开课单位--芝加哥丰田技术学院
1
Online Learning and Game Theory[在线学习与博弈论]
Adam Kalai(芝加哥丰田技术学院) We consider online learning and its relationship to game theory. In an online decision-making problem, as in Singer's lecture, one typically makes...
热度:48
Adam Kalai(芝加哥丰田技术学院) We consider online learning and its relationship to game theory. In an online decision-making problem, as in Singer's lecture, one typically makes...
热度:48
2
Continuous Markov Random Fields for Robust Stereo Estimation[用于鲁棒立体声预估的马尔科夫连续随机场]
Laurent Itti;Koichiro Yamaguchi; Ramin Zabih(芝加哥丰田技术学院) In this paper we present a novel slanted-plane model which reasons jointly about occlusion boundaries as well as depth. We formulate the problem as on...
热度:55
Laurent Itti;Koichiro Yamaguchi; Ramin Zabih(芝加哥丰田技术学院) In this paper we present a novel slanted-plane model which reasons jointly about occlusion boundaries as well as depth. We formulate the problem as on...
热度:55
3
Factoring Speech into Linguistic Features[语音分解成语言特点]
Karen Livescu(芝加哥丰田技术学院) Spoken language technologies, such as automatic speech recognition and synthesis, typically treat speech as a string of "phones". In contras...
热度:60
Karen Livescu(芝加哥丰田技术学院) Spoken language technologies, such as automatic speech recognition and synthesis, typically treat speech as a string of "phones". In contras...
热度:60
4
Regularization Strategies and Empirical Bayesian Learning for MKL[MKL的正则化策略和贝叶斯经验学习]
Ryota Tomioka(芝加哥丰田技术学院) Multiple kernel learning (MKL) has received considerable attention recently. In this paper, we show how different MKL algorithms can be understood as ...
热度:51
Ryota Tomioka(芝加哥丰田技术学院) Multiple kernel learning (MKL) has received considerable attention recently. In this paper, we show how different MKL algorithms can be understood as ...
热度:51
5
SVM Optimization: Inverse Dependence on Training Set Size[支持向量机优化:对训练集大小的逆依赖]
Nathan Srebro(芝加哥丰田技术学院) We discuss how the runtime of SVM optimization should decrease as the size of the training data increases. We present theoretical and empirical result...
热度:91
Nathan Srebro(芝加哥丰田技术学院) We discuss how the runtime of SVM optimization should decrease as the size of the training data increases. We present theoretical and empirical result...
热度:91
6
Graphical Models for Speech Recognition: Articulatory and Audio-Visual Models[语音识别的图形化模型:发音和音频视觉模型]
Karen Livescu(芝加哥丰田技术学院) Since the 1980s, the main approach to automatic speech recognition has been using hidden Markov models (HMMs), in which each state corresponds to a ph...
热度:66
Karen Livescu(芝加哥丰田技术学院) Since the 1980s, the main approach to automatic speech recognition has been using hidden Markov models (HMMs), in which each state corresponds to a ph...
热度:66
7
Training Structured Predictors for Novel Loss Functions[新的损失函数的训练结构的预测]
David McAllester(芝加哥丰田技术学院) As a motivation we consider the PASCAL image segmentation challenge. Given an image and a target class, such as person, the challenge is to segment th...
热度:75
David McAllester(芝加哥丰田技术学院) As a motivation we consider the PASCAL image segmentation challenge. Given an image and a target class, such as person, the challenge is to segment th...
热度:75
8
On Multilabel Classification and Ranking with Partial Feedback[细粒度的分类和部分反馈的排名]
Francesco Orabona(芝加哥丰田技术学院) We present a novel multilabel/ranking algorithm working in partial information settings. The algorithm is based on 2nd-order descent methods, and reli...
热度:44
Francesco Orabona(芝加哥丰田技术学院) We present a novel multilabel/ranking algorithm working in partial information settings. The algorithm is based on 2nd-order descent methods, and reli...
热度:44
9
The Projectron: a Bounded Kernel-Based Perceptron[一个有界的projectron:基于核感知器]
Francesco Orabona(芝加哥丰田技术学院) We present a discriminative online algorithm with a bounded memory growth, which is based on the kernel-based Perceptron. Generally, the required memo...
热度:93
Francesco Orabona(芝加哥丰田技术学院) We present a discriminative online algorithm with a bounded memory growth, which is based on the kernel-based Perceptron. Generally, the required memo...
热度:93
10
Online-Batch Strongly Convex Multi Kernel Learning[在线批量强凸多核学习]
Francesco Orabona(芝加哥丰田技术学院) Several object categorization algorithms use kernel methods over multiple cues, as they offer a principled approach to combine multiple cues, and to o...
热度:53
Francesco Orabona(芝加哥丰田技术学院) Several object categorization algorithms use kernel methods over multiple cues, as they offer a principled approach to combine multiple cues, and to o...
热度:53