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2606.14621 2026-06-15 econ.GN q-fin.EC 新提交

Evaluating the Impact of Rhode Island's Self-Sustaining Reemployment Services and Eligibility Assessment (RESEA) Program on Employment Outcomes

评估罗德岛自维持再就业服务与资格评估(RESEA)计划对就业结果的影响

Harrison H Li, Shanna Pearson-Merkowitz, David Yokum

AI总结 通过大规模随机对照试验,评估罗德岛RESEA计划对失业者工资、再就业和失业持续时间的影响,发现该计划显著提升工资和再就业率,减少失业时长,且对老年和低收入工人效果更显著。

Comments 39 pages, 7 figures

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AI中文摘要

长期失业会带来严重的经济、健康和福祉成本。在联邦支持下,美国大多数州现在都实施再就业服务与资格评估(RESEA)计划,以帮助失业保险(UI)申领人更快地重返工作岗位。我们报告了一项大规模(N = 23,549)预注册随机对照试验(RCT)的结果,评估了2022年2月至2023年9月期间罗德岛的RESEA计划。我们估计,被选入该计划使年化工资增加了1,153美元,再就业率提高了1.5个百分点,并减少了近两周的失业保险持续时间。这些工资和再就业效果的绝大多数出现在申领人首次发薪日后的两个季度内,并至少持续到次年,我们估计在该计划上每花费1美元,可为州政府节省2.64美元。使用因果森林(一种用于估计异质性处理效应(HTE)的机器学习技术),我们还进行了一项探索性分析,以调查被选入RESEA计划是否存在差异效应。我们发现,所有参与者都从RESEA选择中获得了积极的工资收益,其中老年和低收入工人的效果尤为显著。最后,我们通过明确控制治疗分配的周数,改进了先前的RESEA评估——这是现有几个职业培训项目RCT中缺失的方法论改进,对于消除混杂偏差至关重要。我们还讨论了如何通过基线协变量调整来提高精度,而不引入大样本偏差。

英文摘要

Prolonged unemployment carries serious economic, health, and wellbeing costs. With federal support, most U.S. states now operate a Reemployment Services and Eligibility Assessment (RESEA) program to help Unemployment Insurance (UI) claimants return to work faster. We report results from a large (N = 23,549) preregistered randomized controlled trial (RCT) evaluating Rhode Island's RESEA program from February 2022 to September 2023. We estimate that selection into the program increased annualized wages by \$1,153, increased reemployment by 1.5 percentage points, and reduced UI duration by nearly two weeks. The vast majority of these wage and reemployment effects appeared within two quarters of claimants' first pay dates and persisted through at least the following year, and we estimate that each dollar spent on the program saved the state \$2.64. Using causal forests, a machine learning technique for estimating heterogeneous treatment effects (HTE), we also conduct an exploratory analysis to investigate if there are differential effects of selection into the RESEA program. We find that all participants experienced positive wage benefits from RESEA selection, with particularly large effects for older and lower-income workers. Finally, we improve upon prior RESEA evaluations by explicitly controlling for the week of treatment assignment -- a methodological refinement absent from several existing RCTs of job-training programs that is important to eliminate confounding bias. We also discuss ways to harvest precision gains from baseline covariate adjustment without introducing large-sample bias.

2606.14484 2026-06-15 quant-ph q-fin.RM 新提交

Quantum Horizon: An evaluation of quantum computing as a threat to Bitcoin and Ethereum

量子地平线:量子计算对比特币和以太坊威胁的评估

Iosif M. Gershteyn, Jacob A. Alber

AI总结 评估量子计算对比特币和以太坊的威胁,指出Shor算法可破解签名但Grover算法对挖矿威胁有限,预测量子计算机出现概率,并分析迁移可行性。

Comments 21 pages, 5 figures, 3 tables. Reproducible model code, data, and figures: https://github.com/imgcode/quantum-horizon

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AI中文摘要

量子计算对比特币和以太坊构成真实、广泛但有限且可缓解的威胁。我们区分了公众讨论中常混淆的两种量子算法:Shor算法可破解授权花费的椭圆曲线签名(secp256k1上的ECDSA、BLS12-381上的BLS),而Grover算法对工作量证明挖矿不构成实质性威胁,因为后者受限于二次加速、容错每操作成本、平方根并行化壁垒和难度调整。结合硬件扩展、资源需求下降、容错准备滞后和专家调查,通过单一蒙特卡洛预测得出密码学相关量子计算机到达时间的宽双峰分布:到2035年约六分之一概率,到2040年接近30%,到2050年约60%。风险集中且大部分可迁移:比特币约600万量子暴露的币中仅约230万不可降低风险,而以太坊中50%至65%的以太位于密钥已暴露的账户,可采用后量子签名。及时迁移甚至能击败乐观的2035年机器,因此约束条件是治理而非技术。对前20大加密货币的调查发现,没有一种完全后量子化。所有定量声明均附有可复现模型。

