Title: Difference Between Supervised and Unsupervised Learning
1Difference Between Supervised and Unsupervised
Learning
2Introduction
It is important to know the difference between
supervised and unsupervised learning when youre
receiving your financial modeling certification.
Depending on the type of situation at hand,
these two crucial approacheswhich serve
different purposesare utilized to evaluate and
extract insights from data.
3(No Transcript)
4Supervised Learning
Training a model on labeled data with specified
input data (features) and corresponding output
(labels or goal variable) is known as supervised
learning. You will learn more about it thoroughly
during your financial modeling training course
online. To accurately forecast the output for
fresh, unseen data, the model must learn the
mapping function from the input to the output.
5Key Characteristics
- Labeled Data Examples of both the input and the
intended output are included in the training
dataset. - Training Process By modifying its parameters to
reduce the error between expected and actual
outputs, the model learns from the labeled data. - Types of Tasks Regression (predicting continuous
variables) and classification (predicting
categories) are frequent tasks. - Examples Spam email identification,
feature-based housing price prediction, and
picture classification (e.g., object recognition
in photographs).
6Advantages and Disadvantages
- Advantages
- Clearly defined goal with well-known output
labels. - Capacity to use labeled test data to quantify and
validate model performance. - Disadvantages
- Needs a lot of labeled data in order to be
trained. - If there are flaws or noise in the labeled data,
it might not function properly.
7Unsupervised Learning
- In unsupervised learning, a model is trained on
unlabeled data, and instead of having a specific
output variable to predict, the program looks for
patterns or hidden structures in the input data.
The objective is to examine the data and identify
underlying patterns or clusters that can shed
light on the underlying structure of the data.
You will learn more about the same during your
financial modeling training course online.Key
Characteristics - Unlabeled Data There are no target variables or
predetermined output labels in the training
dataset. - Training Process By comparing and contrasting
data points, the model finds patterns or clusters
in the data. - Types of Tasks Typical tasks include association
(determining connections between variables),
anomaly detection (spotting odd patterns), and
clustering (assembling comparable data points). - Examples Examples include market basket analysis
(e.g., product recommendations based on
purchasing history), customer segmentation, and
fraud detection.
8Advantages and Disadvantages
- Advantages
- May reveal hidden structures and patterns in
data. - Beneficial for comprehending data linkages and
conducting exploratory data analysis. - Disadvantages
- Since there is no labeled data, there are no
objective evaluation metrics available. - Results interpretation can be arbitrary and call
for subject-matter expertise.
9Key Differences Summarized
- Data Type Labeled data is used in supervised
learning, whereas unlabeled data is used in
unsupervised learning. - Objective The goal of unsupervised learning is
to find hidden patterns or groups, whereas the
goal of supervised learning is to predict output
labels or values. - Evaluation While the assessment of unsupervised
learning models is more arbitrary and
context-dependent, that of supervised learning
models may be done objectively using metrics like
accuracy or mean squared error.
In conclusion, the decision between supervised
and unsupervised learning is based on the
particular problem that needs to be handled as
well as the characteristics of the data. While
unsupervised learning is useful for investigating
and comprehending complicated data structures
without predetermined results, supervised
learning is appropriate when there is a clear
objective with labeled data. These approaches are
essential to machine learning applications,
advancing a number of industries including
marketing, finance, and healthcare.If you want
to learn more about supervised and unsupervised
learning, you should enroll in a financial
modeling training course online.
10Slide End Resource
- Resource https//www.mindcypress.com/blogs/fina
nce-accounting/difference-between-supervised-and-u
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