# Difference between revisions of "stat946F18"

From statwiki

(→Record your contributions here [https://docs.google.com/spreadsheets/d/1SxkjNfhOg_eXWpUnVHuIP93E6tEiXEdpm68dQGencgE/edit?usp=sharing]) |
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|NOv 22 ||Soroush Ameli || 25 || Learning to Navigate in Cities Without a Map || [https://arxiv.org/abs/1804.00168 paper] || | |NOv 22 ||Soroush Ameli || 25 || Learning to Navigate in Cities Without a Map || [https://arxiv.org/abs/1804.00168 paper] || | ||

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− | |Nov 22 ||Ivan Li || 26 || Mapping Images to Scene Graphs with Permutation-Invariant Structured Prediction || [https://arxiv.org/pdf/1802.05451v3.pdf Paper] || | + | |Nov 22 ||Ivan Li || 26 || Mapping Images to Scene Graphs with Permutation-Invariant Structured Prediction || [https://arxiv.org/pdf/1802.05451v3.pdf Paper] || [https://wiki.math.uwaterloo.ca/statwiki/index.php?title=Mapping_Images_to_Scene_Graphs_with_Permutation-Invariant_Structured_Prediction Summary] |

|- | |- | ||

|Nov 22 ||Sigeng Chen || 27 ||GraphRNN: Generating Realistic Graphs with Deep Auto-regressive Models || [http://proceedings.mlr.press/v80/you18a.html Paper] || | |Nov 22 ||Sigeng Chen || 27 ||GraphRNN: Generating Realistic Graphs with Deep Auto-regressive Models || [http://proceedings.mlr.press/v80/you18a.html Paper] || |

## Revision as of 02:00, 15 November 2018

## Project Proposal

# Paper presentation

Your feedback on presentations

# Record your contributions here [1]

Use the following notations:

P: You have written a summary/critique on the paper.

T: You had a technical contribution on a paper (excluding the paper that you present).

E: You had an editorial contribution on a paper (excluding the paper that you present).

Date | Name | Paper number | Title | Link to the paper | Link to the summary |

Feb 15 (example) | Ri Wang | Sequence to sequence learning with neural networks. | Paper | [Summary] | |

Oct 25 | Dhruv Kumar | 1 | Beyond Word Importance: Contextual Decomposition to Extract Interactions from LSTMs | Paper | |

Oct 25 | Amirpasha Ghabussi | 2 | DCN+: Mixed Objective And Deep Residual Coattention for Question Answering | Paper | |

Oct 25 | Juan Carrillo | 3 | Hierarchical Representations for Efficient Architecture Search | Paper | |

Oct 30 | Manpreet Singh Minhas | 4 | End-to-end Active Object Tracking via Reinforcement Learning | Paper | Summary |

Oct 30 | Marvin Pafla | 5 | Fairness Without Demographics in Repeated Loss Minimization | Paper | Summary |

Oct 30 | Glen Chalatov | 6 | Pixels to Graphs by Associative Embedding | Paper | |

Nov 1 | Sriram Ganapathi Subramanian | 7 | Differentiable plasticity: training plastic neural networks with backpropagation | Paper | Summary |

Nov 1 | Hadi Nekoei | 8 | Synthesizing Programs for Images using Reinforced Adversarial Learning | Paper | Summary |

Nov 1 | Henry Chen | 9 | DeepVO: Towards end-to-end visual odometry with deep Recurrent Convolutional Neural Networks | Paper | |

Nov 6 | Nargess Heydari | 10 | Wavelet Pooling For Convolutional Neural Networks Networks | Paper | Summary Slides |

Nov 6 | Aravind Ravi | 11 | Towards Image Understanding from Deep Compression Without Decoding | Paper | Summary |

Nov 6 | Ronald Feng | 12 | Learning to Teach | Paper | Summary |

Nov 8 | Neel Bhatt | 13 | Annotating Object Instances with a Polygon-RNN | Paper | Summary Slides |

Nov 8 | Jacob Manuel | 14 | Co-teaching: Robust Training Deep Neural Networks with Extremely Noisy Labels | Paper | Summary Slides |

Nov 8 | Charupriya Sharma | 15 | A Bayesian Perspective on Generalization and Stochastic Gradient Descent | Paper | Summary |

NOv 13 | Sagar Rajendran | 16 | Zero-Shot Visual Imitation | Paper | Summary |

Nov 13 | Ruijie Zhang | 17 | Searching for Efficient Multi-Scale Architectures for Dense Image Prediction | Paper | Summary |

Nov 13 | Neil Budnarain | 18 | Predicting Floor Level For 911 Calls with Neural Networks and Smartphone Sensor Data | Paper | Summary |

NOv 15 | Zheng Ma | 19 | Reinforcement Learning of Theorem Proving | Paper | Summary |

Nov 15 | Abdul Khader Naik | 20 | Multi-View Data Generation Without View Supervision | Paper | Summary |

Nov 15 | Johra Muhammad Moosa | 21 | Attend and Predict: Understanding Gene Regulation by Selective Attention on Chromatin | Paper | Summary |

NOv 20 | Zahra Rezapour Siahgourabi | 22 | Robot Learning in Homes: Improving Generalization and Reducing Dataset Bias | Paper | |

Nov 20 | Shubham Koundinya | 23 | Countering Adversarial Images Using Input Transformations | paper | |

Nov 20 | Salman Khan | 24 | Obfuscated Gradients Give a False Sense of Security: Circumventing Defenses to Adversarial Examples | paper | |

NOv 22 | Soroush Ameli | 25 | Learning to Navigate in Cities Without a Map | paper | |

Nov 22 | Ivan Li | 26 | Mapping Images to Scene Graphs with Permutation-Invariant Structured Prediction | Paper | Summary |

Nov 22 | Sigeng Chen | 27 | GraphRNN: Generating Realistic Graphs with Deep Auto-regressive Models | Paper | |

Nov 27 | Aileen Li | 28 | Spatially Transformed Adversarial Examples | Paper | |

Nov 27 | Xudong Peng | 29 | Visual Reinforcement Learning with Imagined Goals | Paper | Unfinished |

Nov 27 | Xinyue Zhang | 30 | An Inference-Based Policy Gradient Method for Learning Options | Paper | |

NOv 29 | Junyi Zhang | 31 | Autoregressive Convolutional Neural Networks for Asynchronous Time Series | Paper | |

Nov 29 | Travis Bender | 32 | Automatic Goal Generation for Reinforcement Learning Agents | Paper | |

Nov 29 | Patrick Li | 33 | Matrix Capsules with EM Routing | Paper | |

Makeup | Jiazhen Chen | 34 | |||

Nov 30 | Gaurav Sahu | 35 | TBD | ||

Nov 23 | Kashif Khan | 36 | Wasserstein Auto-Encoders | Paper | |

Makeup | Shala Chen | 37 | A NEURAL REPRESENTATION OF SKETCH DRAWINGS | ||

Nov 30 | Ki Beom Lee | 38 | Detecting Statistical Interactions from Neural Network Weights | Paper | |

Nov 23 | Wesley Fisher | 39 | Deep Reinforcement Learning in Continuous Action Spaces: a Case Study in the Game of Simulated Curling | Paper | Summary |

Nov 30 | Ahmed Afify | 40 | Don't Decay the Learning Rate, Increase the Batch Size | Paper |