英文摘要

Quantum computing poses a real, broad-based, but bounded and substantially mitigable threat to Bitcoin and Ethereum. We separate the two quantum algorithms that public discussion routinely conflates: Shor's algorithm breaks the elliptic-curve signatures (ECDSA over secp256k1, BLS over BLS12-381) that authorize spending, whereas Grover's algorithm does not meaningfully threaten proof-of-work mining, which is protected by a merely quadratic speedup, fault-tolerant per-operation costs, a square-root parallelization wall, and difficulty adjustment. Folding hardware scaling, the falling resource requirement, a fault-tolerance readiness lag, and expert surveys into a single Monte-Carlo forecast yields a wide, bimodal arrival distribution for a cryptographically relevant quantum computer: about a one-in-six chance by 2035, near 30% by 2040, and about 60% by 2050. Exposure is concentrated and mostly migratable: of Bitcoin's roughly six million quantum-exposed coins only about 2.3 million are irreducibly at risk, while 50 to 65% of Ether sits at key-revealed accounts that can adopt post-quantum signatures. A timely migration beats even an optimistic 2035 machine, so the binding constraint is governance, not technology. A survey of the top twenty cryptocurrencies finds none fully post-quantum. Reproducible models accompany every quantitative claim.

2606.14386 2026-06-15 cs.LG cs.AI q-fin.PM 新提交

Discovery under Hypothesis Redundancy: A Geometric Theory of Discovery Bottlenecks

假设冗余下的发现:发现瓶颈的几何理论

Li Xia, Baoxun Wang

发表机构 * School of Economics and Management, Tsinghua University(清华大学经济管理学院) Platform & Content Group, Tencent(腾讯平台与内容事业群)

AI总结 提出搜索压缩假说,通过谱压缩、正交逃逸和残差信号对齐三个几何条件解释混合发现系统的优势,实验表明仅新颖性不足,需预测对齐。

Comments 23 pages, 1 figure, 27 tables

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AI中文摘要

当新假设不再提供独立信息时,科学发现会饱和,即使名义假设空间仍然很大。我们研究了结合结构化局部搜索与LLM生成的非局部提议的混合发现系统,并提出了搜索压缩假说:非局部探索仅在三个几何条件同时出现时才有帮助:谱压缩、从已探索张成的子空间正交逃逸、以及残差信号与目标对齐。我们形式化了这些条件,推导了混合优势的必要条件,并在受控合成环境、大规模A股因子发现和符号回归基准中测试了该机制;一个公开的表格操作合理性检查测试了相关的预算分配含义。信号植入和定向与随机实验表明,仅新颖性是不够的:随机正交跳跃扩大了覆盖范围,但如果没有预测对齐,则不会提高产出。在压缩扫描、真实因子档案和LLM-SRBench任务中,混合优势集中在弱表示但目标承载的方向上,并随着假设空间接近满秩而消失。该框架将LLM引导的发现从通用新颖性搜索转变为诊断程序,用于判断何时需要进行定向非局部探索。

英文摘要

Scientific discovery saturates when new hypotheses cease to provide independent information, even if the nominal hypothesis space remains large. We study hybrid discovery systems that combine structured local search with LLM-generated non-local proposals and pose the Search Compression Hypothesis: non-local exploration helps only when three geometric conditions co-occur: spectral compression, orthogonal escape from the explored span, and residual signal alignment with the target. We formalize these conditions, derive necessary conditions for hybrid advantage, and test the mechanism in controlled synthetic environments, large-scale A-share factor discovery, and symbolic-regression benchmarks; a public tabular operational sanity check tests the associated budget-allocation implication. Signal-planting and directed-versus-random experiments show that novelty alone is insufficient: random orthogonal jumps expand coverage but do not improve yield without predictive alignment. Across compression sweeps, real factor archives, and LLM-SRBench tasks, hybrid gains concentrate in weakly represented but target-bearing directions and vanish as the hypothesis space approaches full rank. The framework turns LLM-guided discovery from generic novelty search into a diagnostic procedure for deciding when directed non-local exploration is warranted.

2606.14331 2026-06-15 physics.soc-ph cond-mat.stat-mech econ.GN q-fin.EC 新提交

Wealth Inequality and Planetary Boundaries in a Stylized Agent-Based Model

一个基于主体的风格化模型中的财富不平等与行星边界

Thomas Valade, Michael Benzaquen, Matthieu Cristelli, Stanislao Gualdi, Pierre Lenders

AI总结 通过构建异质主体模型,研究财富不平等如何阻碍绿色转型,发现超过一定阈值后经济锁定在棕色状态,并评估了不同财政政策的效果。

Comments 26 pages, 14 figures

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AI中文摘要

在财富不平等加剧和环境压力增强的交叉点上,我们研究了一个相对较少受到关注的逆向因果关系:财富不平等可能不仅是环境危机的后果,而且本身也是生态转型的结构性障碍。我们开发了一个风格化的基于主体的模型,其中初始财富服从帕累托分布的异质主体通过一个效用函数将其收入分配给棕色或绿色部门。该函数旨在捕捉短期回报与长期系统性风险暴露之间的权衡。一个核心要素是,较富裕的主体认为自己受环境冲击的影响较小,从而减少了可用于转型的资源。我们表明,在超过大多数发达国家观察到的与不平等阈值兼容的范围内,即使相当一部分主体对外部性敏感,经济仍然锁定在棕色体制中。然后,我们评估了一组风格化的财政政策(基本收入、碳税、绿色激励和组合方案),发现其有效性强烈依赖于不平等体制和财政机制中嵌入的累退性,揭示了转型速度、累积环境破坏、增长和财政压力之间的多维权衡。

