Concept drift primarily refers to an online supervised learning scenario when the relation between the input data and the target variable changes over time. Assuming a general …
Most machine learning models are static, but the world is dynamic, and increasing online deployment of learned models gives increasing urgency to the development of efficient and …
The problem of concept drift has gained a lot of attention in recent years. This aspect is key in many domains exhibiting non-stationary as well as cyclic patterns and structural breaks …
Just-in-time (JIT) classifiers operate in evolving environments by classifying instances and reacting to concept drift. In stationary conditions, a JIT classifier improves its accuracy over …
This paper presents recurring concept drifts (RCD), a framework that offers an alternative approach to handle data streams that suffer from recurring concept drifts (on-line learning). It …
Dynamic real-world applications that generate data continuously have introduced new challenges for the machine learning community, since the concepts to be learned are likely …
K Athukorala, A Medlar, A Oulasvirta… - Proceedings of the 21st …, 2016 - dl.acm.org
We present a novel adaptation technique for search engines to better support information- seeking activities that include both lookup and exploratory tasks. Building on previous …
Most data stream classification techniques assume that the underlying feature space is static. However, in real-world applications the set of features and their relevance to the target …
The technological advances in smartphones and their widespread use has resulted in the big volume and varied types of mobile data which we have today. Location prediction …