Forecasting
The impact of data aggregation and risk attributes on stress testing models of mortgage default
In this paper, the authors investigate how data aggregation and risk attributes affect the development and performance of stress testing models by studying residential mortgage loan defaults.
US election scenarios: meltdown fears if poll contested
Crowdsourced election scenarios show sharp falls and correlation breaks if Trump challenges results
Back to school: BlackRock uses quant quake lessons on Covid
Pandemic prompts a switch in approach from strategic to tactical
Dutch banks seek quantum edge for stress tests
ABN, ING and Rabobank working together; US quantum developer seeks patent for CCAR
Power surge: the value of investing in renewables
Energy market expert investigates ways to forecast future power prices and capture rates in order to value renewables PPAs
Podcast: Dario Villani on managing money with ML
Duality’s CEO discusses key to machine learning success, and the influence of Renaissance’s Jim Simons
Study suggests banks may be better off with simpler VAR models
Non-parametric VAR models perform well in calm markets, but miss the mark in volatile periods
IFRS 9 and the loan loss lottery
As reserves for bad loans balloon, banks grapple with measuring Covid-era credit risk
Sometimes it’s fine to be boring
Diversification puts portfolios in the middle of the pack – where investors feel safe, writes Antonia Lim
Volatility spillover along the supply chains: a network analysis on economic links
The analysis in this paper reveals that additional fundamental risk gets transferred along supply chains, and that suppliers are exposed to additional fundamental risk that is not captured by their market beta. Suppliers are therefore exposed to…
Range-based volatility forecasting: a multiplicative component conditional autoregressive range model
This paper proposes a multiplicative component CARR (MCCARR) model to capture the "long-memory" effect in volatility.
Old-fashioned parametric models are still the best: a comparison of value-at-risk approaches in several volatility states
The authors present backtesting results for 1% and 2.5% VaR of six indexes from emerging and developed countries using several of the best-known VaR models, including generalized autoregressive conditional heteroscedasticity (GARCH), extreme value theory…
Doyne Farmer’s next big adventure: capturing the universe
Quant fund pioneer plans to build an economic super-simulator on a global scale
In downturns, vol travels down the supply chain – study
Customer VAR breaches strike at stressed suppliers, research shows
R-nought is the wrong number for markets, academics say
New research suggests volatility of transmission matters more for asset prices
Q&A: Ron Dembo on crowd-spotting black swans
Veteran quant argues large groups are better at gauging extreme uncertainty than small teams of experts
What quants can learn from the Covid crisis
More nowcasting, less backtesting, and strategies that adapt to new regimes: a manifesto from Lipton and López de Prado
Measuring economic cycles in data
This paper determines if enough data is available for forecasting or stress testing, a better measure of data length is required.
CECL muddies stress tests for US banks
Accounting forecasts differ from Fed’s CCAR scenarios; banks seek middle way to avoid upfront capital hit
Treasurers turn to AI in bid for sharper forecasting
Wider automation could usher in future of ‘hands-free hedging’, but obstacles lurk in data standards and sharing
Credit impairment charge up 22% at StanChart
Higher provisions taken, even as number of stage three loans drops
CECL models may leave banks ill-prepared for next downturn
Mortgage backtest study shows some loan-loss models miss the mark
Ready or not – a low-carbon economy is coming
Government and business must avert disorderly move away from fossil fuels, says Geneva Association’s Maryam Golnaraghi
Quant funds look to AI to master correlations
Machine learning shows promise in grouping assets better, predicting regime shifts