英文摘要

At the intersection of rising wealth inequality and intensifying environmental pressures, we investigate a reverse causal relationship that has received comparatively little attention: wealth inequality may not only be a consequence of environmental crises, but also act as a structural obstacle to the ecological transition itself. We develop a stylized agent-based model in which heterogeneous agents, whose initial wealth follows a Pareto distribution, allocate their income between either a Brown or a Green sector through a utility function. The function is designed to capture the trade-off between short-term returns and exposure to long-term systemic risks. A central ingredient is that wealthier agents perceive themselves as less vulnerable to environmental shocks, thereby reducing the amount of resources available for the transition. We show that, beyond inequality thresholds compatible with those observed in most developed countries, the economy remains locked in a Brown regime, even when a substantial share of agents is sensitive to externalities. We then assess a set of stylized fiscal policies (basic income, carbon taxation, Green incentives, and a combined scheme) and find that their effectiveness depends strongly on the inequality regime and on the regressivity embedded in the fiscal mechanism, revealing multidimensional trade-offs between transition speed, cumulative environmental destruction, growth, and fiscal pressure.

2606.14182 2026-06-15 q-fin.TR math.AP q-fin.ST 新提交

Correlation emergence and the Epps effect in two coupled limit order books

两个耦合限价订单簿中的相关性涌现与Epps效应

Chris Angstmann, Tim Gebbie

AI总结 通过建立耦合反应扩散方程模型,从订单流微观动态出发,解析推导出相关性随聚合时间变化的闭合表达式,揭示Epps效应源于异步事件时钟、有限耦合响应时间及其组合三种机制。

Comments 13 pages, 4 appendices with calculation outlines

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AI中文摘要

我们给出了两个耦合限价订单簿中相关性涌现和Epps效应的统一解析描述。该模型从订单流的离散随机游走描述出发,包含创建、取消和扩散。在订单创建层面引入了簿之间的配对交易耦合。我们阐明了离散模型如何简化为具有定义交易价格的移动反应边界的耦合反应-扩散方程。利用耦合的正则化局部响应表示,我们推导了作为聚合时间函数的实现相关性的近似闭合形式表达式。这里,Epps效应被证明源于三种不同的机制:异步事件时钟(从属化)、有限耦合响应时间以及它们的组合。

英文摘要

We give a unified analytic account of correlation emergence and the Epps effect in two coupled limit order books. The model starts from a discrete random-walk description of order flow with creation, cancellation and diffusion. A pair-trader coupling between the books is introduced at the level of order creation. We clarify how the discrete model reduces to coupled reaction--diffusion equations with a moving reaction boundary defining the transaction price. Using a regularised local-response representation of the coupling, we derive approximate closed-form expressions for realised correlations as a function of aggregation time. Here the Epps effect is shown to arise from three distinct mechanisms: asynchronous event clocks (subordination), finite coupling response times, and their combination.

2606.14050 2026-06-15 math.OC cs.SY econ.GN eess.SY q-fin.EC q-fin.PM q-fin.RM 新提交

Battery Bidding under Price Uncertainty in Wholesale Electricity Markets

批发电力市场中价格不确定下的电池投标策略

Vincent Yinjun-Wang, Madeleine Udell

AI总结 针对批发电力市场中电池投标模式难以解释的问题,提出一个考虑价格不确定性和风险管理的资产级模型,通过线性规划重构实现实证分析,揭示策略性持留行为、不确定性对投标价格的影响以及风险管理对投标曲线结构的塑造作用。

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AI中文摘要

电网规模电池日益影响批发电力市场的结果,但其观察到的投标模式仍难以解释。特别是,看似反映策略性持留的投标可能源于价格不确定性和风险管理下的理性运营。我们开发了一个价格接受型电池的资产级模型,该电池在日前市场中根据有限的价格场景提交阶梯式买入和卖出投标曲线。电池选择数量-价格对,以在物理和市场约束下最大化均值-CVaR目标。直接公式化是一个混合整数线性规划,但我们证明其整数决策可以消除,从而得到一个适合实证分析的精确线性规划重构。我们的实证结果提供了三个见解。首先,即使没有市场势力,持留行为也可能出现,因为稀缺的存储能量和不确定的未来价格增加了持有能量的价值。其次,不确定性的影响取决于荷电状态:当存储能量稀缺时,更大的不确定性会提高卖出投标价格,而当存储能量充足时,则可能降低卖出投标价格。第三,风险管理将投标曲线重塑为分层结构,确保在广泛场景下盈利执行,同时保留对罕见但有价值的价格尖峰的部分暴露。

