The paper studies machine learning problems where each example is described using a set of Boolean features and where hypotheses are represented by linear threshold elements. One method of increasing the expressiveness of learned hypotheses in this context is to expand the feature set to include conjunctions of basic features. This can be done explicitly or where possible by using a kernel function. Focusing on the well known Perceptron and Winnow algorithms, the paper demonstrates a tradeoff between the computational efficiency with which the algorithm can be run over the expanded feature space and the generalization ability of the corresponding learning algorithm. We first describe several kernel functions which capture either limited for...
We consider the sample complexity of concept learning when we classify by using a fixed Boolean func...
Plan for today: Last time we looked at the Winnow algorithm, which has a very nice mistake-bound for...
There has been a recent revolution in machine learning based on the following simple idea. Instead o...
The paper studies machine learning problems where each example is described using a set of Boolean f...
We study online learning in Boolean domains using kernels which capture feature expansions equivalen...
We study online learning in Boolean domains using kernels which cap-ture feature expansions equivale...
Recent work has introduced Boolean kernels with which one can learn linear threshold functions over ...
We give results about the learnability and required complexity of logical formulae to solve classifi...
Expanding the learning problems\u27 input spaces to high-dimensional feature spaces can increase exp...
We give an adversary strategy that forces the Perceptron algorithm to make \Omega\Gamma kN) mistakes...
Valiant (1984) and others have studied the problem of learning vari-ous classes of Boolean functions...
The problem of learning linear discriminant concepts can be solved by various mistake-driven update ...
A common problem of kernel-based online algorithms, such as the kernel-based Perceptron algorithm, i...
We consider a fundamental problem in computational learning theory: learning an arbitrary Boolean f...
A basic neural model for Boolean computation is examined in the context of learning from examples. T...
We consider the sample complexity of concept learning when we classify by using a fixed Boolean func...
Plan for today: Last time we looked at the Winnow algorithm, which has a very nice mistake-bound for...
There has been a recent revolution in machine learning based on the following simple idea. Instead o...
The paper studies machine learning problems where each example is described using a set of Boolean f...
We study online learning in Boolean domains using kernels which capture feature expansions equivalen...
We study online learning in Boolean domains using kernels which cap-ture feature expansions equivale...
Recent work has introduced Boolean kernels with which one can learn linear threshold functions over ...
We give results about the learnability and required complexity of logical formulae to solve classifi...
Expanding the learning problems\u27 input spaces to high-dimensional feature spaces can increase exp...
We give an adversary strategy that forces the Perceptron algorithm to make \Omega\Gamma kN) mistakes...
Valiant (1984) and others have studied the problem of learning vari-ous classes of Boolean functions...
The problem of learning linear discriminant concepts can be solved by various mistake-driven update ...
A common problem of kernel-based online algorithms, such as the kernel-based Perceptron algorithm, i...
We consider a fundamental problem in computational learning theory: learning an arbitrary Boolean f...
A basic neural model for Boolean computation is examined in the context of learning from examples. T...
We consider the sample complexity of concept learning when we classify by using a fixed Boolean func...
Plan for today: Last time we looked at the Winnow algorithm, which has a very nice mistake-bound for...
There has been a recent revolution in machine learning based on the following simple idea. Instead o...