposition: (weighted) average across the categories?

I have found a Python function that calculates the decomposition of various proper scoring rule, such as Brier score and log loss. However, it does not seem to accept arrays as arguments, so if I want ...
Dave's user avatar
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Which book help us to do the best EDA for data science? [closed]

I am new at data science. I would like to make ML models in orde to make predictions, but I am lost when I have to make interpretations to data... I would really like to understand the data with ...
2 votes
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Analogue of landscape conjecture in likelihood theory or Bayes?

The so-called landscape conjecture in machine learning says that in high dimensions, most critical points of the loss surface are saddle points rather than poor local minima. Out of curiosity I was ...
Durden's user avatar
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Is There a Standard Metric for Evaluating Treatment Impact Considering Action Cost in Uplift Models?

I'm currently exploring Uplift modeling, specifically the use of the Conditional Average Treatment Effect (CATE) metric: $$ \tau(t', t, x) := \mathbb{E}[Y | X=x, T=t'] - \mathbb{E}[Y | X=x, T=t] $$ ...
Amit S's user avatar
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1 answer
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How to interpret the deviance plot by boosting models

This plot is taken from a gradient boosting regression example in the scikit-learn documentation. What does deviance mean? How should this plot be interpreted? In which case do we have over/...
Mykola Zotko's user avatar
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27 views

How to interpret error histogram and scatter plot?

I'm new to machine learning and I'm having a hard time interpreting how good my model is performing. I have run my model on a dataset of wine attributes trying to predict alcohol content based on the ...
n-l-i's user avatar
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Relation between number of classes, their separability and classification difficulty

Intuitively, it seems that a classification problem with more classes is "harder" than the same problem with fewer classes. However, this also seems to depends on the separability of the ...
Aethor's user avatar
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3 votes
2 answers
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How to combine two linear models?

I am trying to predict housing prices using as few variables as possible. One way that yielded the best results so far is splitting the data into two data-sets ($houses < 100m^2$ and $houses >= ...
Anton's user avatar
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Python: Nonlinear Poisson Regression with two independent variables, or something similar like a Random Network? [closed]

I'm looking for a algorithm to use Nonlinear Regression with Poisson for predictive purposes in Python or something similar anyway. I would need something similar to Poisson regression, but with some ...
Horiatiki's user avatar
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Loss stops dropping in a convolutional classification network [closed]

I'm training my first CNN, but loss stops at 1, and its plot also shows spikes: This is the code: ...
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4 votes
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Regression coefficient on a triangle using geometry

I am encountering a question as follows: Let $X, Y$ be two independent uniform random variable on $(0,1)$. We consider the regression model $Y = \beta_1 X + \beta_0$, given the restriction that $X + Y ...
mathdoge's user avatar
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Machine Learning College predictor [closed]

I have a training data set containing College names,student rank, branch, college cutoff. Which prediction model should I use to predict the list of colleges a student will get admission in according ...
user20470874's user avatar
1 vote
0 answers
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Given conjugate prior and posterior distributions, what is the PRIOR predictive distribution? [closed]

I am doing an assignment on my statistics class. We had 1 lecture about bayesian parameter estimation, where we were taught about the following formula (and it's discrete form, if $h(\theta)$ was ...
ampersander's user avatar
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As Brier Score = MSE, does MSE in a regression have a calibration-discrimination decomposition?

When the outcome of a supervised learning problem is binary and probabilities are predicted, Brier score can be decomposed into a measure of calibration and a measure of discrimination. ...
Dave's user avatar
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Does Faster RCNN have an upper bound on the number of bounding boxes which it can predict in a single image? [closed]

Asked today Modified today Viewed 9 times Report this ad Closed. This question is not about programming or software development. It is not currently accepting answers. This question does not appear to ...
user22966689's user avatar
2 votes
1 answer
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Could classical astronomic discoveries be made using ML?

Imagine that prior to the time of Copernicus, scientists could run machine learning algorithms (somehow). Would it be possible to discover the truth of the geocentric model with their use? Would the ...
Sam's user avatar
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Looking for a way to train a model to learn optimal parameters/hyperparameters of clustering

I have 5000 docs, each is a review. For each review, I'm plotting the sentences in a semantic dimension. Now, I'm applying clustering to these points for each review. The success of my model depends ...
Prithvi's user avatar
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1 vote
1 answer
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Regularization Problem and Reproducing Kernel Hilbert Space

The following shows part of the page 169 of The Element of Statistical Learning that I want to make clear. We have $$\min_{f \in \mathcal H_K}[\sum_{i = 1}^NL(y_i, f(x_i)) + \lambda\Vert f\Vert_{\...
jason 1's user avatar
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What type of Autoencoder is this?

