Feedback refers to information that is provided to a machine learning system or model after it has made a prediction or decision. Feedback is used to improve model performance by correcting errors and updating model parameters accordingly.
Feedback can be positive or negative, and can be provided in a supervised or unsupervised manner. In supervised learning, feedback is provided in the form of training labels that are used to adjust the model. In unsupervised learning, feedback is provided through comparison of model predictions with real-world observations.
Feedback is important in machine learning because it allows models to adapt and improve over time. Without feedback, models may stagnate at sub-optimal solutions and not be able to learn effectively from new data. In addition, feedback is also important for the evaluation of model performance, as it allows the comparison of model predictions with actual observations and the identification of possible errors or inconsistencies.
The commercial optimization software based on artificial intelligence must have feedback of the commercial actions carried out, of the nu [...]
Read More »Machine learning is a branch of artificial intelligence (AI) that is based on making a system capable of learning from the information it receives.
Read More »Artificial intelligence (AI) can change the way sales channels and customers are managed for manufacturers and distributors of consumer products, and can [...]
Read More »Nowadays digital transformation is key in any type of business. The 40% of Spanish companies will not exist in its current form in the next few [...]
Read More »