- See Also
- Gwern
-
Links
- “WebP: The WebPage Compression Format”, Sireneva 2024
- “Investigating Learning-Independent Abstract Reasoning in Artificial Neural Networks”, Barak & Loewenstein 2024
- “SemantiCodec: An Ultra Low Bitrate Semantic Audio Codec for General Sound”, Liu et al 2024
- “Training LLMs over Neurally Compressed Text”, Lester et al 2024
- “Infini-Gram: Scaling Unbounded n-Gram Language Models to a Trillion Tokens”, Liu et al 2024
- “Language Modeling Is Compression”, Delétang et al 2023
- “Bayesian Flow Networks”, Graves et al 2023
- “Gzip versus Bag-Of-Words for Text Classification With k-NN”, Opitz 2023
- “High-Fidelity Audio Compression With Improved RVQGAN”, Kumar et al 2023
- “White-Box Transformers via Sparse Rate Reduction”, Yu et al 2023
- “How to Enumerate Trees from a Context-Free Grammar”, Piantadosi 2023
- “DIRAC: Neural Image Compression With a Diffusion-Based Decoder”, Goose et al 2023
- “Less Is More: Parameter-Free Text Classification With Gzip”, Jiang et al 2022
- “Low-Bitrate Redundancy Coding of Speech Using a Rate-Distortion-Optimized Variational Autoencoder”, Valin et al 2022
- “RGB No More: Minimally-Decoded JPEG Vision Transformers”, Park & Johnson 2022
- “High Fidelity Neural Audio Compression”, Défossez et al 2022
- “T2CI-GAN: Text to Compressed Image Generation Using Generative Adversarial Network”, Rajesh et al 2022
- “DiffC: Lossy Compression With Gaussian Diffusion”, Theis et al 2022
- “MuZero With Self-Competition for Rate Control in VP9 Video Compression”, Mandhane et al 2022
- “A Deep Dive into an NSO Zero-Click IMessage Exploit: Remote Code Execution”, Beer & Groß 2021
- “Palette: Image-To-Image Diffusion Models”, Saharia et al 2021
- “Autoregressive Diffusion Models”, Hoogeboom et al 2021
- “Variational Diffusion Models”, Kingma et al 2021
- “Rip Van Winkle’s Razor, a Simple New Estimate for Adaptive Data Analysis”, Arora & Zhang 2021
- “Why Are Tar.xz Files 15× Smaller When Using Python’s Tar Library Compared to MacOS Tar?”, Lindestøkke 2021
- “Generating Images With Sparse Representations”, Nash et al 2021
- “Rip Van Winkle’s Razor: A Simple Estimate of Overfit to Test Data”, Arora & Zhang 2021
- “Generative Speech Coding With Predictive Variance Regularization”, Kleijn et al 2021
- “1-Bit Adam: Communication Efficient Large-Scale Training With Adam’s Convergence Speed”, Tang et al 2021
- “Scaling Laws for Autoregressive Generative Modeling”, Henighan et al 2020
- “Not-So-BigGAN: Generating High-Fidelity Images on Small Compute With Wavelet-Based Super-Resolution”, Han et al 2020
- “Zip Files: History, Explanation and Implementation”, Wennborg 2020
- “The 1-Bit Instrument: The Fundamentals of 1-Bit Synthesis, Their Implementational Implications, and Instrumental Possibilities”, Troise 2020
- “People Prefer Simpler Content When There Are More Choices: A Time Series Analysis of Lyrical Complexity in Six Decades of American Popular Music”, Varnum et al 2019
- “Bit-Swap: Recursive Bits-Back Coding for Lossless Compression With Hierarchical Latent Variables”, Kingma et al 2019
- “Unraveling the JPEG: JPEG Images Are Everywhere in Our Digital Lives, but behind the Veil of Familiarity Lie Algorithms That Remove Details That Are Imperceptible to the Human Eye. This Produces the Highest Visual Quality With the Smallest File Size—But What Does That Look Like? Let’s See What Our Eyes Can’t See!”, Shehata 2019
- “Practical Lossless Compression With Latent Variables Using Bits Back Coding”, Townsend et al 2019
- “SignSGD: Compressed Optimization for Non-Convex Problems”, Bernstein et al 2018
- “Lempel-Ziv: a ‘1-Bit Catastrophe’ but Not a Tragedy”, Lagarde & Perifel 2017
- “BBhash: Fast and Scalable Minimal Perfect Hashing for Massive Key Sets”, Limasset et al 2017
- “Full Resolution Image Compression With Recurrent Neural Networks”, Toderici et al 2016
