We propose a method that involves a probabilistic model for learning future classifiers for tasks in which decision boundaries nonlinearly change over time. In certain applications, such as spam-mail classification, the decision boundary dynamically changes over time. Accordingly, the performance of the classifiers will deteriorate quickly unless the classifiers are updated using additional data. However, collecting such data can be expensive or impossible. The proposed model alleviates this deterioration in performance without additional data by modeling the non-linear dynamics of the decision boundary using Gaussian processes. The method also involves our developed learning algorithm for our model based on empirical variational Bayesian i...
A typical issue in Pattern Recognition is the nonuniformly sampled data, which modifies the general ...
Agents living in volatile environments must be able to detect changes in contingencies while refrain...
AbstractWhen modeling a decision problem using the influence diagram framework, the quantitative par...
We propose probabilistic models for predicting future classifiers given labeled data with timestamps...
Many data analysis problems require robust tools for discerning between states or classes in the dat...
This paper discusses ideas for adaptive learning which can capture dynamic aspects of real-world dat...
For many learning tasks the duration of the data collection can be greater than the time scale for c...
Many real classification tasks are oriented to sequence (neighbor) la-beling, that is, assigning a l...
This dissertation discusses the mathematical modeling of dynamical systems under uncertainty, Bayesi...
184 pagesUtilizing structure in mathematical modeling is instrumental for better model de- sign, cre...
Many classification algorithms are designed on the assumption that the population of interest is sta...
In pattern classification problem, one trains a classifier to recognize future unseen samples using ...
Abstract-A decision-directed learning strategy is presented to re-cursively estimate (i.e., track) t...
Aging effects, environmental changes, thermal drifts, and soft and hard faults affect physical syste...
Neutral zone classifiers include 'no-decision' as a classification outcome. This paper extends neutr...
A typical issue in Pattern Recognition is the nonuniformly sampled data, which modifies the general ...
Agents living in volatile environments must be able to detect changes in contingencies while refrain...
AbstractWhen modeling a decision problem using the influence diagram framework, the quantitative par...
We propose probabilistic models for predicting future classifiers given labeled data with timestamps...
Many data analysis problems require robust tools for discerning between states or classes in the dat...
This paper discusses ideas for adaptive learning which can capture dynamic aspects of real-world dat...
For many learning tasks the duration of the data collection can be greater than the time scale for c...
Many real classification tasks are oriented to sequence (neighbor) la-beling, that is, assigning a l...
This dissertation discusses the mathematical modeling of dynamical systems under uncertainty, Bayesi...
184 pagesUtilizing structure in mathematical modeling is instrumental for better model de- sign, cre...
Many classification algorithms are designed on the assumption that the population of interest is sta...
In pattern classification problem, one trains a classifier to recognize future unseen samples using ...
Abstract-A decision-directed learning strategy is presented to re-cursively estimate (i.e., track) t...
Aging effects, environmental changes, thermal drifts, and soft and hard faults affect physical syste...
Neutral zone classifiers include 'no-decision' as a classification outcome. This paper extends neutr...
A typical issue in Pattern Recognition is the nonuniformly sampled data, which modifies the general ...
Agents living in volatile environments must be able to detect changes in contingencies while refrain...
AbstractWhen modeling a decision problem using the influence diagram framework, the quantitative par...