Questions tagged [intuition]

Questions that seek a conceptual or non-mathematical understanding of statistics.

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Intuitive explanation of conformal prediction

I have recently started learning about conformal prediction. I am a programmer without a strong mathematical background, but with a strong intuitive, applied background in statistics. I am trying to ...
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0 answers
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What does the quality of representation of a variable mean in PCA?

I understand that the quality of representation of an individual by a certain axis is measured by the cosine of the angle between the axis and the individual; the more the vector representing the ...
2 votes
0 answers
39 views

Intuition behind rank of covariance matrix and testing hypotheses

I am trying to acquire some intuition about testing multivariate hypotheses where the test statistic involves inverse covariance matrix. As an example, suppose we have a $p$-variate random vector that ...
3 votes
0 answers
40 views

Geometric intuition for how ridge ($L_2$) regularization helps under multicollinearity

We have some nice posts (1, 2 and likely more) illustrating multicollinearity geometrically. Now, ridge regression ($L_2$ regularization) is known to be a remedy of multicollinearity. What is the ...
2 votes
0 answers
60 views

Understanding intuitive difference between KL divergence and Cross entropy

I know there are related questions already asked, for example this one. I also know the following: KL divergence $D_{KL}(P\Vert Q)$ is given as: $$\begin{align} D_{KL}(P\Vert Q) & = -\sum_xP(x)\...
0 votes
1 answer
46 views

Real-World Example of Correlation of Random Variables

I'm encountering a result in research that is counter-intuitive to me. Specifically, I have two matrics, $X, Y$, where $X_i$ is the ith column of matrix $X$. In my research: $\Large{\rho}$$ (\sum X_i, ...
2 votes
1 answer
82 views

Can you explain bootstrapping like I’m 5?

I think I have a handle on what bootstrapping is and why we need to use it. Please confirm if my understanding is correct: Goal of bootstrapping: To find the SE of a feature’s coefficient that you ...
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1 vote
0 answers
107 views

Concrete example of what Sufficient Statistics is [closed]

Having read articles to try to understand Sufficient Statistics. Sufficient statistics for layman A sufficient statistic summarizes all the information contained in a sample so that you would make ...
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0 votes
0 answers
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Intuitive statistics book [duplicate]

I am looking for a statistics book that not only gives formulas or proofs but also gives intuitive explanations. For example, the standard deviation is defined by ${\sigma_x} = \sqrt{\frac{1}{n}{\sum\...
5 votes
2 answers
748 views

Is variance the area under the curve of the distribution of a population?

I am trying to understand what variance is, I already know the "official" definition "Variance is the average squared deviations from the mean" But I am trying to give it a visual ...
0 votes
0 answers
71 views

Interpretation of AUC as probability of a random positive being ranked more highly than a random negative [duplicate]

In this article from Google they claim that One way of interpreting AUC is as the probability that the model ranks a random positive example more highly than a random negative example. along with an ...
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3 votes
1 answer
99 views

Difference between likelihood functions for pmf vs pdf

Can someone explain the intuition behind how the likelihood function for a specific value of $\theta$ is different if $f_\theta$ is a pmf vs a pdf? I thought that it was simply the probability that a ...
0 votes
0 answers
73 views

Is there a meaningful difference between a change described as a percentage increase one way versus a percentage decrease the other way?

When describing a change in value between two scenarios (A and B) I see two options: (1) report the percent increase/decrease from A to B, or (2) report the percent decrease/increase from B to A. ...
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1 vote
0 answers
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How to connect the intuitions to the math of adaptive processes?

Formal Definition Wikipedia gives the following definition of a process adapted to a filtration: Let $(\Omega, \mathcal{F}, \mathbb{P})$ be a probability space; $I$ be an index set with total order $\...
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3 votes
0 answers
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Is there an outer product counterpart for the Covariance?

Covariance The covariance of two quantities $X$ and $Y$ within a population, $Cov(X,Y)$, is symmetric and bilinear. It is also true that $Cov(X,X) \ge 0$. So, clearly $Cov(X,Y)$ qualifies as an inner ...
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1 vote
1 answer
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Linear models when responses have no link

I am studying normal linear regression and wanted to ask a question about its utility when working with independent RV. Suppose that we have for $k \in [1,\dots,n]$, $$Y_k = \beta_0 + \beta_1x_{k1} + \...
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1 vote
0 answers
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Interpretation of covariance and linear dependency [duplicate]

What is the best interpretation of covariance you can give ? I know that if $X$ and $Y$ are random variables, then if $Cov(X,Y)>0$, then if realizations of $X$ are higher than expected, then ...
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2 votes
1 answer
73 views

Mean of geometric distribution is odds?

