We present a new type of multi-class learning algorithm called a linear-max algorithm. Linearmax algorithms learn with a special type of attribute called a sub-expert. A sub-expert is a vector attribute that has a value for each output class. The goal of the multi-class algorithm is to learn a linear function combining the sub-experts and to use this linear function to make correct class predictions. The main contribution of this work is to prove that, in the on-line mistake-bounded model of learning, a multi-class sub-expert learning algorithm has the same mistake bounds as a related two class linear-threshold algorithm. We apply these techniques to three linear-threshold algorithms: Perceptron, Winnow, and Romma. We show these algorithms ...
A new algorithm for on-line learning linear-threshold functions is proposed which efficiently combin...
Abstract. We analyze the performance of the widely studied Perceptron andWinnow algorithms for learn...
Plan for today: Last time we looked at the Winnow algorithm, which has a very nice mistake-bound for...
In this paper, we present a new type of multi-class learning algorithm called a linear-max algorithm...
In this paper, we present Committee, a new multi-class learning algorithm related to the Winnow fami...
We give an adversary strategy that forces the Perceptron algorithm to make (N \Gamma k + 1)=2 mistak...
A multi-class perceptron can learn from examples to solve problems whose answer may take several dif...
Kernel-based linear-threshold algorithms, such as support vector machines and Perceptron-like algori...
The fundamental theorem of statistical learning states that for binary classification prob-lems, any...
Valiant (1984) and others have studied the problem of learning vari-ous classes of Boolean functions...
A new algorithm for on-line learning linear-threshold functions is proposed which efficiently combin...
The problem of learning linear discriminant concepts can be solved by various mistake-driven update ...
Significant changes in the instance distribution or associated cost function of a learning problem r...
Multiclass learning is an area of growing practical relevance, for which the currently avail-able th...
We consider the sample complexity of concept learning when we classify by using a fixed Boolean func...
A new algorithm for on-line learning linear-threshold functions is proposed which efficiently combin...
Abstract. We analyze the performance of the widely studied Perceptron andWinnow algorithms for learn...
Plan for today: Last time we looked at the Winnow algorithm, which has a very nice mistake-bound for...
In this paper, we present a new type of multi-class learning algorithm called a linear-max algorithm...
In this paper, we present Committee, a new multi-class learning algorithm related to the Winnow fami...
We give an adversary strategy that forces the Perceptron algorithm to make (N \Gamma k + 1)=2 mistak...
A multi-class perceptron can learn from examples to solve problems whose answer may take several dif...
Kernel-based linear-threshold algorithms, such as support vector machines and Perceptron-like algori...
The fundamental theorem of statistical learning states that for binary classification prob-lems, any...
Valiant (1984) and others have studied the problem of learning vari-ous classes of Boolean functions...
A new algorithm for on-line learning linear-threshold functions is proposed which efficiently combin...
The problem of learning linear discriminant concepts can be solved by various mistake-driven update ...
Significant changes in the instance distribution or associated cost function of a learning problem r...
Multiclass learning is an area of growing practical relevance, for which the currently avail-able th...
We consider the sample complexity of concept learning when we classify by using a fixed Boolean func...
A new algorithm for on-line learning linear-threshold functions is proposed which efficiently combin...
Abstract. We analyze the performance of the widely studied Perceptron andWinnow algorithms for learn...
Plan for today: Last time we looked at the Winnow algorithm, which has a very nice mistake-bound for...