Technical Analysis
"Technical analysis is the study of market action, primarily through the use of charts, for the purpose of forecasting future price trends."[1]
Practically, Technical Analysis is the prediction of future financial prices based on past price movements. Technical analysis does not provide absolute forecasting about the future but can help investors identify patterns that can suggest future activity.
In its purest form, technical analysis considers only the actual
price behavior of the market or instrument, based on the premise that
price reflects all relevant factors before an investor becomes aware of
them through other channels.
Technical analysis is widely used among traders and financial professionals, but is considered by many to be "voodoo" finance; it receives little or no direct support from academic sources and is considered akin to "astrology."[2] Academics such as Eugene Fama say the evidence for technical analysis is sparse and is inconsistent with the generally-accepted efficient market hypothesis.[3][4]
In the foreign exchange markets, however, its use may be more widespread than "fundamental" analysis.[5][6]
While some isolated studies have indicated that technical trading rules
might lead to consistent returns in the period prior to 1987,[7][8][9][10] most academic work has focused on the the nature of the anomalous position of the foreign exchange market[11] It is speculated that this anomaly is due to central bank intervention.[12]
Economist Burton Malkiel
argues, "Technical analysis is an anathema to the academic world." He
further argues that under the weak form of the efficient market
hypothesis, "...you cannot predict future stock prices from past stock
prices."[13]
General description
Technical analysts (or technicians) identify non-random price
patterns and trends in financial markets and attempt to exploit those
patterns [14]
While technicians use various methods and tools, the study of price
charts is primary. Technicians especially search for archetypal
patterns, such as the well-known head and shoulders reversal pattern, and also study such indicators as price, volume, and moving averages of the price. Many technical analysts also follow indicators of investor psychology (market sentiment).
Essentially, technical analysis examines two areas of investing: the
analysis of market "psych" (or sentiment), and the analysis of
supply/demand (whether investors have the funds to support their hopes
and fears). A bullish investor without funds cannot take the market
higher.
Technicians seek to forecast price movements such that large gains
from successful trades exceed more numerous but smaller losing trades,
producing positive returns in the long run through proper risk control and money management.
There are several schools of technical analysis. Adherents of different schools (for example, candlestick charting, Dow Theory, and Elliott wave theory)
may ignore the other approaches, yet many traders combine elements from
more than one school. Technical analysts use judgment gained from
experience to decide which pattern a particular instrument reflects at
a given time, and what the interpretation of that pattern should be.
Technical analysis is frequently contrasted with fundamental analysis, the study of economic
factors that some analysts say can influence prices in financial
markets. Pure technical analysis holds that prices already reflect all
such influences before investors are aware of them, hence the study of
price action alone. Some traders use technical or fundamental analysis
exclusively, while others use both types to make trading decisions.
History
The principles of technical analysis derive from the observation of financial markets over hundreds of years. The oldest known example of technical analysis was a method used by Japanese traders as early as the 18th century, which evolved into the use of candlestick techniques, and is today a main charting tool.[15][16]
Dow Theory is based on the collected writings of Dow Jones co-founder and editor Charles Dow, and inspired the use and development of modern technical analysis from the end of the 19th century. Modern technical analysis considers Dow Theory its cornerstone.[17]
Many more technical tools and theories have been developed and enhanced in recent decades, with an increasing emphasis on computer-assisted techniques.
Principles of technical analysis
Technicians say that a market's price reflects all relevant
information, so their analysis looks more at "internals" than at
"externals" such as news events. Price action also tends to repeat
itself because investors collectively tend toward patterned behavior --
hence technicians' focus on identifiable trends and conditions.
Market action discounts everything
Based on the premise that all relevant information is already
reflected by prices, technical analysts believe it is redundant to do fundamental analysis
-- they say news and news events do not significantly influence price,
and cite supporting research such as the study by Cutler, Poterba, and Summers titled "What Moves Stock Prices?"
