How a machine learning model closed a hidden FX arbitrage gap
MUFG Securities quant uses variational inference to control the mid volatility of options
In 2022, Yoshihiro Tawada, head of FX-flow quant modelling at MUFG Securities EMEA, noticed an anomaly in the market for Turkish lira/yen options. During periods of market turbulence, the mid volatility of options – which theoretically should lie between the bid and ask levels – breached those boundaries, contradicting the assumptions behind models used to price exotics and leaving them wide open to arbitrage strategies.
The breaches are the result of a peculiar convention in the FX options market, whereby prices are quotes in terms of the volatilities for given deltas and expiry dates. Pricing screens typically display the volatilities for at-the-money (ATM) options, risk reversals and butterfly structures. These values must be converted to obtain the implied volatilities for the bid and ask levels from which strike rates are derived. When the markets move violently, that process can produce anomalous results and the order of strike may even reverse in extreme circumstances.
“Since the mid volatility is just a mid-point of bid and ask volatilities, even though bid or ask quotes themselves are arbitrage free and give correct order-of-strike rates, there is no guarantee that the mid volatilities do so,” says Tawada.
“Under market turmoil, typically the volatility becomes high and the bid and ask spread becomes larger as well. As a result, the mid volatilities become more likely to cause arbitrage,” he explains. “When the mid ATM volatility is very high it can even happen that the strike rate of premium-adjusted delta-neutral ATM becomes lower than the strike rate of a put at -0.25 delta.”
Standard modelling usually starts from the premise that the data is consistent, but here the objective is to iron out those outlying data points and build a better-shaped volatility surface
A senior quant analyst at a large European bank
And this effect is not unique to lira/yen options. “As this is a matter of volatility level and smile shape, theoretically it can happen to any currency pairs,” says Tawada.
Arbitrageable mid volatilities can be a huge problem when pricing exotic instruments such as butterflies, which are composed of out-of-the money puts and calls. If the strike order is not consistent, some components of a butterfly would contradict the assumptions behind the structure, causing pricing models to malfunction.
“In general, evaluation models are based on risk-neutral pricing where no arbitrage and no transaction cost in hedging are assumed,” says Tawada. “It is necessary to feed one set of arbitrage-free market data into the model. Therefore, if one calibrates the model with volatilities that cause arbitrage, the model parameters would not be appropriately calibrated, and the model would not be able to reproduce the input market data.”
Tawada tackled this problem using variational inference, a machine learning technique for approximating probability distributions of latent variables. In this case, the latent variable – the mid volatility – is approximated from the observable bid and ask values by an optimisation process. The approach minimises the difference between the expected normal distribution of implied volatilities and the distribution that satisfies the no-arbitrage condition. As a result, the mid volatility derived from the bid and ask volatilities stays within the theoretical boundaries, ensuring that the implied volatility surface is arbitrage free.
While the mathematical and probabilistic proof of the validity of Tawada’s solution is complex, its application is relatively straightforward. “The algorithm itself is not complicated, because other than the arbitrage-free and strike-order consistency conditions, it results in just the minimisation of some quadratic functions,” says Tawada.
Front-office quants that have reviewed the paper agree. “It’s a sensible solution to a practical problem traders have to deal with when they see inconsistent data coming from the market,” says a senior quant analyst at a large European bank. “Standard modelling usually starts from the premise that the data is consistent, but here the objective is to iron out those outlying data points and build a better-shaped volatility surface.”
Tawada’s solution can also potentially be deployed in other areas beyond FX options trading where volatility spikes can challenge the no-arbitrage condition. To measure vega risk, for example, traders normally ‘bump’ volatilities and observe the resulting numerical difference. Bumped volatilities could in theory run into an arbitrage problem. “One way to mitigate this is to allow for the bumps in the conditions of arbitrage-free and strike-order consistency, and then run the algorithm,” says Tawada.
Another application could be smoothing the shocked market data of stressed scenarios. When using historical data to generate extreme scenarios, arbitrage and strike-order conditions can be violated, but that risk could be reduced by using the algorithm to control the boundaries of the stressed market.
コンテンツを印刷またはコピーできるのは、有料の購読契約を結んでいるユーザー、または法人購読契約の一員であるユーザーのみです。
これらのオプションやその他の購読特典を利用するには、info@risk.net にお問い合わせいただくか、こちらの購読オプションをご覧ください: http://subscriptions.risk.net/subscribe
現在、このコンテンツを印刷することはできません。詳しくはinfo@risk.netまでお問い合わせください。
現在、このコンテンツをコピーすることはできません。詳しくはinfo@risk.netまでお問い合わせください。
Copyright インフォプロ・デジタル・リミテッド.無断複写・転載を禁じます。
当社の利用規約、https://www.infopro-digital.com/terms-and-conditions/subscriptions/(ポイント2.4)に記載されているように、印刷は1部のみです。
追加の権利を購入したい場合は、info@risk.netまで電子メールでご連絡ください。
Copyright インフォプロ・デジタル・リミテッド.無断複写・転載を禁じます。
このコンテンツは、当社の記事ツールを使用して共有することができます。当社の利用規約、https://www.infopro-digital.com/terms-and-conditions/subscriptions/(第2.4項)に概説されているように、認定ユーザーは、個人的な使用のために資料のコピーを1部のみ作成することができます。また、2.5項の制限にも従わなければなりません。
追加権利の購入をご希望の場合は、info@risk.netまで電子メールでご連絡ください。
詳細はこちら ビュー
ブラックロックが、ピエール・サロー氏を最高リスク責任者に任命
現CROのエドワード・フィッシュウィック氏は、ブラックロックのRQAグループにおいて研究部門の責任者を務めることとなります。
2026年クオンツ修士課程ガイド:プリンストン大学とバルーク校が二強体制を確立
コロンビア大学が3位に躍進、チューリッヒ工科大学が欧州のライバル校をリードしております。
クアンキャスト・マスターズ・シリーズ:ウォルター・ファルカス、チューリッヒ大学(ETH)
スイスの計画、大規模な共同教員陣、そして公開プレゼンテーションがプログラムを形作っています。
Quantcast Master’s Series: Jack Jacquier, Imperial College London
A shift towards market micro-structure and ML has reshaped the programme
クオンツキャスト・マスターズ・シリーズ:ナム・キフン(モナシュ大学)
メルボルン拠点のプログラムが年金基金業界に目を向ける
クオンツキャスト・マスターズ・シリーズ:ペッター・コルム(クーラント研究所)
ニューヨーク大学のプログラムは、ほぼ専ら金融業界のエリート実務家の方々によって指導されております。
クオンツになりたい?採用される方法(そして採用されない方法)をご紹介しましょう
好奇心を保て、チームプレーを心がけ、適切な言葉遣いにも気を付けましょう。そして、驕らないようにしましょう。
クオンツキャスト・マスターズ・シリーズ:ローラ・バロッタ(ベイズ・ビジネススクール)
ビジネススクールでは、実践的な知識の教授を最優先とし、現実社会を鋭い視点で捉えています。