英文摘要

Grid-scale batteries increasingly influence outcomes in wholesale electricity markets, but their observed bid patterns remain difficult to interpret. In particular, bids that appear to reflect strategic withholding may instead arise from rational operations under price uncertainty and risk management. We develop an asset-level model of a price-taking battery that submits stepwise buy and sell bid curves in the day-ahead market under a finite set of price scenarios. The battery chooses quantity--price pairs to maximize a mean--CVaR objective subject to physical and market constraints. A direct formulation is a mixed-integer linear program, but we show that its integer decisions can be removed, yielding an exact linear programming reformulation suitable for empirical analysis. Our empirical results deliver three insights. First, withholding behavior can arise even without market power, because scarce stored energy and uncertain future prices increase the value of holding energy. Second, the effect of uncertainty depends on the state of charge: when stored energy is scarce, greater uncertainty raises sell bid prices, whereas when stored energy is abundant it can lower them. Third, risk management reshapes bid curves into layered structures that secure profitable execution across a broad set of scenarios while preserving some exposure to rare but valuable price spikes.

2606.13992 2026-06-15 q-fin.MF q-fin.PR 新提交

Group Quantization and Mellin Representations of the Heston Model

Heston模型的群量子化和Mellin表示

Santiago Garcia

AI总结 通过构造Heston随机波动率模型的提升局部李群胚,给出其仿射变换结构的几何解释,并恢复特征函数和Riccati方程。

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AI中文摘要

我们构造了Heston随机波动率模型的提升局部李群胚公式,并利用它给出其仿射变换结构的几何解释。该构造扩展了先前应用于二次金融扩散模型的群量子化框架。本文的目的不是提出新的Heston定价公式。贡献在于几何:坐标空间中的Heston定价算子和动量空间中的Riccati方程来自同一提升局部群胚构造的两个表示。恢复了通常的特征函数和Riccati公式。

英文摘要

We construct a lifted local Lie groupoid formulation of the Heston stochastic-volatility model and use it to give a geometric interpretation of its affine-transform structure. The construction extends the Group Quantization framework previoulsy applied to quadratic financial diffusion models. The purpose of this paper is not to propose a new Heston pricing formula. The contribution is geometric: the Heston pricing operator in coordinate space and the Riccati equations in momentum space arise from two representations of the same lifted local groupoid construction. The usual characteristic-function and Riccati formulas are recovered.

2606.13880 2026-06-15 cs.LG q-fin.RM 新提交

A Longitudinal Attribute-Conditioned Neural Network for Modeling Health-State Transition Probabilities in Temporally Irregular Data: The LANTERN Framework

一种纵向属性条件神经网络用于不规则时间数据中健康状态转移概率建模:LANTERN框架

Bright Kwaku Manu, Beckett Sterner, Petar Jevtic

发表机构 * School of Computing and Augmented Intelligence, Arizona State University(亚利桑那州立大学计算与增强智能学院) School of Life Sciences, Arizona State University(亚利桑那州立大学生命科学学院) School of Mathematical and Statistical Sciences, Arizona State University(亚利桑那州立大学数学与统计科学学院)

AI总结 提出LANTERN框架,利用条件神经网络从纵向健康数据中估计多状态转移概率,处理不规则时间间隔和协变量历史,在健康与退休研究数据上优于逻辑回归等基准模型。

Comments 35 pages, 17 figures

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AI中文摘要

长期护理转移概率的准确估计对于残疾保险定价、准备金和偿付能力评估至关重要。经典精算多状态模型通常依赖于马尔可夫、半马尔可夫或比例风险设定,这些模型直接与队列预测相关,但对于具有非线性老龄化模式和异质性协变量历史的不规则纵向健康数据可能具有限制性。本文开发了一种针对不规则纵向健康数据的多状态转移概率的良好校准估计器。该模型从个体健康史中学习,纳入观测之间的时间间隔,并根据人口统计学和社会经济属性条件化转移概率。它生成下一个观测健康状态的有效概率分布,包含四种可能状态:健康、轻度残疾、重度残疾和死亡。个体概率按年龄组和初始状态聚合,形成与精算队列预测兼容的转移矩阵。利用健康与退休研究的纵向数据,我们将所提出的估计器与逻辑回归、梯度提升树、循环神经网络和最后状态持久性基准进行比较。评估考虑了概率准确性、重度残疾和死亡的端点判别与校准、风险集中度以及聚合后的转移矩阵误差。所提出的估计器相对于逻辑回归和梯度提升树基准改善了重度残疾判别,保持强校准性,并在留出测试分析中在评估模型中产生最低的转移矩阵误差。结果表明,当通过校准和预测保真度(超越判别)进行评判时,结构化的机器学习估计器可以支持长期护理转移建模。

