Prompt Engineering Paper Accepted at ICML 2026 Sparks Heated Debate Among Netizens

marsbit2026-07-15 tarihinde yayınlandı2026-07-15 tarihinde güncellendi

Özet

A paper on prompt engineering, titled "Verbalized Sampling (VS)," has been accepted by the prestigious machine learning conference ICML 2026, sparking significant debate online. The paper addresses the problem of "mode collapse" in large language models (LLMs), where models tend to produce repetitive, safe, and homogeneous outputs. Instead of proposing new training algorithms or model architectures, the authors introduce a simple yet effective prompt-based method. The core technique, Verbalized Sampling, instructs the model to generate multiple responses (e.g., five jokes) while also outputting a possible probability value for each. This prompt adjustment alone was shown to significantly increase output diversity by 1.6x to 2.1x in creative writing tasks, without compromising factual accuracy or safety. The authors argue that the root cause of mode collapse lies not in optimization algorithms but in the "typicality bias" present in human preference data used for alignment. Human annotators naturally favor familiar and fluent text, which steers models toward conservative outputs. The VS method aims to counteract this by leveraging the model's inherent pre-training distribution during inference. The paper's acceptance has led to polarized reactions. Critics argue that prompt engineering lacks the theoretical depth and algorithmic innovation expected from top-tier conferences like ICML, questioning its novelty, generalizability across models, and experimental scale. Some draw...

Prompt engineering can get a paper published in ICML these days???

Recently, a guy shared a paper just accepted by ICML 2026 on Reddit, and the post instantly went viral, with the number of comments skyrocketing.

However, everyone was left scratching their heads: Is this for real?

The authors didn't propose any new optimization algorithms or train any new large models. They simply did one thing—

Modified the Prompt.

The paper proposes a method called Verbalized Sampling (VS), which significantly enhances the diversity of large language model outputs and alleviates the long-standing issue of Mode Collapse in LLMs, solely by adjusting the prompt.

It sounds quite practical, but is it right for a mere prompt trick to get into a top-tier conference?

Let's take a look at the paper first before passing judgment.

A Highly Controversial ICML Paper

Have you ever felt that AI is becoming increasingly homogeneous?

Ask it ten times to "Tell me a joke," and the answers you get are often highly similar. This is not only true for creative tasks but also for Q&A, code generation...

This phenomenon is collectively referred to as mode collapse in academia.

Simply put, models increasingly prefer to output the highest probability, safest, and most classic answers, while rejecting alternative creative ideas.

In the past, to solve this model problem, most researchers would first think of adjusting sampling parameters, modifying decoding algorithms, retraining, etc. However, this paper takes a different approach: directly asking the model to output its own sampling process along with the answer.

For example, using the earlier joke-telling scenario, the authors would modify the prompt, requiring the model to:

Generate 5 jokes, while also assigning a possible probability value to each joke.

Then the model can produce more varied and less repetitive answers.

It sounds very simple, doesn't it? In fact, this is the core contribution of the paper—the Verbalized Probability Sampling method. No fine-tuning is needed; just by changing the way of asking, content diversity can be significantly improved.

In the paper, however, the authors provide a rigorous argumentation process for this.

First, they address the root cause of the model's uniformity.

Past academia attributed this problem to algorithmic aspects, such as insufficient reward models or improperly set KL penalty terms. This paper delves deeper, suggesting the real root lies in the preference data itself.

They propose a concept called prototypical bias. From a cognitive psychology perspective, human annotators naturally prefer familiar, fluent, conventional text, and instinctively give higher scores to stereotypical, mainstream answers.

Therefore, even if reward models and optimization algorithms are perfected, as long as the human preference data used for training inherently contains prototypical bias, post-alignment models will still suffer from mode collapse.

The authors tested this repeatedly on five preference datasets and different base models, and the conclusion remained consistent.

After realizing this, the authors argue that since the problem is rooted in the training data, one only needs to consider designing a prompt-based correction scheme during the inference stage. That is, by making the model output the complete probability distribution in the prompt, the model's inherent diverse output distribution from the pre-training phase can be awakened, restoring diversity.

The rest involved running experiments with this method in various scenarios. The results show that in creative writing tasks, diversity was 1.6~2.1 times that of ordinary prompts, without reducing factual accuracy or compromising model safety.

Furthermore, the stronger the model's capabilities and the larger the parameter count, the more pronounced the diversity improvement brought by VS.

So, while the final method presented in the paper is simple, ICML still passed it.

Reddit Users in a Heated Debate

Under the original post, however, opinions on this paper are polarized.

Many netizens expressed that in the past, ICML featured hardcore innovations like new models, new algorithms, and new theories. Merely optimizing prompts or inference processes doesn't qualify as serious machine learning research.

In comparison, the innovation of this work seems somewhat thin, and several issues exist:

First, similar instruction-writing methods are not unique; some even claimed they were writing prompts like this just yesterday. Second, the theory is difficult to verify because prompts might fail when models are changed, unlike algorithms which are more stable. Third, the experimental scale is limited, insufficient to prove this is a universal law.

