Automated trading system explained

An automated trading system (ATS), a subset of algorithmic trading, uses a computer program to create buy and sell orders and automatically submits the orders to a market center or exchange.[1] The computer program will automatically generate orders based on predefined set of rules using a trading strategy which is based on technical analysis, advanced statistical and mathematical computations or input from other electronic sources.[2]

Automated trading systems are often used with electronic trading in automated market centers, including electronic communication networks, "dark pools", and automated exchanges.[5] Automated trading systems and electronic trading platforms can execute repetitive tasks at speeds orders of magnitude greater than any human equivalent. Traditional risk controls and safeguards that relied on human judgment are not appropriate for automated trading and this has caused issues such as the 2010 Flash Crash. New controls such as trading curbs or 'circuit breakers' have been put in place in some electronic markets to deal with automated trading systems.[6]

Mechanism

The automated trading system determines whether an order should be submitted based on, for example, the current market price of an option and theoretical buy and sell prices.[7] The theoretical buy and sell prices are derived from, among other things, the current market price of the security underlying the option. A look-up table stores a range of theoretical buy and sell prices for a given range of current market price of the underlying security. Accordingly, as the price of the underlying security changes, a new theoretical price may be indexed in the look-up table, thereby avoiding calculations that would otherwise slow automated trading decisions.[8] A distributed processing on-line automated trading system uses structured messages to represent each stage in the negotiation between a market maker (quoter) and a potential buyer or seller (requestor).[9]

Strategies

Trend following is a trading strategy that bases buying and selling decisions on observable market trends. For years, various forms of trend following have emerged, like the Turtle Trader software program. Unlike financial forecasting, this strategy does not predict market movements. Instead, it identifies a trend early in the day and then trades automatically according to a predefined strategy, regardless of directional shifts. Trend following gained popularity among speculators, though remains reliant on manual human judgment to configure trading rules and entry/exit conditions. Finding the optimal initial strategy is essential. Trend following is limited by market volatility and the difficulty of accurately identifying trends.[11]

For example, the following formula could be used for trend following strategy:

"Consider a complete probability space (Ω, F, P). Let

Sr

denote the stock price at time

r

satisfying the equation

dSr=Sr[\mu(\alphar)dr+\sigmadBr],

St=X,

t\leqr\leqT<infty

,

where

\alphar\in\{1,2\}

is a two-state Markov-Chain,

\mu(i)\equiv\mui

is the expected return rate in regime

i=1,2,\sigma>0

is the constant volatility,

Br

is a standard Brownian motion, and

t

and

T

are the initial and terminal times, respectively".[12]

According to Volume-weighted average price Wikipedia page, VWAP is calculated using the following formula:

":

PVWAP=

\sumj{PjQj
} \,

where:

PVWAP

is Volume Weighted Average Price;

Pj

is price of trade

j

;

Qj

is quantity of trade

j

;

j

is each individual trade that takes place over the defined period of time, excluding cross trades and basket cross trades".

"A continuous mean-reverting time series can be represented by an Ornstein-Uhlenbeck stochastic differential equation:

dxt=\theta(\mu-xt)dt+\sigmadWt

Where

\theta

is the rate of reversion to the mean,

\mu

is the mean value of the process,

\sigma

is the variance of the process and

Wt

is a Wiener Process or Brownian Motion".[13] [14]

History

The concept of automated trading system was first introduced by Richard Donchian in 1949 when he used a set of rules to buy and sell the funds.[15] Donchian proposed a novel concept in which trades would be initiated autonomously in response to the fulfillment of predetermined market conditions. Due to the absence of advanced technology at the time, Donchian's staff was obligated to perform manual market charting and assess the suitability of executing rule-based trades. Although this laborious procedure was susceptible to human error, it established the foundation for the subsequent development of transacting financial assets.[16]

Then, in the 1980s, the concept of rule based trading (trend following) became more popular when famous traders like John Henry began to use such strategies. In the mid 1990s, some models were available for purchase. Also, improvements in technology increased the accessibility for retail investors.[17] Later, Justin-Niall Swart employed a Donchian channel-based trend-following trading method for portfolio optimization in his South African futures market analysis.[18]

The early form of an Automated Trading System, composed of software based on algorithms, that have historically been used by financial managers and brokers. This type of software was used to automatically manage clients' portfolios.[19] However, the first service to free market without any supervision was first launched in 2008 which was Betterment by Jon Stein. Since then, this system has been improving with the development in the IT industry.

