Abstract. Bias/variance analysis is a useful tool for investigating the performance of machine learning algorithms. Conventional analysis de-composes loss into errors due to aspects of the learning process, but in relational domains, the inference process introduces an additional source of error. Collective inference techniques introduce additional error both through the use of approximate inference algorithms and through vari-ation in the availability of test set information. To date, the impact of inference error on model performance has not been investigated. In this paper, we propose a new bias/variance framework that decomposes loss into errors due to both the learning and inference process. We evaluate performance of three relational ...
Thesis (Ph.D.)--University of Washington, 2015One of the central challenges of statistical relationa...
In this chapter, the important concepts of bias and variance are introduced. After an intuitive intr...
Machine learning systems can make more errors for certain populations and not others, and thus creat...
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...
Many data sets routinely captured by organizations are relational in nature---from marketing and sal...
Many data sets routinely captured by organizations are relational in nature— from marketing and sale...
Ensemble classification methods that independently construct component models (e.g., bagging) improv...
A common characteristic of relational data sets —degree disparity—can lead relational learning algor...
Ensemble learning techniques combine predictions of multiple models to improve classification, while...
Two common characteristics of relational data sets — concentrated linkage and relational auto-correl...
We consider lifted importance sampling (LIS), a previously proposed approximate inference algorithm ...
Ensemble classification methods that independently construct component models (e.g., bagging) improv...
People increasingly communicate through email and social networks to maintain friendships and conduc...
Research on discrimination-based transitive inference (TI) has demonstrated a widespread capacity fo...
Thesis (Ph.D.)--University of Washington, 2015One of the central challenges of statistical relationa...
In this chapter, the important concepts of bias and variance are introduced. After an intuitive intr...
Machine learning systems can make more errors for certain populations and not others, and thus creat...
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...
Many data sets routinely captured by organizations are relational in nature---from marketing and sal...
Many data sets routinely captured by organizations are relational in nature— from marketing and sale...
Ensemble classification methods that independently construct component models (e.g., bagging) improv...
A common characteristic of relational data sets —degree disparity—can lead relational learning algor...
Ensemble learning techniques combine predictions of multiple models to improve classification, while...
Two common characteristics of relational data sets — concentrated linkage and relational auto-correl...
We consider lifted importance sampling (LIS), a previously proposed approximate inference algorithm ...
Ensemble classification methods that independently construct component models (e.g., bagging) improv...
People increasingly communicate through email and social networks to maintain friendships and conduc...
Research on discrimination-based transitive inference (TI) has demonstrated a widespread capacity fo...
Thesis (Ph.D.)--University of Washington, 2015One of the central challenges of statistical relationa...
In this chapter, the important concepts of bias and variance are introduced. After an intuitive intr...
Machine learning systems can make more errors for certain populations and not others, and thus creat...