In this chapter, the important concepts of bias and variance are introduced. After an intuitive introduction to the bias/variance tradeoff, we discuss the bias/variance decompositions of the mean square error (in the context of regression problems) and of the mean misclassification error (in the context of classification problems). Then, we carry out a small empirical study providing some insight about how the parameters of a learning algorithm nfluence bias and variance
Abstract. Bias/variance analysis is a useful tool for investigating the performance of machine learn...
Abstract. Using applications of linear regression, Market Research practitioners want to determine a...
There still lacks a certain mechanism to cater for variance in data and a lack of levels of impact b...
This paper presents a unified bias-variance decomposition that is applicable to squared loss, zero...
The bias-variance decomposition is a very useful and widely-used tool for understanding machine-lea...
Bias variance decomposition for classifiers is a useful tool in understanding classifier behavior. U...
We study the notions of bias and variance for classification rules. Following Efron (1978) we develo...
The bias and variance of a real valued random variable, using squared error loss, are well understoo...
Bias-variance analysis provides a tool to study learning algorithms and can be used to properly de...
The bias/variance dilemma is addressed in the context of neural networks. A bias constraint based on...
This thesis is directed toward data analysis and analysis of variance for data in a classificatory s...
Contains fulltext : 100960.pdf (publisher's version ) (Open Access)ICPR'00 : 15th ...
When using squared error loss, bias and variance and their decomposition of prediction error are wel...
This chapter aims to introduce the common methods and practices of statistical machine learning tech...
Abstract. Bias/variance analysis is a useful tool for investigating the performance of machine learn...
Abstract. Bias/variance analysis is a useful tool for investigating the performance of machine learn...
Abstract. Using applications of linear regression, Market Research practitioners want to determine a...
There still lacks a certain mechanism to cater for variance in data and a lack of levels of impact b...
This paper presents a unified bias-variance decomposition that is applicable to squared loss, zero...
The bias-variance decomposition is a very useful and widely-used tool for understanding machine-lea...
Bias variance decomposition for classifiers is a useful tool in understanding classifier behavior. U...
We study the notions of bias and variance for classification rules. Following Efron (1978) we develo...
The bias and variance of a real valued random variable, using squared error loss, are well understoo...
Bias-variance analysis provides a tool to study learning algorithms and can be used to properly de...
The bias/variance dilemma is addressed in the context of neural networks. A bias constraint based on...
This thesis is directed toward data analysis and analysis of variance for data in a classificatory s...
Contains fulltext : 100960.pdf (publisher's version ) (Open Access)ICPR'00 : 15th ...
When using squared error loss, bias and variance and their decomposition of prediction error are wel...
This chapter aims to introduce the common methods and practices of statistical machine learning tech...
Abstract. Bias/variance analysis is a useful tool for investigating the performance of machine learn...
Abstract. Bias/variance analysis is a useful tool for investigating the performance of machine learn...
Abstract. Using applications of linear regression, Market Research practitioners want to determine a...
There still lacks a certain mechanism to cater for variance in data and a lack of levels of impact b...