Ben Taskar
#38,863
Most Influential Person Now
American computer scientist
Ben Taskar's AcademicInfluence.com Rankings
Ben Taskarcomputer-science Degrees
Computer Science
#1797
World Rank
#1863
Historical Rank
#858
USA Rank
Database
#7247
World Rank
#7498
Historical Rank
#868
USA Rank
Download Badge
Computer Science
Ben Taskar's Degrees
- PhD Computer Science Stanford University
- Masters Computer Science Stanford University
- Bachelors Computer Science Stanford University
Similar Degrees You Can Earn
Why Is Ben Taskar Influential?
(Suggest an Edit or Addition)According to Wikipedia, Ben Taskar was a professor and researcher in the area of machine learning and applications to computational linguistics and computer vision. He was a Magerman Term Associate Professor for Computer and Information Science at University of Pennsylvania. He co-directed PRiML: Penn Research in Machine Learning, a joint venture between the School of Engineering and Wharton. He was also a Distinguished Research Fellow at the Annenberg Center for Public Policy. At the University of Washington, he held the Boeing Professorship.
Ben Taskar's Published Works
Published Works
- Max-Margin Markov Networks (2003) (1495)
- Determinantal Point Processes for Machine Learning (2012) (888)
- Discriminative Probabilistic Models for Relational Data (2002) (809)
- Introduction to Statistical Relational Learning (Adaptive Computation and Machine Learning) (2007) (587)
- Introduction to statistical relational learning (2007) (580)
- Learning structured prediction models: a large margin approach (2005) (568)
- Link Prediction in Relational Data (2003) (540)
- Joint covariate selection and joint subspace selection for multiple classification problems (2010) (539)
- Posterior Regularization for Structured Latent Variable Models (2010) (527)
- Alignment by Agreement (2006) (509)
- Discriminative learning of Markov random fields for segmentation of 3D scan data (2005) (427)
- Learning from Partial Labels (2011) (379)
- An Introduction to Conditional Random Fields for Relational Learning (2007) (378)
- MODEC: Multimodal Decomposable Models for Human Pose Estimation (2013) (374)
- An End-to-End Discriminative Approach to Machine Translation (2006) (321)
- Multi-task feature selection (2006) (318)
- Probabilistic Classification and Clustering in Relational Data (2001) (302)
- Learning Probabilistic Models of Link Structure (2003) (302)
- Selectivity estimation using probabilistic models (2001) (293)
- Rich probabilistic models for gene expression (2001) (284)
- Learning Probabilistic Models of Relational Structure (2001) (255)
- Max-Margin Parsing (2004) (250)
- k-DPPs: Fixed-Size Determinantal Point Processes (2011) (243)
- Cascaded Models for Articulated Pose Estimation (2010) (233)
- Markov Logic: A Unifying Framework for Statistical Relational Learning (2007) (213)
- Learning associative Markov networks (2004) (205)
- A Discriminative Matching Approach to Word Alignment (2005) (189)
- Learning from ambiguously labeled images (2009) (184)
- Expectation Maximization and Posterior Constraints (2007) (182)
- Parsing human motion with stretchable models (2011) (168)
- Probabilistic Relational Models (2014) (160)
- Adaptive pose priors for pictorial structures (2010) (154)
- Learning Determinantal Point Processes (2011) (147)
- Movie/Script: Alignment and Parsing of Video and Text Transcription (2008) (147)
- Global Inference for Entity and Relation Identification via Linear Programming Formulation (2007) (141)
- Dependency Grammar Induction via Bitext Projection Constraints (2009) (141)
- Predicting Structured Data (Neural Information Processing) (2007) (137)
- Graphical Models in a Nutshell (2007) (137)
- Structured Prediction, Dual Extragradient and Bregman Projections (2006) (127)
- Structured Determinantal Point Processes (2010) (127)