Some netizens directly compared the current state of the machine learning field to the academic crisis in psychology over a decade ago.

Back then, many researchers had weak statistical foundations and misused statistical tools, leading to many papers with unreproducible conclusions and a severe trust crisis in the field. Similarly, the machine learning industry now heavily relies on empirical experiments and undervalues rigorous theoretical support.

The industry is internally competitive, chasing new methods, but there's a widespread atmosphere of excessive hyperparameter tuning and benchmark score chasing. Many so-called innovative algorithms offer little practical value compared to mature baseline models, being packaged as innovative achievements based on tiny metric improvements.

Essentially, these are issues in paper publishing caused by unclear professional standards following the rapid expansion of the discipline.

But supporters argue that scientific research is not about whose method is more complex. As long as the hypothesis is clear, experiments are sufficient, and results are stable and reproducible, it can still be excellent research.

For example, this paper thoroughly explains what mode collapse is and proposes that the real problem lies in prototypical bias—a viewpoint more important than the prompt itself.

One of the authors also replied in the comments, stating that while the paper appears simple, it actually involves a great deal of complex processing.

The entire work includes complete problem tracing, new theoretical attribution, mathematical derivation, and multi-dimensional quantitative experiments—it's not a shallow, trivial prompt-tuning effort.

Many also mentioned Chain-of-Thought (CoT). When CoT first appeared, it was essentially a one-line prompt:

Let’s think step by step.

But now, almost all reasoning methods can be traced back to CoT. This precisely indicates that prompt engineering is no longer just about writing prompts; it is becoming a new method for studying model behavior.

Over the past decade, machine learning research has almost revolved around training. But now, some usage techniques during the inference stage are gradually moving toward the core of machine learning research.

Perhaps in the coming years, we will see more and more papers like this. They don't add a single line of training code or an extra model parameter, yet they can still change the capability boundaries of large models.

Research Team Introduction

Finally, let's take a look at the research team.

This work was completed by Weiyan Shi's team at Northeastern University (USA) in collaboration with Stanford's Manning Lab and West Virginia University. Jiayi Zhang, Simon Yu, and Derek Chong are listed as co-first authors.

Jiayi Zhang completed her undergraduate studies at the University of Michigan, earning triple bachelor's degrees in Computer Science, Mathematics, and Linguistics. She then pursued a Master's in Computer Science at Northeastern University (USA).

Another paper of hers, "Analyzing the Role of Semantic Representations in the Era of Large Language Models," accepted by the NLP top conference NAACL 2024, also revolves around semantic representation and large models.

Simon Yu is currently pursuing a Ph.D. at Northeastern University (USA), with his main research direction focusing on alignment and reinforcement learning mechanisms in large models. He completed both his bachelor's and master's degrees at the University of Edinburgh and has published several top conference papers.

Besides this paper, another one of his papers, "Unsafer in Many Turns: Benchmarking and Defending Multi-Turn Safety Risks in Tool-Using Agents," was also accepted by ICML 2026.

Derek Chong earned his Master's from Stanford University and is currently a researcher at the Stanford Artificial Intelligence Laboratory. His research primarily focuses on large language models in NLP.

He previously had three years of experience as a founder-entrepreneur and worked at Ello as an Applied Scientist, participating in industry-end AI implementation R&D. He possesses both solid theoretical research skills and rich hands-on practical experience.

References:[1]https://www.reddit.com/r/MachineLearning/comments/1uv1xb3/promptengineering_paper_accepted_to_icml_r/

[2]https://www.linkedin.com/in/jiayizx/[3]https://simonucl.github.io/[4]https://www.linkedin.com/in/derekch/

This article is from the WeChat public account "Qubit" (量子位), author: Focus on Frontier Technology

Trend Kriptolar

İlgili Sorular

QWhat is the main contribution of the 'Verbalized Sampling' paper accepted at ICML 2026?

AThe main contribution is a method called 'Verbalized Sampling' (VS), which involves adjusting prompts to ask language models to output their sampling process (e.g., assign probabilities to multiple generated answers). This simple intervention significantly increases the diversity of LLM outputs and mitigates the 'mode collapse' problem without requiring model retraining or new algorithms.

QAccording to the paper, what is identified as the root cause of the mode collapse problem in LLMs?

AThe paper identifies the root cause as 'typicality bias' in the human preference data used for training. This cognitive bias leads human annotators to consistently favor familiar, fluent, and conventional text. Consequently, the reward models trained on this data steer aligned models towards safe, high-probability answers, causing mode collapse.

QWhat are some of the key criticisms from Reddit users regarding this paper's acceptance at ICML?

ACritics argue that the innovation is thin, noting similar prompt techniques are already in use and questioning the method's stability across different models. They also contend that the experimental scale is insufficient to prove a universal law and express concern that the field is drifting towards an over-reliance on empirical results and 'benchmark hacking' rather than rigorous theoretical contributions.