英文摘要

Accurate estimation of long-term care transition probabilities is central to disability insurance pricing, reserving, and solvency assessment. Classical actuarial multi-state models commonly rely on Markov, semi-Markov, or proportional-hazard specifications, which provide a direct connection to cohort projection but may be restrictive for irregular longitudinal health data with nonlinear aging patterns and heterogeneous covariate histories. This paper develops a well-calibrated estimator of multi-state transition probabilities for irregular longitudinal health data. The model learns from individual health history, incorporates the time elapsed between observations, and conditions transition probabilities on demographic and socioeconomic attributes. It produces a valid probability distribution over the next observed health state, with four possible states: healthy, mild disability, severe disability, and death. Individual probabilities are aggregated by age group and origin state to form transition matrices compatible with actuarial cohort projection. Using longitudinal data from the Health and Retirement Study, we compare the proposed estimator with logistic regression, gradient-boosted trees, a recurrent neural network, and a last-state persistence benchmark. The evaluation considers probabilistic accuracy, endpoint discrimination and calibration for severe disability and death, risk concentration, and transition matrix error after aggregation. The proposed estimator improves severe disability discrimination relative to logistic regression and gradient-boosted tree benchmarks, maintains strong calibration, and yields the lowest transition matrix error among the evaluated models in the held-out test analysis. Results show that a structured machine learning estimator can support long-term care transition modeling when judged by calibration and projection fidelity, beyond discrimination.

2606.13812 2026-06-15 q-fin.CP q-fin.GN 新提交

CFOs Meet LLMs

CFO 与 LLM 相遇

John R. Graham, Campbell R. Harvey, Manish Jha

AI总结 本研究利用大语言模型扮演特定公司CFO,基于杜克-美联储CFO调查数据预测经济乐观情绪,发现LLM能有效复现个体人类反应,为金融研究和政策提供可扩展的高频预期数据。

Comments 21 pages, 4 tables, 1 figure

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AI中文摘要

商业情绪是一个备受关注的经济信号,但测量它既缓慢又昂贵:调查仅覆盖数百家公司,定期进行,且需要时间汇编。我们表明,大语言模型有潜力解决这些缺陷。我们提示LLM扮演特定公司在特定日期的CFO,并关注2002-2025年杜克-美联储CFO调查中的经济乐观问题。我们发现LLM再现了个体人类反应:预测的乐观分数显著预测了CFO的实际答案,且在公司与年-季度固定效应以及控制最近一次先前反应后依然成立。预测准确性随着提供的信息量增加而提高,因为受访者历史和企业特征都改善了拟合,且这种关系在季度汇总下仍然存在。通过适当的条件设置,LLM可能能够充当可信的高管数字孪生,为金融研究和政策提供可扩展的高频预期数据。

英文摘要

Business sentiment is a closely watched economic signal, but measuring it is slow and costly: surveys reach only a few hundred firms, arrive periodically, and take time to compile. We show that large language models hold the potential to address these shortcomings. We prompt an LLM to role-play as the CFO of a specific company at a specific date and focus on the economic-optimism question on the Duke-Federal Reserve CFO Survey over 2002-2025. We find that the LLM reproduces individual human responses: the predicted optimism score significantly forecasts the CFO's actual answer, surviving firm and year-quarter fixed effects and a control for the most recent prior response. Predictive accuracy increases with the amount of information supplied, as both respondent history and firm characteristics improve fit, and the relationship persists under quarterly aggregation. With appropriate conditioning, LLMs may be able to serve as credible digital twins of executives, offering scalable, high-frequency expectations data for financial research and policy.

2606.13752 2026-06-15 econ.GN q-fin.EC 新提交

What is the public's social welfare function?

什么是公众的社会福利函数?

Richard Layard, Ekaterina Oparina

AI总结 通过英国代表性样本调查,估计公众基于生活满意度的社会福利函数,发现显著厌恶福祉不平等,中位等弹性参数α=0.48,为福祉政策评估提供伦理分配权重。

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AI中文摘要

最优公共政策需要定义在个体效用上的社会福利函数。尽管有大量基于收入的社会福利函数研究,但尚无已发表研究直接通过主观幸福感测量来获取公众对效用的偏好。使用新颖的调查工具,对英国代表性样本(N=2,068)进行调研,我们估计了公众关于生活满意度的社会福利函数。我们发现显著厌恶福祉不平等,中位等弹性参数α=0.48。这意味着社会福利函数近似等于个体效用平方根之和。中位受访者认为将最不满意者的福祉提高一个单位,其价值大约是将最满意者提高一个单位的两倍。我们的发现为福祉政策评估和成本效益分析提供了有伦理基础的分配权重。

英文摘要

Optimal public policy requires a social welfare function defined over individual utilities. While there is substantial research on income-based social welfare functions, no published study has directly elicited public preferences over utility when measured by subjective wellbeing. Using a novel survey instrument with a representative UK sample (N=2,068), we estimate the public's social welfare function for life satisfaction. We find significant aversion to wellbeing inequality, with a median isoelastic parameter $α$=0.48. This implies a social welfare function approximately equal to the sum of square roots of individual utilities. The median respondent values improving the wellbeing of the least satisfied by one unit roughly twice as much as improving the most satisfied by one unit. Our findings provide ethically grounded distributional weights for wellbeing policy evaluation and cost-benefit analysis.

