AI, Python, Cognitive Neuroscience
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AI-GAs: AI-generating algorithms, an alternate paradigm for producing general artificial intelligence
https://arxiv.org/abs/1905.10985
#ArtificialIntelligence #ArtificialGeneralIntelligence

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A curated list of gradient boosting research papers with implementations.

https://github.com/benedekrozemberczki/awesome-gradient-boosting-papers

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All You Need About Common MachineLearning Algorithms.pdf
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All You Need About Common #MachineLearning Algorithms

Here is the list of commonly used machine learning algorithms. The code is provided in both #R and #Python. These algorithms can be applied to almost any data problem:

Linear Regression
Logistic Regression
Decision Tree
SVM
Naive Bayes
kNN
K-Means
Random Forest
Dimensionality Reduction Algorithms
Gradient Boosting algorithms
✔️GBM
✔️XGBoost
✔️LightGBM
✔️CatBoost


#ai #datascienece

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TensorFlow Graphics Library for Unsupervised Deep Learning of Computer Vision Model

github: https://github.com/tensorflow/graphics

#machinelearning #deeplearning #computervision

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SimpleSelfAttention

The purpose of this repository is two-fold:
-demonstrate improvements brought by the use of a self-attention layer in an image -classification model.
introduce a new layer which I call SimpleSelfAttention


https://github.com/sdoria/SimpleSelfAttention

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website, which will provide you all up-to-date and necessary information on #ArtificialIntelligence, #MachineLearning, Deep Learning and some brain activities. You will also find TED Talks, Lectures and academic writings on these issues.

https://www.newworldai.com/

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How to read a scientific paper

#paper
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Set of animated Artificial Intelligence cheatsheets covering Stanford's CS 221 class:

Reflex-based: http://stanford.io/2EqNPHy
States-based: http://stanford.io/2wh4F7u
Variables-based: http://stanford.io/2HAiAfh
Logic-based: http://stanford.io/2M7taia

GitHub: https://github.com/afshinea/stanford-cs-221-artificial-intelligence

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Working with mini-imagent for few-shot classification? You might be interested in the pre-trained features from the LEO authors: https://github.com/deepmind/leo 🤖 Great to see these open sourced!

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MNIST reborn, restored and expanded. Now with an extra 50,000 training samples. If you used the original MNIST test set more than a few times, chances are your models overfit the test set. Time to test them on those extra samples. https://arxiv.org/abs/1905.10498

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The field of statistics has very long history, dating back to ancient times.

Much of marketing data science can be traced to the origins of actuarial science, demography, sociology and psychology, with early statisticians playing major roles in all of these fields.

Big is relative, and statisticians have been working with "big data" all along. "Machine learners" such as SVM and random forests originated in statistics, and neural nets were inspired as much by regression as by theories of the human brain.

Statisticians are involved in a diverse range of fields, including marketing, psychology, pharmacology, economics, meteorology, political science and ecology, and have helped developed research methods and analytics for nearly any kind of data.

The history and richness of #statistics is not always appreciated, though. For example, this morning I was asked "How's your #machinelearning?" :-)

✴️ @AI_Python_EN
💡💡 K-means Clustering – In-depth Tutorial with Example 💡💡

Credits - Data Flair

Link - https://lnkd.in/eCQUriR

#machineleaning #supervisedlearning #unsupervisedlearning #datascience #data #ai # #technology #deeplearning #artificalintelligence

✴️ @AI_Python_EN
Sampling is a deceptively complex subject, and some academic statisticians have devoted the bulk of their careers to it.

It's not a subject that thrills everyone but is a very important one, and one which seems underappreciated in marketing research and #data science.

Here are some books on or related to sampling I've found helpful:

- Survey Sampling (Kish)
- Sampling Techniques (Cochran)
- Model Assisted Survey Sampling (Särndal et al.)
- Sampling: Design and Analysis (Lohr)
- Practical Tools for Designing and Weighting Survey Samples (Valliant et al.)
- Survey Weights: A Step-by-step Guide to Calculation (Valliant and Dever)
- Complex Surveys (Lumley)
- Hard-to-Survey Populations (Tourangeau et al.)
- Small Area Estimation (Rao and Molina)


The first three are regarded as classics (though still relevant.) Sharon Lohr's book is the friendliest introduction I know of on this subject. Standard marketing research textbooks also give simple overviews of sampling but do not get into depth.

There are also academic journals that feature articles on sampling, such as the Public Opinion Quarterly (AAPOR) and the Journal of Survey #Statistics and Methodology (AAPOR and ASA).

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Zero-shot Knowledge Transfer via Adversarial Belief Matching
Interesting paper on training student networks using a teacher network, without having access to the original training set.
Nowadays most pre-trained models are released without access to the actual data. The original data set might be sensitive in nature or very large. The idea here is to train a second network to learn the decision boundary of the large network.

Code:
http://bit.ly/2X9ChQt

Paper:
http://bit.ly/2XauCRS

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Fact about #datascience practice in companies

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This is Your Brain on Code 🧠💻🔢 computer programming is often associated with math, but researchers used functional MRI scans to show the role of the brain's language processing centers: https://lnkd.in/eN_-3RA

#datascience #machinelearning #ai #bigdata #analytics #statistics #artificialintelligence #datamining #computing #programmers #neuroscience

✴️ @AI_Python_EN
A nice explanation of backpropagation.
The notations are influenced by fast.ai (Deep Learning) program at USF and Deep Learning specialization course in Coursera.

https://lnkd.in/dthbv7U

#Deeplearning

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#SparkNLP: State of the Art Natural Language Processing
Spark NLP ships with many NLP features, pre-trained models and pipelines #johnsnowlab

NLP Features:
#Tokenization; #Normalizer; #Stemmer; #Lemmatizer; #RegexMatching; #TextMatching; #Chunking; #DateMatcher; #Part-of-speech tagging; #SentenceDetector; #SentimentDetection (ML model); #SpellChecker (ML and DL models); #WordEmbeddings (#BERT and #GloVe); #Namedentityrecognition; #Dependencyparsing (Labeled/unlabled); Easy #TensorFlow integration; #pretrainedpipelines!

Github: https://lnkd.in/fbWquan
Website: https://lnkd.in/fRqsDHX

✴️ @AI_Python_EN
Simpson's paradox and Interpreting data

"A trend or result that is present when data is put into groups that reverses or disappears when the data is combined"

It is interesting to face these kind of challenges when working on the data and it gets even more interesting when you have to find way to select the right data points to make some concrete decisions.

Have a look at this article.

Link - https://lnkd.in/fnHswjM

I hope this helps! Have a productive weekend.

✴️ @AI_Python_EN