Premium Only Content
Typical Decoding for Natural Language Generation (Get more human-like outputs from language models!)
#deeplearning #nlp #sampling
Modern language models like T5 or GPT-3 achieve remarkably low perplexities on both training and validation data, yet when sampling from their output distributions, the generated text often seems dull and uninteresting. Various workarounds have been proposed, such as top-k sampling and nucleus sampling, but while these manage to somewhat improve the generated samples, they are hacky and unfounded. This paper introduces typical sampling, a new decoding method that is principled, effective, and can be implemented efficiently. Typical sampling turns away from sampling purely based on likelihood and explicitly finds a trade-off between generating high-probability samples and generating high-information samples. The paper connects typical sampling to psycholinguistic theories on human speech generation, and shows experimentally that typical sampling achieves much more diverse and interesting results than any of the current methods.
Sponsor: Fully Connected by Weights & Biases
https://wandb.ai/fully-connected
OUTLINE:
0:00 - Intro
1:50 - Sponsor: Fully Connected by Weights & Biases
4:10 - Paper Overview
7:40 - What's the problem with sampling?
11:45 - Beam Search: The good and the bad
14:10 - Top-k and Nucleus Sampling
16:20 - Why the most likely things might not be the best
21:30 - The expected information content of the next word
25:00 - How to trade off information and likelihood
31:25 - Connections to information theory and psycholinguistics
36:40 - Introducing Typical Sampling
43:00 - Experimental Evaluation
44:40 - My thoughts on this paper
Paper: https://arxiv.org/abs/2202.00666
Code: https://github.com/cimeister/typical-...
Abstract:
Despite achieving incredibly low perplexities on myriad natural language corpora, today's language models still often underperform when used to generate text. This dichotomy has puzzled the language generation community for the last few years. In this work, we posit that the abstraction of natural language as a communication channel (à la Shannon, 1948) can provide new insights into the behaviors of probabilistic language generators, e.g., why high-probability texts can be dull or repetitive. Humans use language as a means of communicating information, and do so in a simultaneously efficient and error-minimizing manner; they choose each word in a string with this (perhaps subconscious) goal in mind. We propose that generation from probabilistic models should mimic this behavior. Rather than always choosing words from the high-probability region of the distribution--which have a low Shannon information content--we sample from the set of words with information content close to the conditional entropy of our model, i.e., close to the expected information content. This decision criterion can be realized through a simple and efficient implementation, which we call typical sampling. Automatic and human evaluations show that, in comparison to nucleus and top-k sampling, typical sampling offers competitive performance in terms of quality while consistently reducing the number of degenerate repetitions.
Authors: Clara Meister, Tiago Pimentel, Gian Wiher, Ryan Cotterell
Links:
Merch: store.ykilcher.com
TabNine Code Completion (Referral): http://bit.ly/tabnine-yannick
YouTube: https://www.youtube.com/c/yannickilcher
Twitter: https://twitter.com/ykilcher
Discord: https://discord.gg/4H8xxDF
BitChute: https://www.bitchute.com/channel/yann...
LinkedIn: https://www.linkedin.com/in/ykilcher
BiliBili: https://space.bilibili.com/2017636191
If you want to support me, the best thing to do is to share out the content :)
If you want to support me financially (completely optional and voluntary, but a lot of people have asked for this):
SubscribeStar: https://www.subscribestar.com/yannick...
Patreon: https://www.patreon.com/yannickilcher
Bitcoin (BTC): bc1q49lsw3q325tr58ygf8sudx2dqfguclvngvy2cq
Ethereum (ETH): 0x7ad3513E3B8f66799f507Aa7874b1B0eBC7F85e2
Litecoin (LTC): LQW2TRyKYetVC8WjFkhpPhtpbDM4Vw7r9m
Monero (XMR): 4ACL8AGrEo5hAir8A9CeVrW8pEauWvnp1WnSDZxW7tziCDLhZAGsgzhRQABDnFy8yuM9fWJDviJPHKRjV4FWt19CJZN9D4n
-
LIVE
GrimmHollywood
3 hours ago🔴LIVE • GRIMM HOLLYWOOD • SGT WILKY'S WARZONE PALOOZA 2 •
71 watching -
20:36
It’s the Final Round
3 hours ago $4.48 earnedNBA Best Bets & Player Props | Full Analysis & Predictions, FREE Today (Saturday 11/9) November 9th
11.5K1 -
LIVE
The Real Tombliboos - Live Streaming
14 hours ago $0.71 earned🎮 Charity Stream for Extra Life 4 Kids! ❤ Supporting Texas Children’s Hospital ! 🙌
135 watching -
LIVE
Amarok_X
4 hours ago🟢LIVE | BF6 REDSEC | OPERATION 100 FOLLOWERS | VETERAN GAMER
16 watching -
18:08
Professor Nez
4 hours ago⚠ Charlie Kirk WARNED America about Zohran Mamdani
12.1K55 -
LIVE
GritsGG
3 hours ago#1 Most Warzone Wins 3943+!
23 watching -
LIVE
FusedAegisTV
6 hours agoFUSEDAEGIS | Generational Video Game?? | Expedition 33 PART I
35 watching -
LIVE
FoeDubb
3 hours ago🏰KINGDOM MENU: 🎮💻🎤FRIDAY NITE VIBES ON DECK DILLY DILLY!!!
9 watching -
2:16:26
Megyn Kelly
1 day agoBen Shapiro Responds to Tucker Carlson, Plus Sydney Sweeney and Newsom, with Knowles and Klavan
92.8K233 -
2:10:39
LFA TV
1 day agoRUMBLE RUNDOWN WEEK 5 with JEREMY HERRELL AND SHAWN FARASH 11.8.25 9AM
141K22