2606.13697 2026-06-15 q-fin.PM stat.ME 新提交

On Reference-Regulated Multiperiod Mean-Variance Portfolio Optimization in High Dimensions

关于高维情形下参考调控的多期均值-方差投资组合优化

Yutao Deng, Jianjun Gao, Weichen Wang

AI总结 提出参考调控多期均值-方差框架,通过惩罚偏离参考策略,结合动态策略与参考组合优势,在高维渐近下刻画样本外夏普比率,显著提升多期策略稳定性与表现。

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AI中文摘要

多期均值-方差(MV)投资组合优化是Markowitz静态MV投资组合选择框架的重要扩展。与其静态对应物一样,多期MV投资组合仍然容易受到估计误差的影响。我们提出一个参考调控的多期均值-方差(RRMV)框架,该框架惩罚偏离参考策略的行为。因此,这种新的优化成功结合了动态策略和参考投资组合的优势。本文的一个关键贡献是在高维渐近下,考虑均值向量和协方差矩阵的估计误差,刻画了样本外夏普比率。我们展示了参考惩罚和投资期限如何共同影响优化投资组合的表现,以及正则化与单期投资组合优化的不同作用。大量的模拟和真实数据研究表明,所提出的框架显著提高了多期策略的稳定性和样本外夏普比率。

英文摘要

The multiperiod mean-variance (MV) portfolio optimization serves as a vital expansion of Markowitz's static MV portfolio selection framework. Just like its static counterpart, the multiperiod MV portfolio remains susceptible to estimation errors. We propose a reference-regulated multiperiod mean-variance (RRMV) framework that penalizes deviations from a reference policy. Therefore, this new optimization successfully combines the advantages of dynamic strategies and reference portfolios. A key contribution of this paper is the characterization of the out-of-sample Sharpe ratio under high-dimensional asymptotics with estimation errors in both the mean vector and the covariance matrix. We show how the reference penalty and the investment horizon jointly affect the optimized portfolio performance, and how regularization operates differently from the single-period portfolio optimization. Extensive simulation and real data studies demonstrate that the proposed framework improves the stability and out-of-sample Sharpe ratios of multiperiod policies significantly.

2605.18784 2026-06-15 q-fin.RM cs.AI cs.CR cs.CY econ.GN q-fin.EC 版本更新

The Insurability Frontier of AI Risk: Mapping Threats to Affirmative Coverage, Silent Exposures, and Exclusions

AI风险的可保险边界:将威胁映射到积极保险、沉默暴露和排除

Alex Leung, Rex Zhang, Ervin Ling, Kentaroh Toyoda, SiewMei Loh

AI总结 本文研究了AI风险在商业保险中的可保险性边界,通过分析55类AI威胁与26种保险产品和排除制度,揭示了四个层次的可保险性前沿:积极保险的风险、沉默AI暴露、主动排除的风险以及传统私人保险结构之外的风险。

Comments Version 2

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AI中文摘要

代理AI的快速扩散为商业保险创造了一个新的覆盖问题:一些AI中介的损失现在被积极保险,一些在传统网络安全、技术错误与遗漏(E&O)、董事与高管(D&O)、雇佣实践责任(EPLI)、犯罪和媒体政策下产生沉默AI暴露,而其他则被积极排除。本文通过编码55类AI威胁与26种保险产品、保证和排除制度,利用公开承运商材料和OWASP/MITRE威胁目录,确定了四个层次的可保险性前沿:积极保险的风险、沉默AI暴露、主动排除的风险以及传统私人保险结构之外的风险。我们的编码测量公开声明的定位,而非执行合同的措辞;头条统计数据描述承运商公开声明的覆盖情况,而非任何具体索赔将支付什么。三个模式显现。首先,积极AI覆盖开始通过主要风险重点进行区分:公开材料通常将慕尼黑再保险定位在模型性能和漂移,Armilla和 Lloyd's 市场部分围绕幻觉和更广泛的AI责任,Tokio Marine Kiln和CFC围绕知识产权和技术E&O关注,Apollo ibott围绕新兴自主系统责任,Coalition围绕深度伪造和AI增强的网络安全响应。其次,传统业务线在AI作为工具而非损失法律原因的情况下保留沉默AI暴露。第三,基础模型集中是清晰的真正新型可保险性前沿,因为上游模型失败可以一次关联多个被保险人损失;相关市场设计问题是每个候选结构放松了哪些可保险性约束,而不是仅仅存在哪种系统性风险模板。

英文摘要

The rapid diffusion of agentic AI has created a new coverage problem for commercial insurance: some AI-mediated losses are now affirmatively insured, some create silent-AI exposure under legacy cyber, technology errors-and-omissions (E&O), directors-and-officers (D&O), employment practices liability (EPLI), crime, and media policies, and others are being actively excluded. This paper maps that emerging boundary by coding 55 AI threat classes against 26 insurance products, endorsements, and exclusion regimes using public carrier materials and OWASP/MITRE threat catalogs. We identify a four-tier insurability frontier: affirmatively insured perils, silent-AI exposures, actively excluded perils, and perils outside conventional private insurance structures. Our coding measures publicly claimed positioning rather than executed contract wording; the headline statistics describe what carriers publicly state about coverage, not what would be paid in any specific claim. Three patterns emerge. First, affirmative AI coverage is beginning to differentiate by primary risk emphasis: public materials often position Munich Re around model performance and drift, Armilla and parts of the Lloyd's market around hallucination and broader AI liability, Tokio Marine Kiln and CFC around IP and technology E&O concerns, Apollo ibott around emerging autonomous system liability, and Coalition around deepfake and AI-enabled cyber response. Second, legacy lines retain silent-AI exposure where AI is an instrumentality rather than the legal cause of loss. Third, foundation model concentration is the clearest genuinely novel insurability frontier because upstream model failure can correlate losses across many cedents at once; the relevant market design question is which insurability constraint each candidate structure relaxes, not merely which systemic risk template exists.