- Structured Prediction Cascades (2010) (126)
- Near-Optimal MAP Inference for Determinantal Point Processes (2012) (120)
- Understanding Objects in Detail with Fine-Grained Attributes (2014) (109)
- Wiki-ly Supervised Part-of-Speech Tagging (2012) (105)
- Probabilistic Models of Text and Link Structure for Hypertext Classification (2001) (99)
- The Swarm at the Edge of the Cloud (2015) (99)
- Word Alignment via Quadratic Assignment (2006) (97)
- Learning the Parameters of Determinantal Point Process Kernels (2014) (93)
- Shape-Based Object Detection via Boundary Structure Segmentation (2012) (88)
- Bayesian Logic Programming: Theory and Tool (2007) (87)
- Detecting and parsing architecture at city scale from range data (2010) (86)
- Discovering Diverse and Salient Threads in Document Collections (2012) (84)
- Object detection via boundary structure segmentation (2010) (82)
- Exponentiated Gradient Algorithms for Large-margin Structured Classification (2004) (82)
- Expectation-Maximization for Learning Determinantal Point Processes (2014) (79)
- Better Alignments = Better Translations? (2008) (78)
- Posterior vs Parameter Sparsity in Latent Variable Models (2009) (76)
- Generative-Discriminative Basis Learning for Medical Imaging (2012) (72)
- Generalization Bounds and Consistency for Structured Labeling (2007) (70)
- Multi-View Learning over Structured and Non-Identical Outputs (2008) (70)
- Probabilistic Entity-Relationship Models, PRMs, and Plate Models (2007) (69)
- Structured Prediction via the Extragradient Method (2005) (65)
- Online, self-supervised terrain classification via discriminatively trained submodular Markov random fields (2008) (64)
- The swarm at the edge of the cloud - A new perspective on wireless (2011) (61)
- Talking pictures: Temporal grouping and dialog-supervised person recognition (2010) (59)
- Sparsity in Dependency Grammar Induction (2010) (54)
- Nystrom Approximation for Large-Scale Determinantal Processes (2013) (52)
- Sidestepping Intractable Inference with Structured Ensemble Cascades (2010) (51)
- Salient Montages from Unconstrained Videos (2014) (42)
- Approximate Inference in Continuous Determinantal Processes (2013) (40)
- Learning Probabilistic Relational Models with Structural Uncertainty (2000) (40)
- Collective Stability in Structured Prediction: Generalization from One Example (2013) (40)
- Posterior Sparsity in Unsupervised Dependency Parsing (2011) (40)
- Relational Markov Networks (2007) (38)
- BLOG: Probabilistic Models with Unknown Objects (2007) (36)
- Learning on the Test Data: Leveraging Unseen Features (2003) (33)
- Non-intrusive tongue machine interface (2014) (33)
- Learning Tractable Word Alignment Models with Complex Constraints (2010) (33)
- Learning Adaptive Value of Information for Structured Prediction (2013) (32)
- A General and Unifying Framework for Feature Construction, in Image-Based Pattern Classification (2009) (30)
- Label and Link Prediction in Relational Data (2003) (29)
- Exploring repositories of scientific workflows (2010) (28)
- Disease classification and prediction via semi-supervised dimensionality reduction (2011) (28)
- Inductive Logic Programming in a Nutshell (2007) (27)
- SCALPEL: Segmentation Cascades with Localized Priors and Efficient Learning (2013) (24)
- Logic-based Formalisms for Statistical Relational Learning (2007) (22)
- Approximate Inference in Continuous Determinantal Point Processes (2013) (22)
- PAC-Bayesian Collective Stability (2014) (21)
- Dynamic Structured Model Selection (2013) (21)
- Efficient Second-Order Gradient Boosting for Conditional Random Fields (2015) (21)
- A permutation-augmented sampler for DP mixture models (2007) (19)
- Energy-Based Models (2007) (19)
- Graph-Based Posterior Regularization for Semi-Supervised Structured Prediction (2013) (18)