Around 2005, copy trading and mirror trading emerged as forms of automated algorithmic trading. These systems allowed traders to share their trading histories and strategies, which other traders could replicate in their accounts. One of the first companies to offer an auto-trading platform was Tradency in 2005 with its "Mirror Trader" software.[20] [21] [22] This feature enabled traders to submit their strategies, allowing other users to replicate any trades produced by those strategies in their accounts. Subsequently, certain platforms allowed traders to connect their accounts directly in order to replicate trades automatically, without needing to code trading strategies. Since 2010, numerous online brokers have incorporated copy trading into their internet platforms, such as eToro, ZuluTrade, Ayondo, and Tradeo.[23] [24] Copy trading benefits from real-time trading decisions and order flow from credible investors, which lets less experienced traders mirror trades without performing the analysis themselves.

Now, Automated Trading System is managing huge assets all around the globe.[25] In 2014, more than 75 percent of the stock shares traded on United States exchanges (including the New York Stock Exchange and NASDAQ) originated from automated trading system orders.[26] [27]

Market disruption and manipulation

Automated trading, or high-frequency trading, causes regulatory concerns as a contributor to market fragility.[28] United States regulators have published releases[29] [30] discussing several types of risk controls that could be used to limit the extent of such disruptions, including financial and regulatory controls to prevent the entry of erroneous orders as a result of computer malfunction or human error, the breaching of various regulatory requirements, and exceeding a credit or capital limit.

The use of high-frequency trading (HFT) strategies has grown substantially over the past several years and drives a significant portion of activity on U.S. markets. Although many HFT strategies are legitimate, some are not and may be used for manipulative trading. A strategy would be illegitimate or even illegal if it causes deliberate disruption in the market or tries to manipulate it. Such strategies include "momentum ignition strategies": spoofing and layering where a market participant places a non-bona fide order on one side of the market (typically, but not always, above the offer or below the bid) in an attempt to bait other market participants to react to the non-bona fide order and then trade with another order on the other side of the market. They are also referred to as predatory/abusive strategies. Given the scale of the potential impact that these practices may have, the surveillance of abusive algorithms remains a high priority for regulators. The Financial Industry Regulatory Authority (FINRA) has reminded firms using HFT strategies and other trading algorithms of their obligation to be vigilant when testing these strategies pre- and post-launch to ensure that the strategies do not result in abusive trading.

FINRA also focuses on the entry of problematic HFT and algorithmic activity through sponsored participants who initiate their activity from outside of the United States. In this regard, FINRA reminds firms of their surveillance and control obligations under the SEC's Market Access Rule and Notice to Members 04-66,[31] as well as potential issues related to treating such accounts as customer accounts, anti-money laundering, and margin levels as highlighted in Regulatory Notice 10-18 [32] and the SEC's Office of Compliance Inspections and Examination's National Exam Risk Alert dated September 29, 2011.[33]

FINRA conducts surveillance to identify cross-market and cross-product manipulation of the price of underlying equity securities. Such manipulations are done typically through abusive trading algorithms or strategies that close out pre-existing option positions at favorable prices or establish new option positions at advantageous prices.

