talk at Interpretability and Robustness in Audio, Speech, and Language (IRASL) Workshop at NeurIPS2018 are now available online: "Deep Within-Class Covariance Analysis for Robust Deep Audio Representation Learning"
#neurips2018 #neurips #irasl
๐ Link
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#neurips2018 #neurips #irasl
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Human Centered AI Initiative: a personal vision of how #neuroscience #psychology #ai #physics #mathematics and other fields can work together to both understand biological intelligence and create artificial intelligence! https://hai.stanford.edu/news/the_intertwined_quest_for_understanding_biological_intelligence_and_creating_artificial_intelligence/
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poster on "Leveraging machine intelligence on diagnosing UTI" at workshop in #NeurIPS2018.
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Thoughtful and succinct explanation about why NIPS was a problematic name for a machine learning conference -- from Jeff Dean ect. at the #neurips2018 workshop for critiquing and correcting trends in ML.
https://www.dropbox.com/s/sv9qcfnv42zbmib/CRACT_2018_paper_35.pdf?dl=0
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https://www.dropbox.com/s/sv9qcfnv42zbmib/CRACT_2018_paper_35.pdf?dl=0
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ICYMI โ our poster on Latent Embedding Optimization (LEO) at the #NeurIPS2018 meta-Learning workshop earlier today. We combine a latent generative model of parameters with MAML in the latent space. Our paper demonstrates SOTA results on few-shot classification benchmarks.
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Have you heard of #Tube #CNN ?
Object or human detection in video is crucial for many applications.
It can also have useful applications such as in repetitive #manufacturing tasks to monitor and proactively prevent catastrophes.
Compared to images, video provides additional cues which can help to disambiguate the detection problem.
Here the authors attempt to learn discriminative models for the temporal evolution of object appearance and to use such models for object detection.
They introduced space-time tubes corresponding to temporal sequences of bounding boxes. They propose a TPN network where two CNN architectures for generating and classifying tubes, respectively, this helps maximize object recall.
The Tube-CNN then implements a tube-level object detector in the video. Our method improves state of the art on two large-scale datasets for object detection in video: HollywoodHeads and ImageNet VID. Tube models show particular advantages in difficult dynamic scenes.
Link to paper: https://lnkd.in/d3DW5Qe
Pytorch implementation of Tube-CNN : https://lnkd.in/dzxGdtt
#deeplearning #CNN #machinelearning #videoanalytics
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Object or human detection in video is crucial for many applications.
It can also have useful applications such as in repetitive #manufacturing tasks to monitor and proactively prevent catastrophes.
Compared to images, video provides additional cues which can help to disambiguate the detection problem.
Here the authors attempt to learn discriminative models for the temporal evolution of object appearance and to use such models for object detection.
They introduced space-time tubes corresponding to temporal sequences of bounding boxes. They propose a TPN network where two CNN architectures for generating and classifying tubes, respectively, this helps maximize object recall.
The Tube-CNN then implements a tube-level object detector in the video. Our method improves state of the art on two large-scale datasets for object detection in video: HollywoodHeads and ImageNet VID. Tube models show particular advantages in difficult dynamic scenes.
Link to paper: https://lnkd.in/d3DW5Qe
Pytorch implementation of Tube-CNN : https://lnkd.in/dzxGdtt
#deeplearning #CNN #machinelearning #videoanalytics
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Slides from Pieter Abbeel's talk at #NeurIPS2018 workshop on RL under Partial Observability:
https://lnkd.in/eFHdb9d
#NeurIPS #ReinforcementLearning
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https://lnkd.in/eFHdb9d
#NeurIPS #ReinforcementLearning
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Basic protocols in quantum reinforcement learning with superconducting circuits
https://www.nature.com/articles/s41598-017-01711-
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https://www.nature.com/articles/s41598-017-01711-
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Progress-in-Quantum-Reinforcement-Learning
http://qtml2017.di.univr.it/resources/Slides/Progress-in-Quantum-Reinforcement-Learning.pdf
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http://qtml2017.di.univr.it/resources/Slides/Progress-in-Quantum-Reinforcement-Learning.pdf
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R in Pharmacy? Honestly, I started losing any hope to see the pharmacy turning (even slowly!) towards R. A little has been happening since 1976, when the S (father of R), was born. And even when S, then R, gained the status of an industry standard in widely understood bio-sciences, it has never happened in pharmacy, namely in clinical research. This was -and still is- the kingdom exclusively reigned by SAS The King (with a low % of "supporters", including R).
It was a big shame, but, what could have been done against long years of spread myths, doubt, uncertainty and negative attitude?
