We consider the task of human collaborative category learning, where two people work together to classify test items into appropriate categories based on what they learn from a training set. We propose a novel collaboration policy based on the Co-Training algorithm in machine learning, in which the two people play the role of the base learners. The policy restricts each learner's view of the data and limits their communication to only the exchange of their labelings on test items. In a series of empirical studies, we show that the Co-Training policy leads collaborators to jointly produce unique and potentially valuable classification outcomes that are not generated under other collaboration policies. We further demonstrate that these observ...
Generative, ML-driven interactive systems have the potential to change how people interact with comp...
This paper proposes an ontology and a markup language to describe machine learning experiments in a ...
The rapid advancement of technology empowered by artificial intelligence is believed to intensify th...
This paper explores collaborative ability of co-training algorithm. We propose a new measurement (CA...
A machine learning classifier can be trained on an labeled input data set, which comprise samples an...
A lot of attention has recently been focused on possible benefits of the cooperation between machine...
A new learning technique based on cooperative coevo-lution is proposed for tackling classification p...
Recently, Semi-Supervised learning algorithms such as co-training are used in many domains. In co-tr...
The uniqueness and superiority of the cognitive infrastructure for human cooperative communication h...
Much of machine learning research focuses on predictive accuracy: given a task, create a machine lea...
Co-training is a well-known semi-supervised learning technique that applies two basic learners to tr...
In this paper, we present a new analysis on co-training, a representative paradigm of disagreement-b...
Co-Training is a weakly supervised learning paradigm in which the redundancy of the learning task is...
We present a framework for automatically learning human user models from joint-action demonstrations...
Abstract. Co-training, a paradigm of semi-supervised learning, may alleviate effectively the data sc...
Generative, ML-driven interactive systems have the potential to change how people interact with comp...
This paper proposes an ontology and a markup language to describe machine learning experiments in a ...
The rapid advancement of technology empowered by artificial intelligence is believed to intensify th...
This paper explores collaborative ability of co-training algorithm. We propose a new measurement (CA...
A machine learning classifier can be trained on an labeled input data set, which comprise samples an...
A lot of attention has recently been focused on possible benefits of the cooperation between machine...
A new learning technique based on cooperative coevo-lution is proposed for tackling classification p...
Recently, Semi-Supervised learning algorithms such as co-training are used in many domains. In co-tr...
The uniqueness and superiority of the cognitive infrastructure for human cooperative communication h...
Much of machine learning research focuses on predictive accuracy: given a task, create a machine lea...
Co-training is a well-known semi-supervised learning technique that applies two basic learners to tr...
In this paper, we present a new analysis on co-training, a representative paradigm of disagreement-b...
Co-Training is a weakly supervised learning paradigm in which the redundancy of the learning task is...
We present a framework for automatically learning human user models from joint-action demonstrations...
Abstract. Co-training, a paradigm of semi-supervised learning, may alleviate effectively the data sc...
Generative, ML-driven interactive systems have the potential to change how people interact with comp...
This paper proposes an ontology and a markup language to describe machine learning experiments in a ...
The rapid advancement of technology empowered by artificial intelligence is believed to intensify th...