One pass learning updates a model with only a single scan of the dataset, without storing historical data. Previous studies focus on classification tasks with a fixed class set, and will perform poorly in an open dynamic environment when new classes emerge in a data stream. The performance degrades because the classifier needs to receive a sufficient number of instances from new classes to establish a good model. This can take a long period of time. In order to reduce this period to deal with any-time prediction task, we introduce a framework to handle emerging new classes called One-Pass Class Incremental Learning (OPCIL). The central issue in OPCIL is: how to effectively adapt a classifier of existing classes to incorporate emerging new c...
The ability of artificial agents to increment their capabilities when confronted with new data is an...
Class-incremental continual learning is a core step towards developing artificial intelligence syste...
One of the main assumptions in machine learning is that sufficient training data is avail-able in ad...
Class-incremental learning (CIL) has been widely studied under the setting of starting from a small ...
Class-Incremental Learning (CIL) aims to train a reliable model with the streaming data, which emerg...
Many real world problems involve the challenging context of data streams, where classifiers must be ...
ncremental learning enables artificial agents to learn from sequential data. While important progres...
Instance reduction techniques are data preprocessing methods originally developed to enhance the nea...
In class-incremental learning, a learning agent faces a stream of data with the goal of learning new...
Classifiers for object categorization are usually evaluated by their accuracy on a set of i.i.d. tes...
Classifiers for object categorization are usually evalu-ated by their accuracy on a set of i.i.d. te...
For future learning systems incremental learning is desirable, because it allows for: efficient reso...
Class-incremental learning (CIL) is a challenging task that involves continually learning to categor...
Continual learning requires the model to maintain the learned knowledge while learning from a non-i....
A major open problem on the road to artificial intelligence is the development of incrementally lear...
The ability of artificial agents to increment their capabilities when confronted with new data is an...
Class-incremental continual learning is a core step towards developing artificial intelligence syste...
One of the main assumptions in machine learning is that sufficient training data is avail-able in ad...
Class-incremental learning (CIL) has been widely studied under the setting of starting from a small ...
Class-Incremental Learning (CIL) aims to train a reliable model with the streaming data, which emerg...
Many real world problems involve the challenging context of data streams, where classifiers must be ...
ncremental learning enables artificial agents to learn from sequential data. While important progres...
Instance reduction techniques are data preprocessing methods originally developed to enhance the nea...
In class-incremental learning, a learning agent faces a stream of data with the goal of learning new...
Classifiers for object categorization are usually evaluated by their accuracy on a set of i.i.d. tes...
Classifiers for object categorization are usually evalu-ated by their accuracy on a set of i.i.d. te...
For future learning systems incremental learning is desirable, because it allows for: efficient reso...
Class-incremental learning (CIL) is a challenging task that involves continually learning to categor...
Continual learning requires the model to maintain the learned knowledge while learning from a non-i....
A major open problem on the road to artificial intelligence is the development of incrementally lear...
The ability of artificial agents to increment their capabilities when confronted with new data is an...
Class-incremental continual learning is a core step towards developing artificial intelligence syste...
One of the main assumptions in machine learning is that sufficient training data is avail-able in ad...