I have an autoencoder structure which is given below. Now, I want to know what type of autoencoder is this? Is it Bayesian or Gaussian?? Or is it something else? ...
bunny's user avatar
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Time Series Prediction for Variable-Length Input with Fixed Sampling Period

I'm working on a time series prediction task where I need to predict the parameters (amp, phase, freq, offset) that best fit a variable-length input series. The samples are always at the same period. ...
Andrea Arlotta's user avatar
1 vote
1 answer
27 views

Relative Risk or Odds ratio using machine learning

I am thinking of using machine learning type classification models to compare them with the traditional approach of logistic regression (dichotomous outcome) in a sample of patients with diabetic foot ...
ronald's user avatar
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so the question is about calculating MAP and PPD. I know the formulas for both, but find it confusing, so can someone explain step by step? [closed]

Now suppose that you run each model, and they make the following predictions: p(yt+1 | yt, θ1) = .4 p(yt+1 | yt, θ2) = .75 p(yt+1 | yt, θ3) = .6. What is the maximum a posterior estimate p(yt+1 | yt,...
Hannan Sandhu's user avatar
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40 views

Bert Used for generative AI

I have a doubt regarding using "Bert" as a generative model. I know Bert can be used for classification or fine-tuning the question-answering. However, is it possible to use Bert to generate ...
Encipher's user avatar
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23 views

Is the right set of customers to use in my churn model?

I am creating a churn model in python. The full dataset has around 90k records stretching back many years. I'm using a subset of the full dataset. This subset only includes clients where we've worked ...
jabs's user avatar
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1 vote
1 answer
22 views

How to predict outcome with zeros, and both negative values and positive values in ML model?

My Outcome is quarterly sales, which is right_Skewed and the range of it is large b/c different groups purchased differently. For Example, there are lots of groups that made zero or less than 10 ...
user401029's user avatar
3 votes
0 answers
73 views

Is Brier score strictly proper in multi-label problems?

In problems where one of $3+$ categories can be observed and we prodict the probability of each category being observed, it is known that the Brier score is a strictly proper scoring rule that is ...
Dave's user avatar
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Bias-Variance tradeoff proof [duplicate]

why are y_hat and ε independent? I think ε dose effect y_hat
Yangge Hu's user avatar
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14 views

Does Positional Interpolation Change Llama's Architecture?

I'm currently exploring Meta's positional interpolation method, which aims to increase the context size in their large language model. This method extends the context length from n x n into n′ x n′. ...
user219313's user avatar
1 vote
1 answer
117 views

Help with Classification model for S&P500

I have started a project in order to develop my coding skills, where I am predicting next month's S&P500 return direction based on some macroeconomic and financial variables. These datasets have ...
user199's user avatar
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what does edge mean in the context of sample space?

This is a follow-up question on this post It uses a term 'edge'. For example, it says I understand that extrapolation is harder than interpolation. And I understand that if we choose a point to ...
Sherlock_Hound's user avatar
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Should unprocessed features be kept in the dataset along engineered ones?

I'm working on a Machine Learning classification problem that has five Service Spending features (among many others) in its dataset, each sample is a customer. For instance, here are the first three ...
spengler's user avatar
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0 answers
18 views

Reporting internal validation from .632 bootstrap in caret

I am developing Machine learning prediction models using the caret package in r (Elastic net, SVM, Random Forest, XGBoost). I have 650 cases with 104 having the event of interest. Instead of splitting ...
Dwayne T's user avatar
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0 answers
61 views

How do I proof or disprove that the size of a document influences classification accuracy?

I have a multinomial Naive Bayes model that classifies a document into 1 of 178 classes. This goes well about 50% of the time, so it's pretty good (for my use case) considering the large set of ...
Jordy Weening's user avatar
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0 answers
13 views

Conditional Average Treatment Effects: What is the logic underlying using the covariates to predict the residualized scores?