- “On Learning to Think: Algorithmic Information Theory for Novel Combinations of Reinforcement Learning Controllers and Recurrent Neural World Models”, Schmidhuber 2015
- “Compress and Control”, Veness et al 2014
- “A Really Simple Approximation of Smallest Grammar”, Jeż 2014
- “One Billion Word Benchmark for Measuring Progress in Statistical Language Modeling”, Chelba et al 2013
- “The Thermodynamics of Prediction”, Still et al 2012
- “Notes on a New Philosophy of Empirical Science”, Burfoot 2011
- “Universal Entropy of Word Ordering Across Linguistic Families”, Montemurro & Zanette 2011
- “Google-Wide Profiling: A Continuous Profiling Infrastructure for Data Centers”, Ren et al 2010
- “New Strategy of Lossy Text Compression”, Al-Dubaee & Ahmad 2010
- “A Monte Carlo AIXI Approximation”, Veness et al 2009
- “A Machine Learning Perspective on Predictive Coding With PAQ8 and New Applications”, Knoll 2009
- “The Bayesian Brain: the Role of Uncertainty in Neural Coding and Computation”, Knill & Pouget 2004
- “Clustering by Compression”, Cilibrasi & Vitanyi 2003
- “Data Compression and Entropy Estimates by Non-Sequential Recursive Pair Substitution”, Grassberger 2002
- “Compression and Information Leakage of Plaintext”, Kelsey 2002
- “Estimating and Comparing Entropy across Written Natural Languages Using PPM Compression”, Behr et al 2002
- “Language Trees and Zipping”, Benedetto et al 2001
- “Redundancy Reduction Revisited”, Barlow 2001
- “Fast Text Compression With Neural Networks”, Mahoney 2000
- “Text Compression As a Test for Artificial Intelligence”, Mahoney 1999
- “An Information-Theoretic Model for Steganography”, Cachin 1998
- “The Art of Computer Programming, Volume 3: Sorting & Searching § Chapter 6, Searching: Hashing: History”, Knuth 1998
- “THE ENTROPY OF ENGLISH USING PPM-BASED MODELS—Data Compression Conference, 1996. DCC '96. Proceedings”
- “Measuring the Complexity of Writing Systems”, Bosch et al 1994
- “Entropy of Natural Languages: Theory and Experiment”, Levitin & Reingold 1994
- “Possible Principles Underlying the Transformations of Sensory Messages”, Barlow 1961
- “Prediction and Entropy of Printed English”, Shannon 1951
- “About the Test Data”
- “Timm S. Mueller”
- “Codec2: a Whole Podcast on a Floppy Disk”
- “Finding Near-Duplicates With Jaccard Similarity and MinHash”
- “How We Shrank Our Trip Planner till It Didn’t Need Data.”
- “Statistical Inference Through Data Compression”
- “ChessPositionRanking/img/2389704906374985477664262349386869232706664089.png at Main · Tromp/ChessPositionRanking”
- “Relation of Word Order and Compression Ratio and Degree of Structure”
- “King James Programming”
- “That Alien Message”, Yudkowsky 2024
- Sort By Magic
- Wikipedia
- Miscellaneous
- Bibliography
See Also
Gwern
“Research Ideas”, Gwern 2017
“Umineko: The Hopium Of The Magics”, Gwern 2018
“The sort –key
Trick”, Gwern 2014
“Against Copyright”, Gwern 2008
Links
“WebP: The WebPage Compression Format”, Sireneva 2024
“Investigating Learning-Independent Abstract Reasoning in Artificial Neural Networks”, Barak & Loewenstein 2024
Investigating learning-independent abstract reasoning in artificial neural networks
“SemantiCodec: An Ultra Low Bitrate Semantic Audio Codec for General Sound”, Liu et al 2024
SemantiCodec: An Ultra Low Bitrate Semantic Audio Codec for General Sound
“Training LLMs over Neurally Compressed Text”, Lester et al 2024
“Infini-Gram: Scaling Unbounded n-Gram Language Models to a Trillion Tokens”, Liu et al 2024
Infini-gram: Scaling Unbounded n-gram Language Models to a Trillion Tokens
“Language Modeling Is Compression”, Delétang et al 2023
“Bayesian Flow Networks”, Graves et al 2023
“Gzip versus Bag-Of-Words for Text Classification With k-NN”, Opitz 2023
“High-Fidelity Audio Compression With Improved RVQGAN”, Kumar et al 2023
“White-Box Transformers via Sparse Rate Reduction”, Yu et al 2023
“How to Enumerate Trees from a Context-Free Grammar”, Piantadosi 2023
