100% satisfaction guarantee Immediately available after payment Both online and in PDF No strings attached 4.2 TrustPilot
logo-home
Summary

Summary Deep Learning summarization files of howest - creative technologies & ai

Rating
-
Sold
-
Pages
10
Uploaded on
16-12-2025
Written in
2024/2025

Deep Learning summarization files of howest - creative technologies & ai

Institution
Course









Whoops! We can’t load your doc right now. Try again or contact support.

Written for

Institution
Study
Course

Document information

Uploaded on
December 16, 2025
Number of pages
10
Written in
2024/2025
Type
Summary

Subjects

Content preview

Deep Learning – session 1: Neural
networks
1 Introduction to deep learning
Deep learning A form of machine learning that uses multilayer neural
networks (deep neural networks) to learn complex patterns
in large amounts of data.
When deep learning? Powerful for dealing with unstructured data (can be
applied to structured data), it will find patterns in this data,
where the human won’t see anything
Scalable as a function of the amount of training data.
the more examples you give the better the model gets.
traditionial machine learning:
 Here you need humans to manually
extract features from raw data,
these features represent relevant
patterns or characteristics used to
classify the data
 Here it is labor-intensive and it depends
on human intuition
Deep Learning (CNN-based):
 End-to-end learning: CNN perform automatic feature extraction and classification
in 1 step
 No manual feature extraction, allowing more accurate and scalable analysis,
especially with complext data like images

2 The artificial neural network
Neural networks are inspired about how the brain works. In the brain
between neurons there is a switch between electrical-chemical-
electrical: if a few transmitters are sent it will not get to the other
neuron, it can choose to block the signal. It can also be modeled as a
network of logistic regression units.
green block = perception (=artificial neuron)
here 3 inputs with each a different weight, this is
how the neuron assigns the importance of the
input. With this info you can solve the summing
function, after this you will implement the
outcome in the activation function to get a
percentage of the probability, this will be the
output automatically.


2.1 Logistic regression – recap
The model hw(x) needs to comply with the constraint:

,  hw(x) = estimated probability that y=1 with input x
 Ex: hw(x) =0.80 => model is 80% confident that the sample belongs to class 1
(in service)




Logistic regression vs neural networks (in case of non-linearly separable data):
 Use higher order features
 Neural networks make new representations of existing
features

2.2 Properties of a neural network
 Network architecture
You want the NN to
 Learning algorithm
adapt & generalize to
 Activation functions
the data
2.2.1Network architectures
properties:
 1 or more (hidden) layers
 Each neuron in a layer is connected to every
neuron in the next layer
$9.63
Get access to the full document:

100% satisfaction guarantee
Immediately available after payment
Both online and in PDF
No strings attached

Get to know the seller
Seller avatar
ellenflame

Also available in package deal

Get to know the seller

Seller avatar
ellenflame Hogeschool West-Vlaanderen
Follow You need to be logged in order to follow users or courses
Sold
New on Stuvia
Member since
2 days
Number of followers
0
Documents
6
Last sold
-

0.0

0 reviews

5
0
4
0
3
0
2
0
1
0

Why students choose Stuvia

Created by fellow students, verified by reviews

Quality you can trust: written by students who passed their tests and reviewed by others who've used these notes.

Didn't get what you expected? Choose another document

No worries! You can instantly pick a different document that better fits what you're looking for.

Pay as you like, start learning right away

No subscription, no commitments. Pay the way you're used to via credit card and download your PDF document instantly.

Student with book image

“Bought, downloaded, and aced it. It really can be that simple.”

Alisha Student

Frequently asked questions