Context: I mean the $P(X=k)=(1-p)^k p$ not the $P(Y=k)=(1-p)^{k-1} p$. Apparently the mean of the 1st kind of geometric is $\frac{1-p}{p}$ instead of $\frac{1}{p}$ for the 2nd kind of geometric. I ...
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2 votes
1 answer
65 views

What does conditional independence mean semantically?

I've just spent the last 3 hours reading every post, question, Medium article, and textbook entry on conditional independence, and I still don't really understand it. Can somebody explain what it ...
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37 views

Naive Bayes fits multiple hyperplanes in the case of multiclass classification problems?

Naive Bayes differentiates feature distributions given target labels, and intuitively, it fits a hyperplane to the given data set. But I do not fully understand whether Naive Bayes fits multiple ...
0 votes
0 answers
131 views

What exactly does the Box-Cox transformation do to a time series?

If I were to try and rephrase the argument in the original Box-Cox paper in my own words, I would say something like the following: given a model $$ y = x \beta , $$ if the residuals do not appear to ...
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2 votes
1 answer
65 views

Why do we need a smaller sample size to detect a smaller proportion?

The plot below shows the sample size needed to detect a proportion with a precision 0.01 for various true proportions: This assumes an infinite population size, and the confidence intervals are fixed ...
1 vote
0 answers
180 views

Why PCA is invariant under rotation

Lets say that we have a matrix of variables (the columns are variables and rows are the observations) called X whenre X = [x1, x2, ...., xp] where ...
1 vote
0 answers
36 views

Does the number of samples, as opposed to the sample size in each sample, matter for the Central Limit Theorem? [closed]

(1)So here is a formula that describes CLT I found at https://en.wikipedia.org/wiki/Central_limit_theorem. According to the first part of the explanation, n as in Xn describes the number of samples(i....
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1 vote
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Why is my intuition about probability in this regard so flawed? [closed]

Take the following example: Take a sample from 100 people and measure their height. Assume that we know that height is approximately normally distributed, with a sample mean of 175 cm and sample ...
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12 votes
5 answers
2k views

What's complicated about regression to the mean?

Note: I am a bit of a novice when it comes to statistics and data analysis. Reading the chapter on regression to the mean in Kahneman's Thinking Fast and Slow, I came across the following passage: ...
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2 votes
0 answers
62 views

Intuition behind log in kl distance

So, let's start stating that I already read both Why KL-Divergence uses "ln" in its formula? and What is the role of the logarithm in Shannon's entropy? ... However, I still have no ...
1 vote
0 answers
132 views

Intuition about the relation between joint distribution, marginal distribution, and conditional distribution

The wording "intuition" might be a bit imprecise. I want to discuss how we visualize in our head going from one to another among the joint PDF, marginal PDF, and conditional PDF. To make the ...
12 votes
5 answers
2k views

Is the exact value of any likelihood meaningless?

While reading about likelihood, I have heard that "the exact value of any likelihood is meaningless" why? So, because of that we may use the likelihood ratio. So, my question is, why the ...
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3 votes
1 answer
86 views

What is the intuition behind the odds scale?

What is an intuitive explanation of the odds scale? In a logistic regression such as $$logit(p) = \beta_0 + \beta_1 x$$ we often interpret $\beta_1$ by looking at the odds ratio, $e^{\beta_1}$, which ...
1 vote
1 answer
159 views

MLE of the Uniform Distribution

In a uniform distribution where $0\leq X \leq \theta$, the pdf is represented as $f(X|\theta) = \frac{1}{\theta}I(0\leq X \leq \theta)$, and the likelihood is $L(\theta) = \prod\frac{1}{\theta}I(0\leq ...
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4 votes
2 answers
474 views

Intuition for why mean of lognormal distribution depends on variance of normally distributed rv

Let $X\sim\mathcal{N}(\mu,\sigma^2)$, which is a normal distribution. Then, $\text{exp}(X)\sim\text{Lognormal}(\mu,\sigma^2)$, and its mean is $$ \mathbb{E}[\text{exp}(X)]=\text{exp}\left(\mu+\dfrac{\...
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0 votes
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28 views

Intuitive effect size (and CI) for one-way comparison of group means?

I'm a big fan of common language effect sizes (e.g. McGraw and Wong's CL or Cohen's U3 - "what proportion of group 1 are higher than the average for group 2"). I've been scrabbling around ...
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1 vote
2 answers
96 views

In a diff-in-diff or regression discontinuity research design, why is it important to describe why the counterfactual is a plausible one?

