Previous

Understanding Need of user’s vehicle and recommending appropriate electronic vehicle

Next

Scalable Analytics Platform for Machine Learning in Smart Production Systems

A Machine Learning Approach for Digital Addiction Pattern Analysis

The project is customizable and flexible to make small conceptual changes according to the requirements. In terms of algorithm and technology. The project support is available for Python technology. During this project work, we learn:

  1. Basic Python (used for implementation)
  2. Algorithm tutorials
  3. Implementation support (how to implement)
  4. performance analysis
  5. Documentation support (how to make project report)

Project Duration: 15 days

 

Description

The digital content and distribution channels are increasing day by day. Due to this, people are utilizing different digital devices to access digital information and other services. However, digital devices are utilized in many ways personal or professional use. But, in both conditions, excessive and extreme usage of digital devices is subject to mental and physical health. This misfunctioning of human behavior is sometimes also called Digital Addiction. In this project work, we learned about the excessive utilization of digital device issues by evaluating the device usage or device access log. First, a device access log is created by using an Android application. The access log consists of a time stamp, application name, and type of application (personal or professional). Next, the collected user behavior data is stored in a common database. The collected data is further preprocessed to transform the data into transaction sets. Finally, a frequent pattern analysis has been carried out to identify the frequently accessed applications, time of usage, and category of application,

Reviews

There are no reviews yet.

Be the first to review “A Machine Learning Approach for Digital Addiction Pattern Analysis”

Your email address will not be published. Required fields are marked *

Shopping cart

0
image/svg+xml

No products in the cart.

Continue Shopping