“DIRAC: Neural Image Compression With a Diffusion-Based Decoder”, Goose et al 2023
DIRAC: Neural Image Compression with a Diffusion-Based Decoder
“Less Is More: Parameter-Free Text Classification With Gzip”, Jiang et al 2022
“Low-Bitrate Redundancy Coding of Speech Using a Rate-Distortion-Optimized Variational Autoencoder”, Valin et al 2022
Low-Bitrate Redundancy Coding of Speech Using a Rate-Distortion-Optimized Variational Autoencoder
“RGB No More: Minimally-Decoded JPEG Vision Transformers”, Park & Johnson 2022
“High Fidelity Neural Audio Compression”, Défossez et al 2022
“T2CI-GAN: Text to Compressed Image Generation Using Generative Adversarial Network”, Rajesh et al 2022
T2CI-GAN: Text to Compressed Image generation using Generative Adversarial Network
“DiffC: Lossy Compression With Gaussian Diffusion”, Theis et al 2022
“MuZero With Self-Competition for Rate Control in VP9 Video Compression”, Mandhane et al 2022
MuZero with Self-competition for Rate Control in VP9 Video Compression
“A Deep Dive into an NSO Zero-Click IMessage Exploit: Remote Code Execution”, Beer & Groß 2021
A deep dive into an NSO zero-click iMessage exploit: Remote Code Execution
“Palette: Image-To-Image Diffusion Models”, Saharia et al 2021
“Autoregressive Diffusion Models”, Hoogeboom et al 2021
“Variational Diffusion Models”, Kingma et al 2021
“Rip Van Winkle’s Razor, a Simple New Estimate for Adaptive Data Analysis”, Arora & Zhang 2021
Rip van Winkle’s Razor, a Simple New Estimate for Adaptive Data Analysis
“Why Are Tar.xz Files 15× Smaller When Using Python’s Tar Library Compared to MacOS Tar?”, Lindestøkke 2021
Why are tar.xz files 15× smaller when using Python’s tar library compared to macOS tar?
“Generating Images With Sparse Representations”, Nash et al 2021
“Rip Van Winkle’s Razor: A Simple Estimate of Overfit to Test Data”, Arora & Zhang 2021
Rip van Winkle’s Razor: A Simple Estimate of Overfit to Test Data
“Generative Speech Coding With Predictive Variance Regularization”, Kleijn et al 2021
Generative Speech Coding with Predictive Variance Regularization
“1-Bit Adam: Communication Efficient Large-Scale Training With Adam’s Convergence Speed”, Tang et al 2021
1-bit Adam: Communication Efficient Large-Scale Training with Adam’s Convergence Speed
“Scaling Laws for Autoregressive Generative Modeling”, Henighan et al 2020
“Not-So-BigGAN: Generating High-Fidelity Images on Small Compute With Wavelet-Based Super-Resolution”, Han et al 2020
not-so-BigGAN: Generating High-Fidelity Images on Small Compute with Wavelet-based Super-Resolution
“Zip Files: History, Explanation and Implementation”, Wennborg 2020
“The 1-Bit Instrument: The Fundamentals of 1-Bit Synthesis, Their Implementational Implications, and Instrumental Possibilities”, Troise 2020
“People Prefer Simpler Content When There Are More Choices: A Time Series Analysis of Lyrical Complexity in Six Decades of American Popular Music”, Varnum et al 2019
“Bit-Swap: Recursive Bits-Back Coding for Lossless Compression With Hierarchical Latent Variables”, Kingma et al 2019
Bit-Swap: Recursive Bits-Back Coding for Lossless Compression with Hierarchical Latent Variables
“Unraveling the JPEG: JPEG Images Are Everywhere in Our Digital Lives, but behind the Veil of Familiarity Lie Algorithms That Remove Details That Are Imperceptible to the Human Eye. This Produces the Highest Visual Quality With the Smallest File Size—But What Does That Look Like? Let’s See What Our Eyes Can’t See!”, Shehata 2019
“Practical Lossless Compression With Latent Variables Using Bits Back Coding”, Townsend et al 2019
Practical Lossless Compression with Latent Variables using Bits Back Coding
“SignSGD: Compressed Optimization for Non-Convex Problems”, Bernstein et al 2018
“Lempel-Ziv: a ‘1-Bit Catastrophe’ but Not a Tragedy”, Lagarde & Perifel 2017
“BBhash: Fast and Scalable Minimal Perfect Hashing for Massive Key Sets”, Limasset et al 2017
