Validation is the process of assessing whether the results of an analysis are likely to hold outside of the original research setting. DO NOT use this tag for discussing `validity` of a measurement or instrument -- such as that it measures what it purports to.

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1answer
29 views

What is the difference between sensitivity analysis and model validation?

I read both wikipedia pages of sensitivity analysis and model validation (here, only linear regression validation) but I don't manage to find a way to separate these two terms. I have the impression ...
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17 views

Real-time accounting input valdiation

I'm currently fishing in troubled waters, as I've got a huge scope. I'm sorry in case this question had been asked already in before, however I couldn't find even a topic to look for with my small ...
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9 views

Sensitivity analysis for data validation

I have a dataset, which I believe contains errors. Basically my dataset contains recorded time intervals (in seconds) of visits to a certain place, that due to sensor oversensitivy have been ...
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16 views

What kind of bias am I introducing when I include Validation set (kept for model selection) in Train data?

As usual, I have three sets of data: Train, Validation and Test. So I use train data for model selection, where I select the model which would perform best on validation data. After selecting the best ...
0
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1answer
14 views

Evaluating a clustering against multilabels

I have a clustering of text documents, where each document is uniquely assigned to a cluster. I have a set of labels (keywords) attached to each document. That is, each label may be applied to many ...
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27 views

When is preferred the relative and stability-based cluster validation?

I need to validate a clustering algorithm result. I know that Cluster Validation is commonly divided into four categories: internal, external, relative and Stability-based criteria, where internal and ...
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18 views

Standard errors and confidence interval in cox regression model validation using RMS package

I am using RMS package of R to validate cox regression model with bootstrap. Please see the sample code below. I have three questions: (1) How do I request the standard errors and/or confidence ...
3
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1answer
56 views

Where can I find tests that validate the output of popular statistical software? (e.g. R, SPSS, SAS)

This has been difficult to search on Google. I've looked on R's website as well. I assume there are test suites that validate that R, SPSS, SAS, et al are giving the right output for a given analysis? ...
0
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1answer
29 views

Can I validate results after statistical hypothesis testing?

I have data from one clinical test for 450 patients. Depending upon my objective, I divided data into 7 different categories to compare two groups, in each category (inherited from parents and not ...
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28 views

Comparing two distributions (simulation vs. measurement) for describing model performance

On the one hand we use a complex mathematical model to determine the result of a process. The model will iterate e.g. 2000 times, each time using random samples for some unknown input parameters ...
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3 views

sampling size for binary group estimation (under randomized validation)?

Having binary groups with n members (size of several thousand or more members which can have 0 to ...
8
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2answers
322 views

Should final (production ready) model be trained on complete data or just on training set?

Suppose I trained several models on training set, choose best one using cross validation set and measured performance on test set. So now I have one final best model. Should I retrain it on my all ...
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18 views

What does this evaluation function mean?

I am solving a prediction problem where I am supposed to predict the number of clicks, given some historical Data. I am told that my predictions will be evaluated by a normalized weighted mean square ...
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17 views

What test can I use for Model Validation?

I ran the BTYD package in R which predicts the number of transactions that a customer is expected to make in the future.These expected values that I get are not integers but are in the form 0.14, ...
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16 views

Inproper model validation

Let us say that I have a data set D that contians N objects from K different species, words for example, where most of them occur one time. Now my advisor want's me to draw random samples with size ...
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46 views

What are the reasons why a classifier could produce bad results?

I know of four possible reasons: overfitting underfitting input data doesn't represent the problem (which I guess is underfitting) classifier isn't suitable (e.g. problem is not linear) Are there ...
4
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1answer
119 views

ML / train-test-validate: What is allowed when?

As someone getting started in machine learning, I am trying to get my head around the rules / good practices to follow when building, testing and validating supervised ML models in order not to ...
0
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1answer
58 views

How to pick the best model with cross validation?

Based on my understanding the leave one out cross validation is to hold a sample out as the test set and fit a model with remaining data and then calculate the error of prediction of the test sample ...
1
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1answer
38 views

What test shall I use to validate the use of a certain score to predict my outcome in a survival analysis?

I validate usage of a clinical cardiovascular score to predict the risk of dementia using data from a longitudinal study. Therefore, my outcome is binary (dementia yes or not) and the independent ...
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28 views

Which statistical test is preferred when comparing two predictive models?

Say, I have two predictive models A and B and recorded AUC (Area under curve) by running both the models on 20 different data sets. Now, if I want to find the best model out of these two for these ...
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22 views

Large condition number, but no effect on validation

My question is in regards to the relation between the condition number (or other multicollinearity diagnostics) and validation of a linear regression (lm in R). Specifically, I have extremely high ...
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5 views

How to model the behavior of Webservice and doing validation?

The goal is to find a smart way to validate the behavior of webservice such as CMS (wordpress, joomla). To give more detail, we want to be able based on observing host metrics ( cpu utilization,... ) ...
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22 views

Bootstrap within bootstrap?

I want to use .632 bootstrapping to validate an algorithm. The problem is that the algorithm itself also has bootstrapping procedures. Will that cause bias? Since bootstrapping with replacement will ...
2
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45 views

What should I do when logistic regression model doesn't perform well on test sample?

