ArtGAN – Artwork Synthesis with Conditional Categorical GANs
ArtGAN can generate images with abstract information like images with a certain art style.
AI Technology & Industry Review
Technical review of the newest machine intelligence research.
ArtGAN can generate images with abstract information like images with a certain art style.
This talk presents natural gradient, a new approach to approximate the Fisher matrix by adopting structured probabilistic models.
AI must be biased because the knowledge we used in the training process contains traces of our history, including our prejudices.
Between March 8-10, Synced was invited as media guest to attend the Google Cloud NEXT ’17 conference in San Francisco.
Graham Taylor from the University of Guelph gave a talk at the University of Toronto, summarizing current techniques used to address the issue of insufficient labeled data.
The team of Rob Fergus, who is currently a research scientist at Facebook AI Research, have devised two neural net models for handling unstructured data.
Summaries and recommendations of peer-reviewed papers that discuss various aspects of machine learning.
This talk describes the dialog system architecture and explains the three main steps of the architecture: understanding, generation, and dialog manager and their challenges for machine learning.
If thinking can be understood as the step-by-step process that it is, then we can build artificial intelligences to have the potential to be as conscious as we are
A glance at the state of the art research shows that neural networks would still serve us, and artificial general intelligence is not yet in sight.
Youichiro Miyake presented an initial concept of creating artificial awareness in game AI system.
This talk summarizes the limitations of RNN (including LSTM, GRU), from both empirical and computational hierarchy mechanism perspectives.
This paper presents a method for synthesizing a frontal, neutral-expression image of a person’s face given an input facial photograph.
The neurosurgeons and pathologists at Michigan Medicine recently combined a powerful imaging technique with deep learning algorithm for automatic tumor diagnosis during brain surgery.
This paper applies deep learning to a large-scale EHR dataset to extract robust patient descriptors that can be used to predict future patient diseases.
professor Yann LeCun discussed about “predicting under uncertainty: the next frontier in AI” during the lecture at the University of Edinburgh
There are three ways to combine DL and RL, based on three different principles: value-based, policy-based, and model-based approaches with planning.
This review will go over some of the current methods that are used to visualize and understand deep neural networks.
Sample-based Monte Carlo Localization is notable for its accuracy, efficiency, and ease of use in global localization and position tracking.
A University of Toronto Ph.D. student named Hang Chu recently published his project, a song completely composed and vocalized by Artificial Intelligence.
The 2017 award will be given to the most influential paper from the Sixteenth National Conference on Artificial Intelligence, held in 1999 in Orlando,USA.
The recipient of this year’s Outstanding Paper Award utilizes prior domain knowledge to constrain output space to a specific learning structure rather than a simple mapping from input to output
This study is the first to perform extensive personal iPOP of an individual through healthy and diseased states. This paper was published in Cell, 2012.
The future of AI belongs to scalable methods, search and learning; as presented by Richard Sutton in seminars at University of Toronto
Machine learning Advances and Applications Seminar address how to use fast weights to effectively store temporary memories, at University of Toronto
Lukasz Kaiser, Senior Research Scientist at Google Brain, gives a presentation about the developments in Natural Language Processing techniques at 2017’s AI Frontier Conference.
Human-level control through deep reinforcement learning The theory of reinforcement learning provides a normative account, deeply rooted in psychological andContinue Reading
Professor Richard Sutton is considered to be one of the founding fathers of modern computational reinforcement learning. He made several significant contributions to the field, including temporal difference learning, policy gradient methods, and the Dyna architecture.
This talk focuses on engineer techniques for large-scale NMT systems. It helps us to understand how GPU works andContinue Reading
Yoshua Bengio, Geoffrey Hinton, Richard Sutton and Ruslan Salakhutdinov Panel Summary at 2016 I was at the 2016 “Machine LearningContinue Reading
Born in Oakland, California on October 29, 1949, John Markoff grew up in Palo Alto, California and graduated from WhitmanContinue Reading