Nick Stugard
Nick Stugard
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What is Statistics? - Sampling and Bias
In this video we discuss how in statistics we want to describe a population, but we only have a sample. We talk about how this can go wrong and ways to prevent it going wrong, although we can never be perfectly confident.
zhlédnutí: 50

Video

What is Statistics? - Variables and Data Collection
zhlédnutí 88Před 3 měsíci
What is Statistics? - Variables and Data Collection
Welcome to Online Stats at CT State
zhlédnutí 151Před 3 měsíci
Welcome to Online Stats at CT State
DS Lab 9 Jobs In Data with Sampling Distributions
zhlédnutí 63Před 5 měsíci
DS Lab 9 Jobs In Data with Sampling Distributions
9.2 DS - Simulations and Randomness in R
zhlédnutí 50Před 6 měsíci
9.2 DS - Simulations and Randomness in R
9.1 DS - Sampling
zhlédnutí 33Před 6 měsíci
9.1 DS - Sampling
Limit Examples
zhlédnutí 119Před 7 měsíci
This video reviews a five different limit examples
Limit Laws and Theorems
zhlédnutí 88Před 7 měsíci
In this video, we learn the basic limit laws and rules as well as investigate the Squeeze Theorem
Infinite Limits
zhlédnutí 59Před 7 měsíci
What happens at vertical asymptotes?
Investigating Limits with Technology
zhlédnutí 67Před 7 měsíci
How can we use a TI-83/84 calculator to evaluate functions to help us determine limits
Divergence and Curl
zhlédnutí 103Před 10 měsíci
This video talks about the concepts, procedures, and applications of divergence and curl
Statistics - Chapter 10: Hypothesis Testing Examples
zhlédnutí 229Před 11 měsíci
Statistics - Chapter 10: Hypothesis Testing Examples
Statistics - Chapter 10: Hypothesis Testing Concepts
zhlédnutí 244Před 11 měsíci
Statistics - Chapter 10: Hypothesis Testing Concepts
Describing Regions in 2D
zhlédnutí 36Před 11 měsíci
In this video, we talk about how we set up regions for our double integrals
More Matrix Multiplication - Identities and Inverses
zhlédnutí 37Před rokem
In this video I describe what identities and inverses are. I also show how to use these concepts to solve other types of problems.
Statistics: Chapter 8 - Sampling Distributions
zhlédnutí 885Před rokem
Statistics: Chapter 8 - Sampling Distributions
DS - Merging Dataframes in R
zhlédnutí 43Před rokem
DS - Merging Dataframes in R
Integrating Rational Expressions
zhlédnutí 55Před rokem
Integrating Rational Expressions
ML 14 - Convolutional Neural Networks Explained
zhlédnutí 117Před rokem
ML 14 - Convolutional Neural Networks Explained
Creating a Convolutional Neural Network with Tensorflow
zhlédnutí 311Před rokem
Creating a Convolutional Neural Network with Tensorflow
SVMs in Python
zhlédnutí 698Před rokem
SVMs in Python
ML 12.1 - Support Vector Machines
zhlédnutí 81Před rokem
ML 12.1 - Support Vector Machines
ML 11.2 - Image Convolution in Python
zhlédnutí 683Před rokem
ML 11.2 - Image Convolution in Python
ML 11.1 - Kernels in Image Convolution
zhlédnutí 73Před rokem
ML 11.1 - Kernels in Image Convolution
Polynomial Regression in Python
zhlédnutí 373Před rokem
Polynomial Regression in Python
Hyperplane in Python
zhlédnutí 1,2KPřed rokem
Hyperplane in Python
Linear Regression in Python
zhlédnutí 151Před rokem
Linear Regression in Python
k nearest neighbor in Python
zhlédnutí 1,7KPřed rokem
k nearest neighbor in Python
ML 9.3 - k means
zhlédnutí 65Před rokem
ML 9.3 - k means
ML 9.2 - k nearest neighbor
zhlédnutí 115Před rokem
ML 9.2 - k nearest neighbor

Komentáře

  • @Rafs_kun
    @Rafs_kun Před 26 dny

    Awesome Video Learned a lot

  • @rahilnecefov2018
    @rahilnecefov2018 Před 3 měsíci

    that was just awesome, love you from Azerbaijan Baku <3

  • @kanuemma9387
    @kanuemma9387 Před 3 měsíci

    Legend

  • @FORCP-bq5fo
    @FORCP-bq5fo Před 3 měsíci

    Such a simple and greatly explained video. Thanks man

  • @Diniyaaaaaa
    @Diniyaaaaaa Před 5 měsíci

    Can u please provide the code 🙂🙂🙂🙂

  • @dm-hn2wt
    @dm-hn2wt Před 5 měsíci

    Hoe to deploy this plsss

  • @karthickm7906
    @karthickm7906 Před 5 měsíci

    Can you provide github project link containing full source code

  • @wolfemaxwell
    @wolfemaxwell Před 5 měsíci

    Very interesting! Good recommendations.

  • @Kalyan1143
    @Kalyan1143 Před 6 měsíci

    Will you provide github project link For full souce code

  • @mrunalwaghmare
    @mrunalwaghmare Před 6 měsíci

    hey there nice explanation Thanks a lot ! nicely explained and easy to understand wish we had professors like you in our college <3

  • @james17g
    @james17g Před 6 měsíci

    very awesome video and demonstration! Insane to me how this works. one of those things as CS student that gets me excited!