2605.10060 2026-06-15 econ.GN q-fin.EC 版本更新

Skill Premia and Pre-Marital Investments in Marriage Markets

技能溢价与婚前投资在婚姻市场中的作用

Aditya Kuvalekar

AI总结 研究探讨了存在搜寻摩擦的去中心化婚姻市场中,性别间技能投资差异的形成机制及劳动市场工资上涨对均衡的影响。

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AI中文摘要

本文研究了一个存在搜寻摩擦的去中心化婚姻市场,其中包含 costly pre-marital skill investments 和 non-transferable utility。尽管环境对称,市场可能表现出不对称均衡,其中一性别的技能投资多于另一性别;在某些环境中,不对称均衡是唯一的。一个基于家庭效用最大化的微观模型显示,从唯一对称均衡到唯一不对称均衡的转变可以由高技能劳动力市场工资上涨驱动:随着技能溢价上升,一性别最终完全投资,而另一性别则投资明显较少。

英文摘要

I study a decentralized marriage market with search frictions, costly pre-marital skill investments, and non-transferable utility. Despite a fully symmetric environment, asymmetric equilibria -- in which one gender systematically invests more in skills than the other -- can arise. The match payoffs are microfounded through a non-cooperative household game in which spouses allocate time between labor-market work and domestic production. An asymmetric equilibrium becomes available precisely as the high-skill wage rises. Further, the symmetric equilibria can be fragile while the asymmetric ones are not. Thus, rising skill premia may amplify rather than narrow gender gaps in skill acquisition.

2601.14852 2026-06-15 q-fin.GN 版本更新

Recovering Risk-Neutral Moments from Options

从期权中恢复状态价格

Tjeerd De Vries

AI总结 提出一种基于投影的估计器,利用期权组合逼近整个状态空间的目标收益,从而恢复联合风险中性分布,并应用于瑞士央行意外公告分析,发现相关性而非边际波动解释了联合崩盘风险变化的三分之二。

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AI中文摘要

自Ross (1976)以来,从期权价格中提取联合风险中性分布一直是一个未解决的问题。我们提出一种基于投影的估计器,利用观察到的期权组合逼近整个状态空间的目标收益。该方法即使在市场不完备时也能估计相关性和联合崩盘概率,相对于Carr和Madan (2001)改进了单变量估计,并给出了一个可解释为市场不完备度量的显式有限样本界。将该方法应用于瑞士央行关于欧元/瑞郎下限的两次意外公告,我们发现相关性而非边际波动解释了联合崩盘风险变化的三分之二。针对一种汇率的政策重塑了更广泛的瑞郎货币市场。

英文摘要

Extracting risk-neutral dependence from option prices has remained an open problem since Ross (1976). We propose a projection estimator that uses portfolios of observed options to approximate payoffs depending on multiple assets. The method delivers estimates of risk-neutral dependence in incomplete markets, improves univariate estimates, and yields a finite-sample error bound. Applying the method to two unexpected Swiss National Bank announcements about the EUR/CHF floor, we find that dependence accounts for two-thirds of the change in the probability that EUR/CHF and USD/CHF both fall sharply. A policy targeting EUR/CHF thus reshaped dependence in the CHF market.

2512.23847 2026-06-15 q-fin.GN cs.LG q-fin.TR 版本更新

Detecting Lookahead Bias in LLM Forecasts

检测LLM预测中的前瞻偏差

Zhenyu Gao, Wenxi Jiang, Yutong Yan

发表机构 * Department of Finance, CUHK Business School(CUHK商学院金融系)

AI总结 提出统计程序检测大语言模型经济预测中的前瞻偏差,通过日期回忆查询估计前瞻倾向(LAP),并验证LAP与预测交互项在精度回归中的显著性,应用于新闻标题和财报电话会议预测任务。

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AI中文摘要

我们开发了一种统计程序,用于检测大语言模型(LLM)生成的经济预测中的前瞻偏差。通过对公司-日期对进行仅日期回忆查询,我们估计LLM已内化已实现结果信息的概率,这一统计量称为前瞻倾向(LAP)。LAP在整个样本期内显著为正,并在训练数据截止点后几乎降至零。我们表明,在精度回归中,LAP与LLM预测之间的正向交互表明存在前瞻偏差污染,并将该测试应用于两个预测任务:预测股票收益的新闻标题和预测资本支出的财报电话会议记录。在两个应用中,LLM预测的预测能力在高LAP的公司-日期对上被放大,而交互项在训练截止后的样本上失去显著性。我们的测试为评估LLM生成预测的有效性和可靠性提供了一种经济高效的诊断工具。