QHow do the paper's supporters defend its value and acceptance at a top-tier conference?

ASupporters argue that good research is defined by clear hypotheses, rigorous experimentation, and reproducible results, not just complexity. They highlight that the paper's core contribution is the novel theoretical insight into the cause of mode collapse (typicality bias). They also compare it to foundational techniques like Chain-of-Thought, suggesting prompt engineering is evolving into a legitimate method for studying model behavior.

QWhat was the observed impact of the Verbalized Sampling method on creative writing tasks?

AIn creative writing tasks, the Verbalized Sampling method increased output diversity by 1.6 to 2.1 times compared to standard prompting, without compromising factual accuracy or model safety. The effectiveness of the method was also shown to be more pronounced in larger, more capable models.

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Graphite Ağı'nın yenilikçi yaklaşımı, dijital finansın kritik sorunlarını ele almakta önemli bir adım olarak yansıyor ve daha fazla kullanıcının geleneksel finans biçimlerinden merkeziyetsiz uygulamalar dünyasına geçiş yapmasıyla gelecekte kendini olumlu bir şekilde konumlandırıyor. Graphite Ağı, $@G'nin Zaman Çizelgesi Graphite Ağı'nın ilerlemesini ve kilometre taşlarını anlamak için zaman çizelgesindeki önemli olayları gözden geçirmek faydalıdır: 2021: Graphite Vakfı tarafından Graphite Ağı'nın kuruluşu, uyum ve kullanıcı güçlendirmeye odaklanan blok zinciri geliştirme alanında yeni bir bölümün başlangıcını işaret eder. Ana Gelişmeler: Lansmanının ardından, giriş noktası düğüm geliri, itibara dayalı modelin kurulması, entegre KYC doğrulaması ve EVM uyumluluğunun sağlanması, projede önemli ilerlemeleri temsil eder. Son Faaliyetler: Graphite Vakfı'nın sürekli gelişim ve bakım çabaları, ağ özelliklerini artırmaya ve ekosistemin büyümesini teşvik etmeye odaklanarak sürdürülebilirlik ve yenilik için uzun vadeli bir taahhüt göstermektedir. Ek Anahtar Noktalar Temel bileşenlerinin ötesinde, Graphite Ağı, kullanılabilirliğini artıran birkaç araç ve özellik içermektedir: Graphite Cüzdanı: Kullanıcıların Ethereum uyumlu zincirler üzerindeki çeşitli ağ özelliklerine ve uygulamalarına erişimini kolaylaştıran kullanıcı dostu bir Chrome uzantısıdır. Graphite Köprüsü: Bu araç, Graphite varlıklarının farklı ağlar arasında sorunsuz bir şekilde transfer edilmesini sağlar ve entegre ve birlikte çalışabilir bir ekosistem oluşturur. Graphite Explorer: Ekosistem içinde temel bir araç olarak hizmet veren bu özellik, kullanıcıların akıllı sözleşme kaynak kodunu görüntülemesine ve doğrulamasına, işlemleri takip etmesine ve diğer önemli bilgileri gerçek zamanlı olarak keşfetmesine olanak tanır. Graphite Testnet: Proje, geliştiricilere ana ağ dağıtımından önce stabilite ve ölçeklenebilirliği sağlama imkanı sunan sağlam bir test ortamı sağlar. Bu girişim, yalnızca geliştiricileri güçlendirmekle kalmaz, aynı zamanda tüm ağın güvenilirliğini artırır. Sonuç Graphite Ağı, yerel token'ı $@G ile birlikte, geleneksel finans ile en son blok zinciri teknolojisi arasında köprü kurma yolunda önemli bir adımı temsil etmektedir. Güvenlik, uyum ve merkeziyetsizlik odaklı bu yenilikçi platform, Web3 dönemine geçişte liderlik yapmaya hazırdır. Kullanıcı katılımı arttıkça ve daha fazla proje yeteneklerinden yararlandıkça, Graphite Ağı hızla gelişen dijital manzaraya kalıcı katkılarda bulunmaya hazırlanıyor. Sonuç olarak, Graphite Ağı, yenilikçi düşüncenin modern finans ve teknolojinin artan talepleriyle buluştuğunda nelerin başarılabileceğinin bir kanıtıdır. Dünya merkeziyetsiz finansın potansiyelini keşfederken, Graphite Ağı bu alanda dikkate değer bir oyuncu olmaya devam edecektir.

29 Toplam GörüntülenmeYayınlanma 2025.01.06Güncellenme 2025.01.06

@G Nedir

Tartışmalar

HTX Topluluğuna hoş geldiniz. Burada, en son platform gelişmeleri hakkında bilgi sahibi olabilir ve profesyonel piyasa görüşlerine erişebilirsiniz. Kullanıcıların G (G) fiyatı hakkındaki görüşleri aşağıda sunulmaktadır.

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