I've heard it mentioned that in difference-in-differences, regression discontinuity, or even in some other quasi-experimental research designs, that the counterfactual should be explained as a ...
3 votes
1 answer
226 views

Why is each observation in a sample considered a random variable in linear regression?

I have the following excerpt in my statistics textbook: I am confused by the sentence: "Another way statisticians treat this model is that, assume $X_1...X_n$ are random variables, we make ...
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2 votes
2 answers
198 views

Why does $\underset{\theta}{\arg\max }p_{\text{model}}(X;{\theta}) =\underset{\theta}{\arg\max} \prod_{i=1}^{m}p_{\text{model}}({x}^{(i)} ;\theta)$?

We have seen some definitions of common estimators and analyzed their properties. But where did these estimators come from? Rather than guessing that some function might make a good estimator and then ...
1 vote
0 answers
107 views

Intuition for bandwidth and degrees of freedom in kernel smoothers

For Kernel smoothers such as local polynomial regression smoothers (the Nadaraya-Watson smoother), we consider $y = m(x) + \epsilon$, for $m(x)$ some smooth function we are trying to estimate and $\...
0 votes
0 answers
106 views

Can you explain LINEAR in BLUE?

I have hard time understanding the LINEAR part. Found something like this: Linear property of OLS estimator means that OLS belongs to that class of estimators, which are linear in Y, the dependent ...
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0 votes
2 answers
59 views

Estimated vs. true expected value in $\chi^2$ test of independence of two categorical variables

Consider a $\chi^2$ test of independence of two categorical variables. In the test statistic, we have elements of the form $$ \frac{(\text{observed}_i-\text{expected}_i)^2}{\text{expected}_i}, $$ or $\...
1 vote
0 answers
25 views

Intuition Maximum likelihood [duplicate]

Can someone describe in simple words what the Intuition behind maximum likelihood estimation is and why it is so commonly used in statistics? Certainly, there are many other ways to estimate ...
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24 votes
7 answers
3k views

Explain in layperson's terms why predictive models aren't causally interpretable

Imagine that you are asked to infer some causal effect -- a change in an outcome $y$ in response to some variable $x$. But, the person asking for this directs you to use a predictive model to do so. ...
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1 vote
1 answer
121 views

Two basic questions about icp (iterative closest point) algorithm

I am trying to learn shape analysis and a part is learning icp. I have many confusions but for now I have two basic questions: Does the point clouds need to have the same number of points for icp? ...
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0 votes
2 answers
335 views

In permutation test, why do we take the proportion of sampled permutations with value equal or larger than the observed value?

The tutorial I followed explains permutation testing in an intuitive way. However, it has confused me in one specific part. Why do we take as p-value the proportion/probability of permutation with ...
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0 votes
0 answers
23 views

Intuition underyling kinds of time series that are typically additive or typically multiplicative with examples

What is the intuition underyling the kinds of time series that are typically additive or typically multiplicative? From what I understand, additive time series are such that variations on the trend ...
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3 votes
0 answers
181 views

Why do we try to "Reproduce" Hilbert Spaces in Statistics?

I am trying to better understand why people are interested in "reproducing" Hilbert Spaces in Statistics and Machine Learning. I (think) understand the general idea behind Hilbert Spaces. ...
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1 vote
1 answer
134 views

Practical consequences of wrong interpretation of confidence intervals

Can you give me a simple (but preferably common) example (or R/Python simulation) of what are practical consequences of wrong interpretation of frequentist confidence intervals? Especially when they ...
11 votes
4 answers
2k views

What is an intuitive interpretation for the softmax transformation?

A recent question on this site asked about the intuition of softmax regression. This has inspired me to ask a corresponding question about the intuitive meaning of the softmax transformation itself. ...
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1 vote
1 answer
70 views

Pairwise deletion and non-positive definite sample covariance matrix

So I have read that using pairwise deletion can lead to a non-positive definite matrix. However, I tried to find a source which showed this mathematically. Can someone point me to that? My intuition ...
4 votes
1 answer
352 views

Intuition for Wilks' theorem

I'm trying to wrap my head around why it is intuitive that (under certain conditions) the likelihood ratio statistic follows a chi-squared distribution, asymptotically. I've looked at the excellent ...
0 votes
0 answers
29 views

Different way to do PCA: overall comparison

Given a dataset PCA can be performed via 3 ways: Eigenvalue decomposition Singular value decomposition Non-linear iterative partial least-squares algorithm Can anyone shed light on comparative study ...

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