I've consulted a few references, including this online book, and I've got a good grasp on using double machine learning to estimate ATE after debiasing/denoising the treatment variable (T) and the ...
C McNorgan's user avatar
1 vote
0 answers
27 views

What kind of machine learning model could I use on this dataset?

I am a beginner to data science. I found this dataset that covers natural disaster incidents in Afghanistan from 2016 - present. Here are the 13 columns: REGION (South West, North, etc), PROV_CODE (...
Mas's user avatar
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2 votes
3 answers
77 views

Neural network training: Early stopping vs. reducing the number of neurons/layers

Assuming we have a regression task (1D-output, values between 0.0 and 1.0) with 100 input dimensions and a classical MLP with ...
Tobias Hermann's user avatar
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0 answers
11 views

Occam's Razor: Commit to a hypothesis before vs. commit after seeing the data

In the section on Occam's Razor of the book "Understanding Machine Learning, S. Ben David et al." (its free online version here), the authors wrote: if we commit to any hypothesis before ...
Tran Khanh's user avatar
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0 answers
19 views

Optimizing Customer Request Classification: Handling Multilabel Notes and Varied Description Lengths

I'm working on a project to classify customer requests based on a dataset that includes request descriptions, labels and sentiments. The goal is to predict the label (and sentiments) of customer ...
deps's user avatar
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1 vote
1 answer
51 views

Is model distillation an ill-defined problem?

Model distillation (or knowledge distillation) consist in making a student model learn from a teacher model in order to eventually use the student model as an alternative to the original teacher model....
Ben's user avatar
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3 votes
1 answer
137 views

Unpack the notation used in Wikipedia's decomposition of the Brier score

Wikipedia has an article about the Brier score whose notation confuses me. The article starts out easy enough by defining the Brier score to be: $$ BS = \dfrac{1}{N}\overset{N}{\underset{i = 1}{\sum}}\...
Dave's user avatar
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-1 votes
0 answers
32 views

Computationally effective way to ensure the neural network output with a mean of 1

I want to enforce the output of a feedforward neural network to have a mean of 1. I understand that I can use softmax function or do some postprocessing (i.e., divide the output by its mean). However, ...
T. B.'s user avatar
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0 answers
9 views

tree plotted by ctree has no splits

I've computed a ctree model, but the individual tree plotted is just one level, with all samples (below). How could this scenario have occurred? My response variable is a principal component and the ...
Cate's user avatar
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2 votes
3 answers
69 views

How does neural networks create a boundary in case of more than 3 classes?

I understand that a neural network is a universal function approximator, meaning that it can learn to approximate any function that maps inputs to outputs. For a classification task, it creates a ...
Magician's user avatar
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0 answers
4 views

What type of rotational invariance information can I get from interest points (coordinates) of corners from an image?

Assume that you are using the FAST algoritm for corner/feature detection. You pick an image and run the FAST algorithm. Question: All these green dots are actully coordinates in x and y direction. ...
euraad's user avatar
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4 votes
0 answers
74 views

Can the calibration-discrimination decomposition of Brier score be viewed as the bias-variance decomposition of mean squared error?

The mean squared error has a famous decomposition into bias and variance. $$ \text{MSE} = \text{bias}^2 + \text{var} $$ Brier score is also a mean squared error calculation, and Brier score has a ...
Dave's user avatar
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0 answers
7 views

Tree structured data prediction

I have tree-structured dataset about parents and childs values. Each data node (except father-node) has some float values. I need to predict childs values. For being more obvious, I made a picture to ...
Angelika's user avatar
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1 vote
1 answer
94 views

Multivariate Time Series dataset preparation

I am a bit confused with the time series dataset preparation. From the internet, I saw all examples which used tree-based models, had input features and target defined as: ...
kg__'s user avatar
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0 votes
1 answer
74 views

What's the best clustering algorithm for Fraud Data?

Background I'm working on a Fraud dataset with 500,000 samples, and 130 features. There are: 98 numerical features, 32 categorical features, There are missing values in: 7 numerical features, 12 ...
Connor's user avatar
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0 answers
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Hyperparameter selection after nested cross-validation and making comparisons with DeLong's test

I have already read all the associated questions on the topic but couldn't find a clear answer. I initially split my data into training (80%) and hold-out testing (20%). Then, I am performing nested ...
user22409235's user avatar

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