Files
004_comission/Man1130/task1/Man1130-python-comission/slides/slides.md
louiscklaw fc6f79b133 update,
2025-01-31 20:57:47 +08:00

224 lines
5.7 KiB
Markdown
Raw Blame History

This file contains ambiguous Unicode characters

This file contains Unicode characters that might be confused with other characters. If you think that this is intentional, you can safely ignore this warning. Use the Escape button to reveal them.

---
marp: true
title: Marp CLI example
description: Hosting Marp slide deck on the web
theme: uncover
paginate: true
_paginate: false
backgroundImage: url('https://www.google.com/url?sa=i&url=https%3A%2F%2Fcommons.wikimedia.org%2Fwiki%2FFile%3AHelloWorld.svg&psig=AOvVaw0d3lmyaMphPi0ANeGIEJOw&ust=1670049479380000&source=images&cd=vfe&ved=0CBAQjRxqFwoTCJjxx6Gp2vsCFQAAAAAdAAAAABAE')
footer: '2022 project presentation'
style: |
section {
background-color: #ccc;
padding: 0 10vw;
}
footer {
text-align: center;
}
---
<!-- lead-invert-red -->
### **slide topic?**
##### overview of the dataset
- Male and Female proportion
- male by age
- female by age
- The types of chest pain experienced among the patients
- pie chart
- showing the correlation between
chest pain and target Confusion Matrix ?
<!-- HTML comment recognizes as a presenter note per pages. -->
<!-- You may place multiple comments in a single page. -->
<!--
Also supports multiline.
We bet these comments would help your presentation...
-->
---
<!-- lead-invert-red -->
### **Decision Tree**
##### overview of the dataset
- Decision Tree 果張圖
- Performance Analysis
- confusion matrix
- ROC
<!-- HTML comment recognizes as a presenter note per pages. -->
<!-- You may place multiple comments in a single page. -->
<!--
Also supports multiline.
We bet these comments would help your presentation...
-->
---
<!-- lead-invert-red -->
### **Naive Bayes**
##### overview of the dataset
- Naive Bayes 果張圖
- Performance Analysis
- confusion matrix
- ROC
<!-- HTML comment recognizes as a presenter note per pages. -->
<!-- You may place multiple comments in a single page. -->
<!--
Also supports multiline.
We bet these comments would help your presentation...
-->
---
<!-- lead-invert-red -->
### **Logistic Regression**
##### overview of the dataset
- Logistic Regression 果張圖
<!-- HTML comment recognizes as a presenter note per pages. -->
<!-- You may place multiple comments in a single page. -->
<!--
Also supports multiline.
We bet these comments would help your presentation...
-->
---
### **Performance Analysis**
- Performance Analysis
- confusion matrix
- ROC
<!-- HTML comment recognizes as a presenter note per pages. -->
<!-- You may place multiple comments in a single page. -->
<!--
Also supports multiline.
We bet these comments would help your presentation...
-->
---
### **Performance Analysis con't**
- pick a sample, bayes modeling:
- naive_bayes_scramble.ipynb
- column selection
- compare column vs accurancy
- the performance/accurancy of fewer column MAY BE better than more column
- possible cause
- column noise/ input data accurancy ?
- modal overfitting ?
- extreme case ?
<!-- - Q: Evaluation -->
---
### **Performance Analysis con't**
- how to improve ?
- the choice of the columns may be better if other facuity involved.
- more labelled data improves accuracy
---
### **Performance Analysis con't**
- disclaimer ?
- no model can introduce 100% accurancy
- why ?
- extreme case
- chaos theory ?
- will never take all ~~ervery~~ matters into account
- however, the model can be considered if accuracy above nn% in general
<!-- Q:Whats the problem you are trying to solve -->
<!-- - Hows your program solve the problem -->
<!-- - Demonstrate how your program work/ Go through the data analysis -->
<!-- - What are the interesting libraries that you used? -->
<!-- - Any complex logic in your project that you want to show off -->
<!-- - Any other interesting thing -->
<!-- - Its not a must for you to show your code in presentation. -->
<!-- - Do that if you think that help you to explain things -->
<!-- - We dont need everyone to speak. The whole group share the same score. -->
<!-- - Evaluation -->
<!-- - Good presentation flow, Clarity of your points, Pace of your presentation -->
---
### **why these method ?**
- [x]unsupervised modeling
- cross out reason
- data is already labelled
- data is small amount and discrete
- [x] Knn
- [x] Kmeans
<!-- ref: https://www.ibm.com/cloud/blog/supervised-vs-unsupervised-learning -->
---
### **why these method ?**
- supervised modeling / supervised learning
- data is already labelled
- []Decision Tree
- []Naive Bayes
- performance ? accuracy ? ROI ?
- [x]multi dimensional/column difficult to understand/maintain
- [x]Logistic Regression
- [x]SVM
<!-- ref: https://www.ibm.com/cloud/blog/supervised-vs-unsupervised-learning -->
---
### notes only
<!-- Q: Whats the problem you are trying to solve -->
<!-- Q: Hows your program solve the problem -->
<!-- A: to predict humans heart disease possiblilies by modelling -->
<!-- Q: Demonstrate how your program work/ Go through the data analysis -->
<!-- 可能你要捉一捉佢路, if i were you, i won't go through the data analysis, -->
<!-- because the sample steps every one can google e.g. data cleaning, training model, performance analysis, not the main point -->
<!-- Q: What are the interesting libraries that you used? -->
<!-- Q: Any complex logic in your project that you want to show off -->
<!-- Q: Any other interesting thing -->
<!-- bayes scrambling can help -->
<!-- Q: Evaluation -->
<!-- Performance Analysis ? -->
<!-- X -->
<!-- Q: Its not a must for you to show your code in presentation. -->
<!-- - ? Do that if you think that help you to explain things -->
<!-- Q: We dont need everyone to speak. The whole group share the same score. -->
<!-- Q: Good presentation flow, Clarity of your points, Pace of your presentation -->