MIT News - Artificial intelligence 09月23日 03:49
AI赋能数学研究:MIT学者获AI for Math资助
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麻省理工学院数学系的David Roe和Andrew Sutherland等学者,凭借其在人工智能与数学交叉领域的研究,荣获首批Renaissance Philanthropy和XTX Markets的AI for Math资助。此次资助旨在推动人工智能在数学发现和研究中的应用。Roe和Sutherland的项目将重点加强自动化定理证明,通过连接L-Functions and Modular Forms Database (LMFDB)与Lean4数学库(mathlib),降低形式化工具的使用门槛。该项目旨在将LMFDB中的数学结果引入mathlib,并提供LMFDB中数值数据的精确形式化定义,从而为人类数学家和AI代理提供一个强大的框架,加速数学发现和证明的自动化进程,克服现有数学知识形式化不足、成本高昂等挑战。

🚀 **AI for Math资助赋能数学研究**:麻省理工学院的David Roe和Andrew Sutherland等研究人员获得了首批AI for Math资助,旨在利用人工智能推动数学发现和研究。这项资助认可了AI在数学领域的潜力,并支持了多项旨在将AI技术应用于解决复杂数学问题的项目。

🔗 **连接数据库与形式化证明系统**:Roe和Sutherland的项目重点在于增强自动化定理证明能力,他们计划通过建立L-Functions and Modular Forms Database (LMFDB)与Lean4数学库(mathlib)之间的联系。这意味着将LMFDB中已有的海量数学结果引入mathlib,并提供LMFDB中数值数据的精确形式化定义,从而为数学家和AI提供一个更强大的研究工具。

💡 **降低形式化门槛,加速数学发现**:该项目旨在克服当前数学研究中面临的挑战,例如形式化数学知识有限、成本高昂以及计算可及性与形式化可行性之间的差距。通过使大量未形式化的数论事实可用于形式证明系统,研究人员可以更高效地识别定理形式化的目标,从而加速新定理的发现和证明过程。

💰 **利用现有计算资源,节省成本**:通过整合LMFDB等现有数学数据库,研究人员可以充分利用已投入的大量计算资源,避免重复计算,从而节省资金。预先计算好的信息也使得在不预知搜索范围的情况下,搜索示例或反例成为可能,提高了研究效率。

MIT Department of Mathematics researchers David Roe ’06 and Andrew Sutherland ’90, PhD ’07 are among the inaugural recipients of the Renaissance Philanthropy and XTX Markets’ AI for Math grants

Four additional MIT alumni — Anshula Gandhi ’19, Viktor Kunčak SM ’01, PhD ’07; Gireeja Ranade ’07; and Damiano Testa PhD ’05 — were also honored for separate projects.

The first 29 winning projects will support mathematicians and researchers at universities and organizations working to develop artificial intelligence systems that help advance mathematical discovery and research across several key tasks.

Roe and Sutherland, along with Chris Birkbeck of the University of East Anglia, will use their grant to boost automated theorem proving by building connections between the L-Functions and Modular Forms Database (LMFDB) and the Lean4 mathematics library (mathlib).

“Automated theorem provers are quite technically involved, but their development is under-resourced,” says Sutherland. With AI technologies such as large language models (LLMs), the barrier to entry for these formal tools is dropping rapidly, making formal verification frameworks accessible to working mathematicians. 

Mathlib is a large, community-driven mathematical library for the Lean theorem prover, a formal system that verifies the correctness of every step in a proof. Mathlib currently contains on the order of 105 mathematical results (such as lemmas, propositions, and theorems). The LMFDB, a massive, collaborative online resource that serves as a kind of “encyclopedia” of modern number theory, contains more than 109 concrete statements. Sutherland and Roe are managing editors of the LMFDB.

Roe and Sutherland’s grant will be used for a project that aims to augment both systems, making the LMFDB’s results available within mathlib as assertions that have not yet been formally proved, and providing precise formal definitions of the numerical data stored within the LMFDB. This bridge will benefit both human mathematicians and AI agents, and provide a framework for connecting other mathematical databases to formal theorem-proving systems.

The main obstacles to automating mathematical discovery and proof are the limited amount of formalized math knowledge, the high cost of formalizing complex results, and the gap between what is computationally accessible and what is feasible to formalize.

To address these obstacles, the researchers will use the funding to build tools for accessing the LMFDB from mathlib, making a large database of unformalized mathematical knowledge accessible to a formal proof system. This approach enables proof assistants to identify specific targets for formalization without the need to formalize the entire LMFDB corpus in advance.

“Making a large database of unformalized number-theoretic facts available within mathlib will provide a powerful technique for mathematical discovery, because the set of facts an agent might wish to consider while searching for a theorem or proof is exponentially larger than the set of facts that eventually need to be formalized in actually proving the theorem,” says Roe.

The researchers note that proving new theorems at the frontier of mathematical knowledge often involves steps that rely on a nontrivial computation. For example, Andrew Wiles’ proof of Fermat’s Last Theorem uses what is known as the “3-5 trick” at a crucial point in the proof.

“This trick depends on the fact that the modular curve X_0(15) has only finitely many rational points, and none of those rational points correspond to a semi-stable elliptic curve,” according to Sutherland. “This fact was known well before Wiles’ work, and is easy to verify using computational tools available in modern computer algebra systems, but it is not something one can realistically prove using pencil and paper, nor is it necessarily easy to formalize.”

While formal theorem provers are being connected to computer algebra systems for more efficient verification, tapping into computational outputs in existing mathematical databases offers several other benefits.

Using stored results leverages the thousands of CPU-years of computation time already spent in creating the LMFDB, saving money that would be needed to redo these computations. Having precomputed information available also makes it feasible to search for examples or counterexamples without knowing ahead of time how broad the search can be. In addition, mathematical databases are curated repositories, not simply a random collection of facts. 

“The fact that number theorists emphasized the role of the conductor in databases of elliptic curves has already proved to be crucial to one notable mathematical discovery made using machine learning tools: murmurations,” says Sutherland.

“Our next steps are to build a team, engage with both the LMFDB and mathlib communities, start to formalize the definitions that underpin the elliptic curve, number field, and modular form sections of the LMFDB, and make it possible to run LMFDB searches from within mathlib,” says Roe. “If you are an MIT student interested in getting involved, feel free to reach out!” 

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AI for Math 麻省理工学院 数学研究 人工智能 自动化定理证明 LMFDB mathlib MIT Mathematics Research Artificial Intelligence Automated Theorem Proving
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