Well, this is not that everything was right about R! Serious topics still have to be addressed, including:
1) numerical validation (ideally free, coordinated by, say, R Consortium),
2) support for CDISC-related processes,
3) metadata layer (SAS format/informat),
There are more topics, yet there's no place for details.
And then, about 5 years ago, something started changing. Slowly. More and more top-pharma companies (even FDA!) started talking about their use of R publicly, some even contributed (e.g. Merck's gsDesign tool).
Today I'd like to share with you the news: a new initiative by R Consortium - the "R in Pharma" project. http://rinpharma.com/
#R #statistics
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It was a big shame, but, what could have been done against long years of spread myths, doubt, uncertainty and negative attitude?
Well, this is not that everything was right about R! Serious topics still have to be addressed, including:
1) numerical validation (ideally free, coordinated by, say, R Consortium),
2) support for CDISC-related processes,
3) metadata layer (SAS format/informat),
There are more topics, yet there's no place for details.
And then, about 5 years ago, something started changing. Slowly. More and more top-pharma companies (even FDA!) started talking about their use of R publicly, some even contributed (e.g. Merck's gsDesign tool).
Today I'd like to share with you the news: a new initiative by R Consortium - the "R in Pharma" project. http://rinpharma.com/
#R #statistics
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"The Matrix Calculus You Need For Deep Learning"
By Terence Parr and Jeremy Howard : https://lnkd.in/dC5MqZM
#100DaysOfMLCode #ArtificialIntelligence #BigData #DeepLearning #MachineLearning
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By Terence Parr and Jeremy Howard : https://lnkd.in/dC5MqZM
#100DaysOfMLCode #ArtificialIntelligence #BigData #DeepLearning #MachineLearning
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Deeper peer-reviewed dive into how AlphaZero learns to play Chess, Shoji, & Go, beating previous world-class AIs in 4, 2, & 30 hours respectively. Generalizes to potentially any perfect information game. Science
Paper: http://science.sciencemag.org/content/362/6419/1140 โฆ
Blog:
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Paper: http://science.sciencemag.org/content/362/6419/1140 โฆ
Blog:
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On intelligence: its creation and understanding
The intertwined quest for understanding biological intelligence and creating artificial intelligence.
By Surya Ganguli, Stanford Human Centered AI Initiative:
https://lnkd.in/ezciPda
#neuroscience #ai #physics #mathematics
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The intertwined quest for understanding biological intelligence and creating artificial intelligence.
By Surya Ganguli, Stanford Human Centered AI Initiative:
https://lnkd.in/ezciPda
#neuroscience #ai #physics #mathematics
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Deep Learning with Electronic Health Record (EHR) Systems
http://bit.ly/2yeNVy5
#AI #DeepLearning #MachineLearning #DataScience
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http://bit.ly/2yeNVy5
#AI #DeepLearning #MachineLearning #DataScience
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[ Paper Summary ] Matrix Factorization Techniques for Recommender Systems
#MachineLearning #RecommenderSystems
link
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#MachineLearning #RecommenderSystems
link
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Michelangelo PyML: Introducing Uber's Platform for Rapid Python ML Model Development
https://ubr.to/2AolQH6
#AI #DeepLearning #MachineLearning #DataScience
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https://ubr.to/2AolQH6
#AI #DeepLearning #MachineLearning #DataScience
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Applied Federated Learning: Improving Google Keyboard Query Suggestions
By Yang, Andrew, and Eichner et al.: https://lnkd.in/gP9uJ7Y
#machinelearning #artificialintelligence #bigdata #deeplearning
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By Yang, Andrew, and Eichner et al.: https://lnkd.in/gP9uJ7Y
#machinelearning #artificialintelligence #bigdata #deeplearning
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Reading Abstracts from NIPS/NeurIPS 2018! Here is What I Learned
๐ Link Review
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Completing someone elseโs thought is not an easy trick for #AI. But new systems are starting to crack the code of natural language. Read more via
Link
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Link
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Key Papers in Deep RL by OpenAI List of papers in deep RL that should provide a useful starting point for someone looking to do research in the field.
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#machinelearning #ArtificialIntelligence #ai
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๐ Link Review
#machinelearning #ArtificialIntelligence #ai
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A Beginner's Guide to the Mathematics of Neural Networks
By A.C.C. Coolen : https://lnkd.in/dsxSCBj
#ArtificialIntelligence #NeuralNetworks
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By A.C.C. Coolen : https://lnkd.in/dsxSCBj
#ArtificialIntelligence #NeuralNetworks
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