BBhash: Fast and scalable minimal perfect hashing for massive key sets
“Full Resolution Image Compression With Recurrent Neural Networks”, Toderici et al 2016
Full Resolution Image Compression with Recurrent Neural Networks
“On Learning to Think: Algorithmic Information Theory for Novel Combinations of Reinforcement Learning Controllers and Recurrent Neural World Models”, Schmidhuber 2015
“Compress and Control”, Veness et al 2014
“A Really Simple Approximation of Smallest Grammar”, Jeż 2014
“One Billion Word Benchmark for Measuring Progress in Statistical Language Modeling”, Chelba et al 2013
One Billion Word Benchmark for Measuring Progress in Statistical Language Modeling
“The Thermodynamics of Prediction”, Still et al 2012
“Notes on a New Philosophy of Empirical Science”, Burfoot 2011
“Universal Entropy of Word Ordering Across Linguistic Families”, Montemurro & Zanette 2011
Universal Entropy of Word Ordering Across Linguistic Families
“Google-Wide Profiling: A Continuous Profiling Infrastructure for Data Centers”, Ren et al 2010
Google-Wide Profiling: A Continuous Profiling Infrastructure for Data Centers
“New Strategy of Lossy Text Compression”, Al-Dubaee & Ahmad 2010
“A Monte Carlo AIXI Approximation”, Veness et al 2009
“A Machine Learning Perspective on Predictive Coding With PAQ8 and New Applications”, Knoll 2009
A Machine Learning Perspective on Predictive Coding with PAQ8 and New Applications:
“The Bayesian Brain: the Role of Uncertainty in Neural Coding and Computation”, Knill & Pouget 2004
The Bayesian brain: the role of uncertainty in neural coding and computation
“Clustering by Compression”, Cilibrasi & Vitanyi 2003
“Data Compression and Entropy Estimates by Non-Sequential Recursive Pair Substitution”, Grassberger 2002
Data Compression and Entropy Estimates by Non-sequential Recursive Pair Substitution
“Compression and Information Leakage of Plaintext”, Kelsey 2002
“Estimating and Comparing Entropy across Written Natural Languages Using PPM Compression”, Behr et al 2002
Estimating and Comparing Entropy across Written Natural Languages Using PPM Compression
“Language Trees and Zipping”, Benedetto et al 2001
“Redundancy Reduction Revisited”, Barlow 2001
“Fast Text Compression With Neural Networks”, Mahoney 2000
“Text Compression As a Test for Artificial Intelligence”, Mahoney 1999
“An Information-Theoretic Model for Steganography”, Cachin 1998
“The Art of Computer Programming, Volume 3: Sorting & Searching § Chapter 6, Searching: Hashing: History”, Knuth 1998
“THE ENTROPY OF ENGLISH USING PPM-BASED MODELS—Data Compression Conference, 1996. DCC '96. Proceedings”
“Measuring the Complexity of Writing Systems”, Bosch et al 1994
“Entropy of Natural Languages: Theory and Experiment”, Levitin & Reingold 1994
“Possible Principles Underlying the Transformations of Sensory Messages”, Barlow 1961
Possible Principles Underlying the Transformations of Sensory Messages
“Prediction and Entropy of Printed English”, Shannon 1951
“About the Test Data”
“Timm S. Mueller”
“Codec2: a Whole Podcast on a Floppy Disk”
“Finding Near-Duplicates With Jaccard Similarity and MinHash”
Finding near-duplicates with Jaccard similarity and MinHash:
“How We Shrank Our Trip Planner till It Didn’t Need Data.”
“Statistical Inference Through Data Compression”
“ChessPositionRanking/img/2389704906374985477664262349386869232706664089.png at Main · Tromp/ChessPositionRanking”
“Relation of Word Order and Compression Ratio and Degree of Structure”
Relation of Word Order and Compression Ratio and Degree of Structure
“King James Programming”
“That Alien Message”, Yudkowsky 2024
Sort By Magic
Annotations sorted by machine learning into inferred 'tags'. This provides an alternative way to browse: instead of by date order, one can browse in topic order. The 'sorted' list has been automatically clustered into multiple sections & auto-labeled for easier browsing.