On most of the sizable return days [large market moves]…the
information that the press cites as the cause of the market move is not
particularly important. Press reports on adjacent days also fail to
reveal any convincing accounts of why future profits or discount rates
might have changed. Our inability to identify the fundamental shocks
that accounted for these significant market moves is difficult to
reconcile with the view that such shocks account for most of the
variation in stock returns. [18]
Prices move in trends
- See also: Market trends
Technical analysts believe that prices trend. Technicians say that
markets trend up, down, or sideways (flat). This basic definition of
price trends is the one put forward by Dow Theory.[14]
An example of a security that had an apparent trend is AOL from
November 2001 through August 2002. A technical analyst or trend
follower recognizing this trend would look for opportunities to sell
this security. AOL consistently moves downward in price. Each time the
stock rose, sellers would enter the market and sell the stock; hence
the "zig-zag" movement in the price. The series of "lower highs" and
"lower lows" is a tell tale sign of a stock in a down trend.[19]
In other words, each time the stock edged lower, it fell below its
previous relative low price. Each time the stock moved higher, it could
not reach the level of its previous relative high price.
Note that the sequence of lower lows and lower highs did not begin
until August. Then AOL makes a low price that doesn't pierce the
relative low set earlier in the month. Later in the same month, the
stock makes a relative high equal to the most recent relative high. In
this a technician sees strong indications that the down trend is at
least pausing and possibly ending, and would likely stop actively
selling the stock at that point.
History tends to repeat itself
Technical analysts believe that investors collectively repeat the
behavior of the investors that preceded them. "Everyone wants in on the
next Microsoft," "If this stock ever gets to $50 again, I will buy it,"
"This company's technology will revolutionize its industry, therefore
this stock will skyrocket" -- these are all examples of investor
sentiment repeating itself. To a technician, the emotions in the market
may be irrational, but they exist. Because investor behavior does
repeat itself so often, technicians believe that recognizable (and
predictable) price patterns will develop on a chart.[14]
Technical analysis is not limited to charting, yet is always
concerned with price trends. For example, many technicians monitor
surveys of investor sentiment. These surveys gauge the attitude of
market participants, specifically whether they are bearish or bullish.
Technicians use these surveys to help determine whether a trend will
continue or if a reversal could develop; they are most likely to
anticipate a change when the surveys report extreme investor sentiment.
Surveys that show overwhelming bullishness, for example, are evidence
that an uptrend may reverse -- the premise being that if most investors
are bullish they have already bought the market (anticipating higher
prices). And because most investors are bullish and invested,
one assumes that few buyers remain. This leaves more potential sellers
than buyers, despite the bullish sentiment. This suggests that prices
will trend down, and is an example of contrarian trading.
Empirical studies and theoretical problems
The Wall Street Journal Europe
states "Whether technical analysis is really useful ... is a matter of
some dispute on Wall Street. Some investors believe that it is
impossible to forecast the market's ups and downs. Academic studies
have shown that when most people, professionals and amateurs alike, try
to move money in and out of stocks to beat market fluctuations, they
tend to wind up with losses."[20]
The same article shows how several technical analysts can
simultaneously make contradictory predictions when exposed to the same
data.
Lack of evidence
Critics of technical analysis include well known fundamental analysts. For example, Peter Lynch once commented, "Charts are great for predicting the past." Warren Buffett
has said, "I realized technical analysis didn't work when I turned the
charts upside down and didn't get a different answer" and "If past
history was all there was to the game, the richest people would be
librarians."[1]
Most academic studies say technical analysis has little predictive power,
but some studies say it may produce excess returns. For example,
measurable forms of technical analysis, such as non-linear prediction
using neural networks, have been shown to occasionally produce statistically significant prediction results.[21] A Federal Reserve working paper[8] regarding support and resistance
levels in short-term foreign exchange rates "offers strong evidence
that the levels help to predict intraday trend interruptions," although
the "predictive power" of those levels was "found to vary across the
exchange rates and firms examined."
Cheol-Ho Park and Scott H. Irwin reviewed 95 modern studies on the profitability
of technical analysis and said 56 of them find positive results, 20
obtain negative results, and 19 indicate mixed results: "Despite the
positive evidence...most empirical studies are subject to various
problems in their testing procedures, e.g., data snooping, ex post
selection of trading rules or search technologies, and difficulties in
estimation of risk and transaction costs. Future research must address
these deficiencies in testing in order to provide conclusive evidence
on the profitability of technical trading strategies."[22]
The influential 1992 study by Brock et al. which appeared to find
support for technical trading rules was tested for data snooping and
other problems in 1999[23];
while the sample covered by Brock et al was robust to data snooping,
"..the superior performance of the best trading rule is not repeated in
the out-of-sample experiment covering the period 1987-1996". Indeed,
"there is scant evidence that technical trading rules were of any
economic value during the period 1987-1996."