For logistic model, I divided dataset into two parts training sample (70% of 360 data point (observation)) and test sample (rest 30% of 360) randomly. After that I built logistic model on training ...
0
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1answer
40 views

Measures for Clustering Validations [duplicate]

I have unlabeled dataset and I'm using the hierarchical clustering to generate a groups from this data. I had a look to the lit and I found that there are two approaches to evaluate the clustering ...
1
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1answer
25 views

which paper(s) to cite when stating that out-of-sample validation is better than in-sample val

Validating a model (meaning, computing metrics on the prediction) using the training samples is, well, rubbish. Out-of sample validation should be preferred. This is well known by statisticians and ...
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14 views

The burden for verification/validation data

I seek a rigorous or otherwise proof for the need of verification/validation data. Typically it is suggested, after building a model, to do any validation of the model's health on a set of data that ...
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50 views

Validation Questionnaire Sample or format

I want to know on how to make a validation questionnaire for my research paper but I have no idea on how to create one. I searched about validation questionnaire but there's no format or example - ...
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2answers
73 views

The role of validation in estimation and hypothesis testing

Validation, with or without statistical/machine learning procedures, is used often, if not universally, in prediction. In estimation or hypothesis testing that does not seem to be the case, yet I ...
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41 views

Calibration curve confidence intervals interpretation. Is to reduce a high Bias Corrected possible in Bootstrapping?

I have been working on a mixed generalized model, glmer, and now I am trying to validate it by a calibrate curve, and also would like generate its CIs. For this, I thought in Bootstraping and found ...
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18 views

Using one model to validate another? (Validation with no ground truth?)

My question is on model validation when there is no ground truth. Suppose I have a data set of attributes: $x = \{x_1,\ldots, x_n\}$ These attributes are different attributes that describe animals ...
2
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2answers
52 views

Double (nested,wrapper) CrossValidation - final trained model

I'm performing a study where I'm selecting kernel type and hyperparameters in an inner CV loop and an outer loop doing 10-fold CV (using SVR). The output is 10 trained models and performance measures. ...
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31 views

Avoiding over/under fitting & validation set size

I'm using a PLS model associated to FT-NIR spectroscopy to predict some properties of biodiesel. At the moment, I'm trying to optimize the number of factors I should use to do the calculations. ...
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68 views

SOM Validation method

I made a project using Self Organizing Map (SOM) for clustering multi dimensions data in R. But I have difficulty to find what method that I can use to: validate the clustering result based on data ...
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11 views

How to account for drift in system identification output?

I am trying to identify the lateral dynamics of a vehicle. I use steering angle as input, and lateral displacement, lateral velocity and yaw rate as output. I use idss method of MATLAB. The issue ...
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1answer
50 views

What are the assumptions to test on unseen data to use a predictive model?

I am trying to understand what are the assumptions I have to test, to use a predictive model on unseen data. After the validation phase of my predictive model and the estimation of its accuracy on a ...
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7 views

Correcting for multiple data points

I am validating a new measure of therapist competency in psychology. I am getting 4 clients who have taken part in 40 sessions (10 each) to answer a questionnaires about their therapy sessions ...
0
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1answer
51 views

Calibration and validation of an accelerated failure time model on new data

I have an existing AFT (accelerated failure time) model which I'm using on a new dataset, with the obvious intent of testing whether the model predicts the new data well. A first step is to look at ...
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21 views

validation set with ranking variables

i'm working on an approach of feature selection with SVM model and i have some questions about validation , training and test sets. the idea is to rank variables in decreasing order of relevance ...
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19 views

Why use clustering + external measure for validation, instead of supervised learning?

Lets say I have set of genes in individuals and I will use clustering to find groups of individuals with similar genes and then I will check how these groups express itself in form of some disease. I ...
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15 views

How do I conduct model validation with glm models that have proportional response variable?

I would like to determine which environmental factors influence turtle nest survival. I ranked glm models with AIC using a step-wise procedure. The response variable is the proportion of eggs that ...
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0answers
21 views

Alternative to weighted kappa?

I want to compare modeled species occurrence with observed occurrence data. Using confusion matrix and weighed kappa seems to be a good option. In contrast to the normal kappa the weighted kappa takes ...
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37 views

Validating formative model - statistical analysis

Based upon literature I have developed a model which I want to validate. Data gathering will be done with the use of surveys. My knowledge of statistics, or more the lack thereof, has raised some ...
2
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2answers
109 views

Performing k-means clustering on a set of lines

I have a set of lines (y = numbers between 1 and 100, x= discrete) that I am trying to cluster to group similarly-shaped profiles. I have found that the profiles seem to cluster the cleanest when ...
1
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1answer
211 views

What is a good way to test a simple Recurrent Neural Network

I have coded up a simple real-value regression RNN in theano. What kind of dataset should I test it on? How should I go about testing it? My structure is: Univariate (for now) timeseries, ...
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2answers
163 views

Is validation set always necessary?

Lets say I did the following steps: Used some separate development set to select some features. Decided a priori to use only one learning algorithm (SVM) with only default parameter values. Trained ...
2
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0answers
73 views

Using simulated data to check when patterns in GLMM residual plots are acceptable

I have run the following Poisson GLMM: ...
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0answers
95 views

K-fold cross validation for a glmer model with nested data

I'm working on a data set that contains a hierarchical data structure (i.e., GPS locations nested within individual animals). I'm using a generalized linear mixed effects modeling procedure (lme4 ...
2
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1answer
454 views

How do you use test data set after Cross-validation

In some lectures and tutorials they suggest to split your data in three parts: training, validation and test. But it is not clear how test data set should be used and how this approach is better than ...
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39 views

Clustering technique and validation for distance based on file compression

I have a distance matrix based on a normalized compression distance between files: $$ d(x, y) = \frac{ C(xy) - \min \{ C(x), C(y) \} } {\max \{ C(x), C(y) \}} $$ Here, $C(xy)$ is the concatenation ...