Beginning with the newest annotation, it uses the embedding of each annotation to attempt to create a list of nearest-neighbor annotations, creating a progression of topics. For more details, see the link.
data-compression
compression
compression-strategies
speech-coding
diffusion-models
Wikipedia
Miscellaneous
-
/doc/cs/algorithm/information/compression/2010-stevesouder-forcinggzipcompression.html
: -
/doc/cs/algorithm/information/compression/2004-ryannorth-dinosaurcomics-391.png
: -
http://brokenbytes.blogspot.com/2015/04/the-making-of-p0-snake-part-3-audio.html
: -
http://slightlynew.blogspot.com/2011/05/who-writes-wikipedia-information.html
: -
http://thevirtuosi.blogspot.com/2011/08/tweet-is-worth-at-least-140-words.html
: -
https://ai.facebook.com/blog/deepfovea-using-deep-learning-for-foveated-reconstruction-in-ar-vr
-
View External Link:
-
https://blog.andrewcantino.com/blog/2012/06/15/compressing-code/
-
https://blog.cloudflare.com/brotli-compression-using-a-reduced-dictionary/
: -
https://blog.cloudflare.com/improving-compression-with-preset-deflate-dictionary/
: -
https://blog.jcoglan.com/2017/02/12/the-myers-diff-algorithm-part-1/
-
https://clemenswinter.com/2024/04/07/the-simple-beauty-of-xor-floating-point-compression/
: -
https://cloudinary.com/blog/a_one_color_image_is_worth_two_thousand_words#the_most_predictable_image
: -
https://code.flickr.net/2015/09/25/perceptual-image-compression-at-flickr/
: -
https://code4k.blogspot.com/2010/12/crinkler-secrets-4k-intro-executable.html
: -
https://fastcompression.blogspot.com/2018/02/when-to-use-dictionary-compression.html
: -
https://frankforce.com/city-in-a-bottle-a-256-byte-raycasting-system/
: -
https://gist.github.com/munificent/b1bcd969063da3e6c298be070a22b604
-
https://github.com/facebook/zstd#the-case-for-small-data-compression
-
https://github.com/mhx/dwarfs?tab=readme-ov-file#comparison
: -
https://intapi.sciendo.com/pdf/10.2478/ijasitels-2020-0003
: -
https://killedbyapixel.github.io/TinyCode/games/CrossMyHeart/
:View External Link:
https://killedbyapixel.github.io/TinyCode/games/CrossMyHeart/
-
https://kylehovey.github.io/blog/automata-nebula
:View External Link:
-
https://lichess.org/@/lichess/blog/developer-update-275-improved-game-compression/Wqa7GiAA
-
https://mailinator.blogspot.com/2012/02/how-mailinator-compresses-email-by-90.html
: -
https://mattmahoney.net/dc/dce.html
:View HTML:
-
https://maxhalford.github.io/blog/text-classification-by-compression/
:View External Link:
https://maxhalford.github.io/blog/text-classification-by-compression/
-
https://research.google/blog/lyra-a-new-very-low-bitrate-codec-for-speech-compression/
-
https://shkspr.mobi/blog/2024/01/compressing-text-into-images/
: -
https://spectrum.ieee.org/hans-peter-luhn-and-the-birth-of-the-hashing-algorithm
: -
https://terrytao.wordpress.com/2007/04/13/compressed-sensing-and-single-pixel-cameras/
: -
https://timepedia.blogspot.com/2009/08/on-reducing-size-of-compressed.html
-
https://timepedia.blogspot.com/2009/11/traveling-salesman-problem-and.html
: -
https://triplehappy.wordpress.com/2015/10/26/chess-move-compression/
: -
https://wrap.warwick.ac.uk/61087/7/WRAP_cs-rr-360.pdf#page=2
: -
https://www.antoniomallia.it/sorted-integers-compression-with-elias-fano-encoding.html
: -
https://www.chromium.org/developers/design-documents/software-updates-courgette/
: -
https://www.stavros.io/posts/compressing-images-with-stable-diffusion/
Bibliography
-
https://arxiv.org/abs/2309.10668#deepmind
: “Language Modeling Is Compression”, -
https://arxiv.org/abs/2212.09410
: “Less Is More: Parameter-Free Text Classification With Gzip”, -
https://arxiv.org/abs/2210.13438#facebook
: “High Fidelity Neural Audio Compression”, -
https://www.offconvex.org/2021/04/07/ripvanwinkle/
: “Rip Van Winkle’s Razor, a Simple New Estimate for Adaptive Data Analysis”, -
https://arxiv.org/abs/2102.02888#microsoft
: “1-Bit Adam: Communication Efficient Large-Scale Training With Adam’s Convergence Speed”, -
https://arxiv.org/abs/2010.14701#openai
: “Scaling Laws for Autoregressive Generative Modeling”, -
https://arxiv.org/abs/2009.04433
: “Not-So-BigGAN: Generating High-Fidelity Images on Small Compute With Wavelet-Based Super-Resolution”, -
1994-vandenbosch.pdf
: “Measuring the Complexity of Writing Systems”, -
1961-barlow.pdf
: “Possible Principles Underlying the Transformations of Sensory Messages”,