This paper focuses on the prevalent stage interference and stage performance imbalance of incremental learning. To avoid obvious stage learning bottlenecks, we propose a new incremental learning framework, which leverages a series of stage-isolated classifiers to perform the learning task at each stage, without interference from others. To be concrete, to aggregate multiple stage classifiers as a uniform one impartially, we first introduce a temperature-controlled energy metric for indicating the confidence score levels of the stage classifiers. We then propose an anchor-based energy self-normalization strategy to ensure the stage classifiers work at the same energy level. Finally, we design a voting-based inference augmentation strategy fo...
Recent class-incremental learning methods combine deep neural architectures and learning algorithms ...
Many real world problems involve the challenging context of data streams, where classifiers must be ...
Supervised learning algorithms make several simplifying assumptions concerning the characteristics o...
Abstract. We describe an ensemble of classifiers based algorithm for incremental learning in nonstat...
Incremental learning from noisy data presents dual challenges: that of evaluating multiple hy-pothes...
. This paper describes a multi-layer incremental induction algorithm, MLII, which is linked to an ex...
It was recently shown that architectural, regularization and rehearsal strategies can be used to tra...
none2noIt was recently shown that architectural, regularization and rehearsal strategies can be used...
Abstract—Multiple classifier systems tend to suffer from out-voting when new concept classes need to...
AbstractThe present paper deals with a systematic study of incremental learning algorithms. The gene...
This workshop aims to offer a meeting opportunity for academics and industry-related researchers, be...
In this paper, we propose an incremental ensemble classifier learning method. In the proposed method...
Due to the increase in the amount of data gathered every day in the real world problems (e.g., bioin...
Recent class-incremental learning methods combine deep neural architectures and learning algorithms ...
For future learning systems incremental learning is desirable, because it allows for: efficient reso...
Recent class-incremental learning methods combine deep neural architectures and learning algorithms ...
Many real world problems involve the challenging context of data streams, where classifiers must be ...
Supervised learning algorithms make several simplifying assumptions concerning the characteristics o...
Abstract. We describe an ensemble of classifiers based algorithm for incremental learning in nonstat...
Incremental learning from noisy data presents dual challenges: that of evaluating multiple hy-pothes...
. This paper describes a multi-layer incremental induction algorithm, MLII, which is linked to an ex...
It was recently shown that architectural, regularization and rehearsal strategies can be used to tra...
none2noIt was recently shown that architectural, regularization and rehearsal strategies can be used...
Abstract—Multiple classifier systems tend to suffer from out-voting when new concept classes need to...
AbstractThe present paper deals with a systematic study of incremental learning algorithms. The gene...
This workshop aims to offer a meeting opportunity for academics and industry-related researchers, be...
In this paper, we propose an incremental ensemble classifier learning method. In the proposed method...
Due to the increase in the amount of data gathered every day in the real world problems (e.g., bioin...
Recent class-incremental learning methods combine deep neural architectures and learning algorithms ...
For future learning systems incremental learning is desirable, because it allows for: efficient reso...
Recent class-incremental learning methods combine deep neural architectures and learning algorithms ...
Many real world problems involve the challenging context of data streams, where classifiers must be ...
Supervised learning algorithms make several simplifying assumptions concerning the characteristics o...