  • @TheMatyw
    @TheMatyw Před 7 měsíci

    jesus christ, talking about niche videos, tysm for this video!!!

  • @juancarlossanchezveana1812
    @juancarlossanchezveana1812 Před 7 měsíci

    Excellent

  • @tatuldanielyan9943
    @tatuldanielyan9943 Před 7 měsíci

    This is naive video, i understood whole concept in just 30 minutes. Thank you.

  • @purvisingh235
    @purvisingh235 Před 7 měsíci

    is this realated with cloud coumputing or general mails??/

    • @nickstugard9062
      @nickstugard9062 Před 7 měsíci

      This video details the algorithm we can use for classifying any text/string and is very general. But it is only a binomial classification with the only options being 'spam' or 'not spam.' This can be implemented inside of another program that inputs text/strings into this model we've built. Which means it could be implemented in a cloud computer setting or just for general emails.

  • @user-iq4bf7oc1m
    @user-iq4bf7oc1m Před 9 měsíci

    Thank you man!

  • @anshugupta2340
    @anshugupta2340 Před 10 měsíci

    Awesome !!

  • @bart5557
    @bart5557 Před 11 měsíci

    It's not a bad project like this. To see the data loading and preparations step lined out is very nice. But I came here to learn about Naive Bayes and how those calculations work, and all I got was MultinomialNB().

  • @andreeafilip9221
    @andreeafilip9221 Před rokem

    Hi, thanks a lot for the video. It is very informative and very well explained. I have a curiosity, where did you get the email database from? Thank you in advance.

  • @quang5033
    @quang5033 Před rokem

    thank you, i can learn a lot from you

  • @Ewakaa
    @Ewakaa Před rokem

    So I have gone through your entire videos And trust me as an engineering student you have awesome videos. But if you can focus your teaching with project based then you will have a lot of views Example the videos your have on linear regression, support vector machine and the rest But this is amazing Thanks so much

    • @nickstugard9062
      @nickstugard9062 Před rokem

      Thank you so much for the kind words and feedback. I'll have to make a new project video soon. Do you have any requests about a type of project I should do a video about in the future?

  • @uploadideaswithitamar

    Hi there. Good video. Please, what screen record did you use ?

  • @stupenrio2498
    @stupenrio2498 Před rokem

    Thank you for making this video 😊

  • @kingrodeski343
    @kingrodeski343 Před rokem

    Great video mate, you stand out

  • @shahriaralom4547
    @shahriaralom4547 Před rokem

    please can you provide the link of written script

  • @shahriaralom4547
    @shahriaralom4547 Před rokem

    Thank you so much sir ☺️

  • @youssraben7789
    @youssraben7789 Před rokem

    why when i upload the dataset make this eroor Error tokenizing data. C error: Expected 2 fields in line 13, saw 4

  • @isaacp8073
    @isaacp8073 Před rokem

    Please can you link the dataset you used. Really good video btw. Very well explained.

    • @nickstugard9062
      @nickstugard9062 Před rokem

      Sorry for the delay. You can find the dataset I used in the description or here: github.com/NStugard/Intro-to-Machine-Learning/blob/main/spam.csv You can save it to your local machine by right-clicking the button that says "Raw," then "Save link as," then saving it as "spam.csv"

    • @nickstugard9062
      @nickstugard9062 Před rokem

      And thank you for the kind words

    • @isaacp8073
      @isaacp8073 Před rokem

      No problem at all. Thank you very much

  • @livingstonjeeva2219

    Nicely explained... thanks

  • @heprilesmono8908
    @heprilesmono8908 Před rokem

    thanks, very good. What if there is new data outside the dataset, can it be detected? How to?

  • @thandobrilliant8639

    This was exactly what i needed

  • @jimmypk1353
    @jimmypk1353 Před 2 lety

    Highly underrated video. This channel is an undiscovered GEM!

  • @cedricvillani8502
    @cedricvillani8502 Před 2 lety

    🤔 What

  • @armankisku4661
    @armankisku4661 Před 2 lety

    waiting for more...😄

  • @matthewgeary1811
    @matthewgeary1811 Před 2 lety

    17:49 why is this cross product not the zero vector

    • @nickstugard9062
      @nickstugard9062 Před 2 lety

      When you do the minor matrix determinants, only the k-hat component will be zero.

  • @IanSkelskey
    @IanSkelskey Před 3 lety

    I'm sold. Looks like I'm not done with Tunxis yet. lol

  • @AceHardy
    @AceHardy Před 4 lety

    ✍️

  • @AdmiralSym
    @AdmiralSym Před 4 lety

    ow my brain

  • @badcat6767
    @badcat6767 Před 4 lety

    first

  • @AdmiralSym
    @AdmiralSym Před 4 lety

    first

  • @AdmiralSym
    @AdmiralSym Před 4 lety

    first

  • @HosRo4161
    @HosRo4161 Před 4 lety

    Thank you. Excellent!

  • @M3dU5aXX_Ray_Tierney
    @M3dU5aXX_Ray_Tierney Před 4 lety

    Thank you Professor Stugard!Great resources ! Much appreciated