Active Learning Machine Learning
Active Learning Machine Learning
Active learning is a case of machine learning where a model can query a user or some other type of information system to obtain the desired outputs at new data points. In other words, in active learning, the learning algorithm can actively choose which examples it wants to learn from.
The goal of active learning is to minimize the number of labeled instances needed to learn a good classifier, as labeling instances can be expensive or time-consuming. The model tries to select the most informative samples to learn from, rather than using a randomly selected set of labeled samples.
There are several strategies in active learning, such as uncertainty sampling, query-by-committee, and expected model change. These techniques focus on selecting samples for which the model is most uncertain, has the highest disagreement among multiple models, or is expected to change the current model the most, respectively.
Active learning has applications in various fields where labeled data are scarce or expensive to obtain, such as medical imaging, text classification, and more. It can significantly reduce the amount of data needed to train a model, making it a valuable approach in many scenarios.
Machine Learning Training Demo Day 1
Conclusion:
Unogeeks is the No.1 Training Institute for Machine Learning. Anyone Disagree? Please drop in a comment
Please check our Machine Learning Training Details here Machine Learning Training
You can check out our other latest blogs on Machine Learning in this Machine Learning Blogs
Follow & Connect with us:
———————————-
For Training inquiries:
Call/Whatsapp: +91 73960 33555
Mail us at: info@unogeeks.com
Our Website ➜ https://unogeeks.com
Follow us:
Instagram: https://www.instagram.com/unogeeks
Facebook: https://www.facebook.com/UnogeeksSoftwareTrainingInstitute
Twitter: https://twitter.com/unogeeks