In recent years, there have been a number of algorithmic trading malfunctions that caused substantial market disruptions. These raise concern about firms' ability to develop, implement, and effectively supervise their automated systems. FINRA has stated that it will assess whether firms' testing and controls related to algorithmic trading and other automated trading strategies are adequate in light of the U.S. Securities and Exchange Commission and firms' supervisory obligations. This assessment may take the form of examinations and targeted investigations. Firms will be required to address whether they conduct separate, independent, and robust pre-implementation testing of algorithms and trading systems. Also, whether the firm's legal, compliance, and operations staff are reviewing the design and development of the algorithms and trading systems for compliance with legal requirements will be investigated. FINRA will review whether a firm actively monitors and reviews algorithms and trading systems once they are placed into production systems and after they have been modified, including procedures and controls used to detect potential trading abuses such as wash sales, marking, layering, and momentum ignition strategies. Finally, firms will need to describe their approach to firm-wide disconnect or "kill" switches, as well as procedures for responding to catastrophic system malfunctions.[34] [35] [36]

Notable examples

Examples of recent substantial market disruptions include the following:

See also

Notes and References

  1. Web site: 3 Myths about Algorithmic Trading. Khandelwal. Nitesh. BW Businessworld. en. 2019-08-01.
  2. News: Domowitz . Ian . Lee . Ruben . 1996-10-28 . The Legal Basis for Stock Exchanges: The Classification and Regulation of Automated Trading Systems.
  3. Arnoldi . Jakob . 2016-01-01 . Computer Algorithms, Market Manipulation and the Institutionalization of High Frequency Trading . Theory, Culture & Society . en . 33 . 1 . 29–52 . 10.1177/0263276414566642 . 0263-2764.
  4. Yadav . Yesha . 2015 . How Algorithmic Trading Undermines Efficiency in Capital Markets . Vanderbilt Law Review . 68 . 1607.
  5. Book: Lemke. Thomas. Lins. Gerald. Soft Dollars and Other Trading Activities. 2:25-2:29. Thomson West. 2013-2014. 978-0-314-63065-0.
  6. Web site: Concept Release on Risk Controls and System Safeguards for Automated Trading Environments. Commodity Futures Trading Commission. September 9, 2013. December 22, 2014. https://web.archive.org/web/20131127021742/http://www.cftc.gov/ucm/groups/public/@newsroom/documents/file/federalregister090913.pdf. November 27, 2013. dead.
  7. Hanif . Ayub . Smith . Robert Elliott . 2012-09-30 . Algorithmic, Electronic, and Automated Trading . The Journal of Trading . en . 7 . 4 . 78–86 . 10.3905/jot.2012.7.4.078 . 1559-3967.
  8. Marynowski, John M., et al. "Automated trading system in an electronic trading exchange." U.S. Patent No. 7,251,629. 31 Jul. 2007.
  9. Hartheimer, Richard, et al. "Financial exchange system having automated recovery/rollback of unacknowledged orders." U.S. Patent No. 5,305,200. 19 Apr. 1994.
  10. Book: Zubulake, Paul . The high frequency game changer: how automated trading strategies have revolutionized the markets . Lee . Sang . 2011 . Wiley . 978-1-118-01968-9 . Wiley trading series . Hoboken, NJ.
  11. Fong . Simon . Si . Yain-Whar . Tai . Jackie . 2012 . Trend following algorithms in automated derivatives market trading . Expert Systems with Applications . 39 . 13 . 11378–11390 . 10.1016/j.eswa.2012.03.048 . 0957-4174.
  12. News: Dai . Min . Yang . Zhou . Zhang . Qing . Zhu . Qiji . Optimal Trend Following Trading Rules.
  13. Web site: Basics of Statistical Mean Reversion Testing . QuantStart.
  14. News: Smith . William . 2010-02-01 . On the Simulation and Estimation of the Mean-Reverting Ornstein-Uhlenbeck Process . 1.01.
  15. Donchian . Richard . 1995-11-15 . Donchian's five- and 20-day moving averages . Futures Futures: News, Analysis & Strategies for Futures, Options & Derivatives Traders . Cedar Falls, Iowa . The Alpha Pages LLC . 24 . 13 . 32 . Gale.
  16. Dimov . Diyan . 2022-12-19 . Conceptual Model of Automated Trading Systems Implementation . ROBONOMICS: The Journal of the Automated Economy . en . 3 . 25–25 . 2683-099X.
  17. Web site: History of Trading Systems . 13 January 2014 .
  18. News: Swart . J.N. . 2016 . Testing a price breakout strategy using Donchian Channels . University of Cape Town.
  19. Book: Durenard, Eugene A. . Professional automated trading: theory and practice . 2013 . John Wiley & Sons . 978-1-118-12985-2 . Wiley trading series . Hoboken, New Jersey . 847541969.
  20. Web site: Lievonen . L. . 2020 . Empirical investigation on the performance of copy-portfolios on E-TORO platform .
  21. Web site: Tradency, Robo for Advisors . 2022-07-12 . tradency.
  22. Web site: Mirror Trader . 2022-07-12 . tradency.
  23. Web site: Mingwen . Yang . Eric . Zheng . Vijay . Mookerjee . 2019 . The Transparency-Revenue Conundrum in Social Trading: Implications for Platforms and Investors . Jindal School of Management, The University of Texas at Dallas.
  24. Apesteguia . Jose . Oechssler . Jörg . Weidenholzer . Simon . 2020 . Copy Trading . Management Science . en . 66 . 12 . 5608–5622 . 10.1287/mnsc.2019.3508 . 0025-1909.
  25. Web site: Robo-Advisor: Future to Financial Management?. Muller. Christopher. July 14, 2018. Algonest. June 24, 2018. https://web.archive.org/web/20190106025105/https://algonest.com/site/robo-content. January 6, 2019. dead.
  26. Web site: As automated trading takes over markets, rational human investors matter even more. - Abernathy MacGregor.
  27. Web site: A day in the quiet life of a NYSE floor trader. 29 May 2013.
  28. This supports regulatory concerns about the potential drawbacks of automated trading due to operational and transmission risks and implies that fragility can arise in the absence of order flow toxicity.. High frequency trading and fragility. Giovanni Cespa, Xavier Vives. Working Papers Series. European Central Bank. 2020. February 2017.
  29. Web site: "CFTC Publishes Sweeping Concept Release Asking Questions About Additional Regulation of Automated Trading Strategies and High-Frequency Trading" - JD Supra.
  30. Web site: SEC Adopts New Rule Preventing Unfiltered Market Access (Press Release No. 2010-210; November 3, 2010.
  31. Web site: Notice to Members 04-66 – FINRA.org.
  32. Web site: FINRA Issues Guidance on Master and Sub-Account Arrangements . 2014-12-25 . dead . https://web.archive.org/web/20141225163346/https://www.finra.org/Industry/Regulation/Notices/2010/P121248 . 2014-12-25 .
  33. Web site: Risk Alert Master Subaccounts . www.sec.gov.
  34. Foley . Michael T. . Angstadt . Janet M. . Pazzol . Ross . Van De Graaff . James D. . 2016-01-01 . FINRA rule amendment requires registration of associated persons who develop algorithmic trading strategies . Journal of Investment Compliance . 17 . 3 . 39–41 . 10.1108/JOIC-07-2016-0028 . 1528-5812.
  35. News: Scopino . Gregory . 2015 . Preparing Financial Regulation for the Second Machine Age: The Need for Oversight of Digital Intermediaries in the Futures Markets . Columbia Business Law Review . 2015 . 2: 439.
  36. Web site: 2015-03-26 . Regulatory Notice 15-09 FINRA.org . 2024-03-23 . www.finra.org . en.
  37. Web site: No Time To Trade . 2015-05-29 . dead . https://web.archive.org/web/20150529200459/http://www.notimetotrade.com/ . 2015-05-29 .
  38. Web site: Knight Shows How to Lose $440 Million in 30 Minutes. Matthew Philips. matthewaphilips. .
  39. Web site: Knight Capital and Getco to Merge. 19 December 2012 .
  40. Web site: How the Robots Lost: High-Frequency Trading's Rise and Fall. Matthew Philips. Bloomberg.