英文摘要

We develop a statistical procedure to detect lookahead bias in economic forecasts generated by large language models (LLMs). Using a date-only recall query for a firm-date pair, we estimate the probability that the LLM has internalized information about the realized outcome, a statistic we term Lookahead Propensity (LAP). LAP is materially positive throughout the in-sample period and collapses essentially to zero right after the training-data cutoff. We show that a positive interaction between LAP and the LLM forecast in an accuracy regression indicates lookahead-bias contamination, and apply the test to two forecasting tasks: news headlines predicting stock returns and earnings call transcripts predicting capital expenditures. In both applications, the LLM forecast's predictive power is amplified on high-LAP firm-date pairs, and the interaction loses significance on post-training-cutoff samples. Our test provides a cost-efficient, diagnostic tool for assessing the validity and reliability of LLM-generated forecasts.

2512.14967 2026-06-15 cs.LG q-fin.CP q-fin.MF 版本更新

Deep Learning and Elicitability for McKean-Vlasov FBSDEs With Common Noise

带共同噪声的McKean-Vlasov正倒向随机微分方程的深度学习与可引性

Felipe J. P. Antunes, Yuri F. Saporito, Sebastian Jaimungal

发表机构 * School of Applied Mathematics, Getulio Vargas Foundation(应用数学学院,古特雷斯基金会) Department of Statistical Sciences, University of Toronto(统计科学系,多伦多大学) Oxford-Man Institute for Quantitative Finance, University of Oxford(牛津-曼定量金融研究所,牛津大学)

AI总结 提出结合Picard迭代、可引性和深度学习的方法,求解带共同噪声的McKean-Vlasov正倒向随机微分方程,通过可引性导出路径损失函数避免嵌套蒙特卡洛,在系统风险模型和经济增长模型中验证了准确性。

Comments 19 pages, 8 figures,

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AI中文摘要

我们提出了一种新颖的数值方法,用于求解带共同噪声的McKean-Vlasov正倒向随机微分方程(MV-FBSDEs),该方法结合了Picard迭代、可引性和深度学习。关键创新在于利用可引性导出路径损失函数,从而能够高效训练神经网络来近似倒向过程和由共同噪声引起的条件期望,无需计算昂贵的嵌套蒙特卡洛模拟。平均场相互作用项通过循环神经网络参数化,该网络被训练以最小化可引分数,而倒向过程则通过表示解耦场的混合前馈和循环网络来近似。我们在一个存在解析解的系统性风险银行间借贷模型上验证了该算法,结果表明能够准确恢复真实解。我们进一步将模型扩展到分位数中介的相互作用,展示了可引性框架在条件均值或矩之外的灵活性。最后,我们将该方法应用于一个具有内生利率的非平稳Aiyagari-Bewley-Huggett经济增长模型,展示了其在没有闭式解的复杂平均场博弈中的适用性。

英文摘要

We present a novel numerical method for solving McKean--Vlasov forward--backward stochastic differential equations (MV--FBSDEs) with common noise, combining Picard iterations, elicitability and deep learning. The key innovation involves elicitability to derive a pathwise loss function, enabling efficient training of neural networks to approximate both the backward process and the conditional expectations arising from common noise, without requiring computationally expensive nested Monte Carlo simulations. The mean-field interaction term is parameterized via a recurrent neural network trained to minimize an elicitable score, while the backward process is approximated through a hybrid feedforward and recurrent network representing the decoupling field. We validate the algorithm on a systemic-risk inter-bank borrowing and lending model, where analytical solutions exist, demonstrating accurate recovery of the true solution. We further extend the model to quantile-mediated interactions, showcasing the flexibility of the elicitability framework beyond conditional means or moments. Finally, we apply the method to a non-stationary Aiyagari--Bewley--Huggett economic growth model with endogenous interest rates, illustrating its applicability to complex mean-field games without closed-form solutions.

2512.21973 2026-06-15 econ.GN math.OC q-fin.EC q-fin.RM

When Indemnity Insurance Fails: Parametric Coverage under Binding Budget and Risk Constraints

Benjamin Avanzi, Debbie Kusch Falden, Mogens Steffensen

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英文摘要

In high-risk environments, traditional indemnity insurance is often unaffordable or ineffective, despite its well-known optimality under expected utility. We compare excess-of-loss indemnity insurance with parametric insurance within a common mean-variance framework, allowing for fixed costs, heterogeneous premium loadings, and binding budget constraints. Motivated by the disaster insurance and risk-sharing literature, we show that, once these realistic frictions are introduced, parametric insurance can yield higher welfare for risk-averse individuals, even under the same utility objective and without relying on behavioral assumptions. The welfare advantage arises precisely when indemnity insurance becomes impractical (particularly when households face binding premium budgets), and disappears once both contracts are unconstrained. Our results help reconcile classical insurance theory with the growing use of parametric risk transfer in high-risk settings, and rationalize the interest in hybrid designs that combine both indemnity and parametric elements.