Options Education
Trading Risk: Enhanced Profitability through Risk Control
Kenneth L. Grant
Click image above to get it at Amazon
Managing the
performance of your trading account must go beyond the discipline of money
management. While money management remains critical, it is a subset of the
total picture of managing your trading account’s profit and loss.
That total picture
is what Kenneth L. Grant aptly paints in his book, Trading Risk. Total performance management of trading
must treat the profit and losses in a trading account at 2 levels – the
portfolio level and at the individual trade level.
Kenneth L. Grant is Cheyne Capital’s Global Risk
Manager and notable pioneer in designing risk control and capital allocation
programs for global hedge funds.
Typically with most literature on risk management, you would expect
complex numerical formulas beyond the reach of most retail traders who do not
have a mathematical background.
Kenneth writes in a style that does emphasize the robustness of
arithmetical reasoning, but helps you visualize the various types of risks with
ample graphs. The content is not so numerically oriented that it is beyond the
grasp of anyone who is comfortable with Statistics 101.
There are adequate reader reviews on Amazon and Google
Book Search, to help you decide if you will get the book. For those who have just
started or are about to read the book, I’ve summarized the core concepts in the
larger and essential chapters to help you get through them quicker.
The number on the
right of the title of the chapter is the number of pages contained within that
chapter. It is not the page number.
The percentages represent how much each chapter makes up of the 244
pages in total, excluding appendices.
Chapter 1: The Risk Management Investment. 18, 7.38%.
Chapter 2: Setting Performance Objectives. 18, 7.38%.
Chapter 3: Understanding the Profit/Loss Patterns over Time. 44, 18.03%.
Chapter 4: The Risk Components of an Individual Portfolio. 28, 11.48%.
Chapter 5: Setting Appropriate Exposure Levels (Rule 1). 24, 9.84%.
Chapter 6: Adjusting Portfolio Exposure (Rule 2). 22, 9.02%.
Chapter 7: The Risk Components of an Individual Trade. 58, 23.77%.
Chapter 8: Bringing It on Home.
32, 13.11%.
Focus on chapters
2, 3, 4 and 7, which makes up about 61% of the book. These chapters are
relevant for practical trading purposes.
Here are the key points for these focus chapters, which I’m summarizing
from a retail option trader’s perspective.
Chapter 2: Setting Performance Objectives. There are 3
types of targets to set at the portfolio level.
❑
Optimal Target Return is the complete achievement of the “ideal”
measure. For e.g. generating trading income that is 2-3 times your household
expenses, to evaluate the practicality of trading for a living.
❑
Nominal Target Return is the lowest acceptable measure, achievable under
most conditions, excluding a catastrophic market event. For example, your
trading account should be yielding a rate of return above the historical
returns of the S&P 500 of between 10%-12%, before the financial pandemic.
Otherwise, why bother with managing the Greeks of option positions, if you are
failing to beat a widely accepted benchmark for Equities?
❑
Stop-Out Level is when cumulative losses reach an absolute amount below
the Nominal Target Return, making it necessary to stop trading altogether for a
period. As a guideline, this is 10% x [(60% x Cash Balance at the start of the
year); or Net Liquidating Value].
For example, for a $50,000 trading account, 10% x (60% x $50,000) =
$3,000 of losses in total, is the absolute amount to halt trading. Why 10%? Blowing up your account is
final. There is no bail out package.
Stop trading for 2-3 months and reassess your ability to consistently
trade profitably, before committing the remaining capital to risk in the
markets.
Chapter 3: Understanding the Profit/Loss Patterns over Time. This chapter
evaluates the profit and loss in terms of Time Units (typically day and week)
feeding into Time Spans, Average Profit versus Average Loss, Standard
Deviation, Sharpe Ratio, Median P/L, Percentage of Winning Days versus Losing
Days, Drawdown and Correlation Analysis.
This section focuses on the core metrics of trade performance, for a
given period:
❑
Win/Loss Probability = Number of Winners / Total Trades. This measures
your accuracy in trade selection.
❑
Average Winner = Total $ value of Wins / Number of Winners.
❑
Average Winner = Total $ value of Losses / Number of Losers.
❑
Average Winner / Average Loser = Impact Ratio, measuring how responsive
you are in allowing winners ride higher and how quick you are in cutting
losses.
❑
Performance Ratio = (Win / Loss Probability) x (Average Win / Average
Loss), which is a combined metric of accuracy and responsive measuring overall
portfolio efficiency. Sustaining the Performance Ratio above 1.00 is key in
stepping up the allocation per trade by +1%; or, stepping down the allocation
per trade by -1% as the ratio drops below 1.00.
In calculating the metrics, it becomes clear if your strengths are in
trading long debit spreads, short credit spreads, directional trades (be it
up/down) or non-directional trades. Trade in line with what you are intuitively
profitable at, be that debit/credit spreads or directional/non-directional
trades. The metrics help you guard against trading counter-intuitively in
opposition to your strengths.
Chapter 4: The Risk Components of an Individual Portfolio. The
emphasis of this chapter is on Historical Volatility, Correlation and Implied
Volatility and Value at Risk (VaR). While it is educational to understand how
these various risks can be aggregated up into a single, portfolio measure of
exposure, it is not useful for option traders trading retail portfolios from
home. Why? To re-simulate the test scenarios on
the portfolio cited in the text, requires specific types of data. The Account
Statement of most retail option trading platforms only record each trade’s
profit, loss and date. The additional data of each day’s Historical Volatility,
Implied Volatility, Correlation coefficient values and Standard
Deviation/Variance values will need to be sourced from outside the trading
platform. Unless you are trading
multiple portfolios on behalf of other individuals, VaR simulations make sense.
If you are trading just your own portfolio, it more useful to get an Implied
Volatility tool that forecasts IV rising or falling by X% over 30-60-90-120
days. This is a much more
affordable way to assess the total impact of IV and Correlation in IV on your
portfolio.
Chapter 7: The Risk Components of an Individual Trade. The section
to focus on here is the Core Transaction-Level Statistics. This includes the
Trade Level P/L, Holding Period, Average P/L, Weighted Average P/L, Average
Holding Period, P/L by Security or Asset Class and Long Side P/L versus Short
Side P/L. The main point here is
to monetize the Average Holding Period of a long or short position. For
example, as a guideline:
❑
Credit spreads are typically identified for entry between 30-45
days. Does your historical profit
show you can get an 80% ROI in 15-20 days, within the 45 day term? If you can,
increase either the number of credit spread trades across different products;
or, re-size the number of contacts per trade. So, you can turnover more credit spreads within a given
period. If your P/L shows
otherwise, do the opposite.
❑
Debit spreads are typically identified for entry between 90-120
days. Does your historical profit
show you can get a 150%-200%
ROI within 30-60 days, within the 120 day term? If you can, increase either
the number of debit spread trades across different products; or, re-size the
number of contacts per trade. So,
you can turnover more debit spreads within a given period. If your P/L shows otherwise, do the
opposite. Again, turnover more profitable trades within a fixed period. Do the
reverse, if your P/L shows otherwise.