- Learning Sparse Markov Network Structure via Ensemble-of-Trees Models (2009) (17)
- Regularized Tensor Factorization for Multi-Modality Medical Image Classification (2011) (17)
- The Tangent Earth Mover's Distance (2013) (16)
- Controlling Complexity in Part-of-Speech Induction (2011) (15)
- The Pairwise Piecewise-Linear Embedding for Efficient Non-Linear Classification (2013) (14)
- Summarizing Unconstrained Videos Using Salient Montages (2017) (14)
- An efficient algorithm for the symmetric principal minor assignment problem (2015) (14)
- Feature Generation and Selection in Multi-Relational Statistical Learning (2007) (13)
- Multi-Label Learning with Posterior Regularization (2014) (12)
- Mixture-of-Parents Maximum Entropy Markov Models (2007) (10)
- PostCAT - Posterior Constrained Alignment Toolkit (2009) (10)
- A General Regression Framework for Learning String-to-String Mappings (2007) (9)
- Efficient Algorithms for Max-Margin Structured Classification (2007) (7)
- 2 Graphical Models in a Nutshell (2008) (7)
- Semi-Supervised Learning with Adversarially Missing Label Information (2010) (6)
- Large margin methods for structured classification : Exponentiated gradient algorithms and PAC-Bayesian generalization bounds (2004) (6)
- Stochastic Logic Programs: A Tutorial (2007) (5)
- Statistical Relational Learning for Natural Language Information Extraction (2007) (4)
- Application of trace-norm and low-rank matrix decomposition for computational anatomy (2010) (4)
- Reinforcement Learning in Relational Domains: A Policy-Language Approach (2007) (4)
- Towards a Detailed Understanding of Objects and Scenes in Natural Images (2012) (4)
- Posterior Sparsity in Dependency Grammar Induction (2011) (3)
- Lifted First-Order Probabilistic Inference (2007) (2)
- Shape-based Object Detection via Boundary Structure (2011) (2)
- The Design and Implementatin of IBAL: A General-Purpose Probabilistic Language (2007) (2)
- Learning Tractable Word Alignment Models with Non-Markovian Constraints (2009) (1)
- Expectation Maximization, Posterior Constraints, and Statistical Alignment (2007) (1)
- Learning a New View of a Database: With an Application in Mammography (2007) (1)
- 6 Relational Markov Networks (2007) (1)
- Learning as Search Optimization (2007) (1)
- Stuctured Predictions Cascades (2010) (1)
- Collective Stability in Structured Prediction: Appendix (2008) (0)
- PAC-Bayesian Collective Stability Supplemental Material (2014) (0)
- Structured Prediction Based on Discriminative Models (2007) (0)
- Structured Prediction Using Probabilistic Models (2007) (0)
- Semi-Supervised Learning with Adversarially Missing Label Information — Supplement (2010) (0)
- Relational Dependency Networks (2007) (0)
- Learning a kernel for discriminative , low-dimensional embedding of partially labeled data (2009) (0)
- Kernel Conditional Graphical Models (2007) (0)
- Proceedings of the {ICML} Workshop on Learning in Structured Output Spaces (2006) (0)
- Recognizing Violence in Movies CIS 400 / 401 Project Final Report (2011) (0)
- Modeling Structure via Graphical Models (2007) (0)
- Empirical Analysis of Collective Stability (2013) (0)
- Gaussian Process Belief Propagation (2007) (0)
- Measuring Similarity with Kernels (2007) (0)
- Enabling more accurate and efficient structured prediction (2013) (0)
- A Politics Mash-Up (2008) (0)
- LARGE MARGIN DISCRIMINATIVE LEARNING METHODS FOR ACOUSTIC MODELING (2006) (0)
- Discriminative Learning of Prediction Suffix Trees with the Perceptron Algorithm (2007) (0)
- Large-Scale Modeling of Diverse Paths using Structured k-DPPs (2012) (0)
- Shape-Based Object Detection via Boundary Structure Segmentation (2012) (0)
This paper list is powered by the following services:
Other Resources About Ben Taskar
What Schools Are Affiliated With Ben Taskar?
Ben Taskar is affiliated with the following schools: