A Practical Approach to Timeseries Forecasting Using Python - Auto ARIMA in Python

Interactive Video
•
Computers
•
10th - 12th Grade
•
Hard
Wayground Content
FREE Resource
Read more
7 questions
Show all answers
1.
MULTIPLE CHOICE QUESTION
30 sec • 1 pt
What is the first step to use Auto ARIMA in your project?
Install PMD ARIMA using pip
Define the order of the model
Set the seasonal parameter to true
Run the model without any data
2.
MULTIPLE CHOICE QUESTION
30 sec • 1 pt
Which parameter in Auto ARIMA helps in logging the process?
trace
order
error_action
seasonal
3.
MULTIPLE CHOICE QUESTION
30 sec • 1 pt
What is the purpose of setting 'seasonal' to false in the Auto ARIMA model?
To increase the model's complexity
To enhance error handling
To ignore seasonal components
To include seasonal components
4.
MULTIPLE CHOICE QUESTION
30 sec • 1 pt
What is the significance of the 'order' parameter in the ARIMA model?
It determines the seasonal component
It specifies the data type
It defines the ARIMA model structure
It sets the error handling mechanism
5.
MULTIPLE CHOICE QUESTION
30 sec • 1 pt
How do you specify the start and end points for predictions in the ARIMA model?
Through the 'trace' parameter
By defining 'temp train' for both start and end
By setting 'dynamic' to true
Using the 'order' parameter
6.
MULTIPLE CHOICE QUESTION
30 sec • 1 pt
What is the main advantage of using Auto ARIMA over manual ARIMA?
It automatically determines the best model order
It always uses a seasonal component
It requires no data input
It eliminates the need for error handling
7.
MULTIPLE CHOICE QUESTION
30 sec • 1 pt
What does the plot of the ARIMA model results help you understand?
The installation process of PMD ARIMA
The error handling capabilities
The seasonal components included
The smoothness and fit of the model
Similar Resources on Wayground
8 questions
A Practical Approach to Timeseries Forecasting Using Python - ARIMA Implementation

Interactive video
•
10th - 12th Grade
2 questions
A Practical Approach to Timeseries Forecasting Using Python - Machine Learning Forecasting

Interactive video
•
11th - 12th Grade
4 questions
A Practical Approach to Timeseries Forecasting Using Python - Section Overview

Interactive video
•
10th - 12th Grade
6 questions
A Practical Approach to Timeseries Forecasting Using Python - Stages for Time Series Forecasting

Interactive video
•
10th - 12th Grade
2 questions
A Practical Approach to Timeseries Forecasting Using Python - Stages for Time Series Forecasting

Interactive video
•
10th - 12th Grade
8 questions
A Practical Approach to Timeseries Forecasting Using Python - Auto SARIMA in Python

Interactive video
•
10th - 12th Grade
3 questions
A Practical Approach to Timeseries Forecasting Using Python - Variations in SARIMA

Interactive video
•
11th - 12th Grade
6 questions
A Practical Approach to Timeseries Forecasting Using Python - ARIMA

Interactive video
•
11th Grade - University
Popular Resources on Wayground
12 questions
Unit Zero lesson 2 cafeteria

Lesson
•
9th - 12th Grade
10 questions
Nouns, nouns, nouns

Quiz
•
3rd Grade
10 questions
Lab Safety Procedures and Guidelines

Interactive video
•
6th - 10th Grade
25 questions
Multiplication Facts

Quiz
•
5th Grade
11 questions
All about me

Quiz
•
Professional Development
20 questions
Lab Safety and Equipment

Quiz
•
8th Grade
13 questions
25-26 Behavior Expectations Matrix

Quiz
•
9th - 12th Grade
10 questions
Exploring Digital Citizenship Essentials

Interactive video
•
6th - 10th Grade