Subsequently, a comprehensive study of the question by Amsterdam
economist Gerwin Griffioen concludes that: "for the U.S., Japanese and
most Western European stock market indices the recursive out-of-sample
forecasting procedure does not show to be profitable, after
implementing little transaction costs. Moreover, for sufficiently high
transaction costs it is found, by estimating CAPMs,
that technical trading shows no statistically significant
risk-corrected out-of-sample forecasting power for almost all of the
stock market indices."[4]
These are particularly applicable to "momentum strategies"; a
comprehensive 1996 review of the data and studies concluded that even
small transaction costs would lead to an inability to capture any
excess from such strategies[24].
MIT finance professor Andrew Lo argues that "several academic
studies suggest that…technical analysis may well be an effective means
for extracting useful information from market prices."[25]
Efficient market hypothesis
The efficient market hypothesis
(EMH) contradicts the basic tenets of technical analysis, by stating
that past prices cannot be used to profitably predict future prices.
Thus it holds that technical analysis cannot be effective. Economist Eugene Fama published the seminal paper on the EMH in the Journal of Finance
in 1970, and said "In short, the evidence in support of the efficient
markets model is extensive, and (somewhat uniquely in economics)
contradictory evidence is sparse." [26]
EMH advocates say that if prices quickly reflect all relevant
information, no method (including technical analysis) can "beat the
market." Developments which influence prices occur randomly and are unknowable in advance.
Technicians say that EMH ignores the way markets work, in that many
investors base their expectations on past earnings, track record, etc.
Because future stock prices can be strongly influenced by investor
expectations, technicians claim it only follows that past prices
influence future prices.[27] They also point to research in the field of behavioral finance,
specifically that people are not the rational participants EMH makes
them out to be. Technicians have long said that irrational human
behavior influences stock prices, and that this behavior leads to
predictable outcomes.[28] Author David Aronson says that the theory of behavioral finance blends with the practice of technical analysis:
By considering the impact of emotions, cognitive errors, irrational
preferences, and the dynamics of group behavior, behavioral finance
offers succinct explanations of excess market volatility as well as the
excess returns earned by stale information strategies…. cognitive
errors may also explain the existence of market inefficiencies that
spawn the systematic price movements that allow objective TA [technical
analysis] methods to work.[27]
EMH advocates reply that while individual market participants do not
always act rationally (or have complete information), their aggregate
decisions balance each other, resulting in a rational outcome
(optimists who buy stock and bid the price higher are countered by
pessimists who sell their stock, which keeps the price in equilibrium).[29]
Likewise, complete information is reflected in the price because all
market participants bring their own individual, but incomplete,
knowledge together in the market.[29]
Random walk hypothesis
The random walk hypothesis
may be derived from the weak-form efficient markets hypothesis, which
is based on the assumption that market participants take full account
of any information contained in past price movements (but not
necessarily other public information). In his book A Random Walk Down Wall Street, Princeton economist Burton Malkiel
said that technical forecasting tools such as pattern analysis must
ultimately be self-defeating: "The problem is that once such a
regularity is known to market participants, people will act in such a
way that prevents it from happening in the future." [30]
In a 1999 response to Malkiel, Andrew Lo and Craig McKinlay collected
empirical papers that questioned the hypothesis' applicability[31]
that suggested a non-random and possibly predictive component to stock
price movement, though they were careful to point out that rejecting
random walk does not necessarily invalidate EMH.
Technicians say the EMH and Random Walk theories both ignore the
realities of markets, in that participants are not completely rational
(they can be greedy, overly risky, etc.) and that current price moves
are not independent of previous moves (technicians point to charts
similar to AOL above.)[19][32]
Critics reply that one can find virtually any chart pattern after the
fact, but that this does not prove that such patterns are predictable.
Technicians maintain that both theories would also invalidate numerous
other trading strategies such as index arbitrage, statistical arbitrage and many other trading systems.[27]
Industry
Globally, the industry is represented by The International Federation of Technical Analysts (IFTA). In the United States the industry is represented by two national organizations: the Market Technicians Association (MTA), and the American Association of Professional Technical Analysts (AAPTA). In Canada the industry is represented by the Canadian Society of Technical Analysts.
Use of technical analysis
Many traders say that trading in the direction of the trend is the most effective means to be profitable in financial or commodities markets. John W. Henry, Larry Hite, Ed Seykota, Richard Dennis, William Eckhardt, Victor Sperandeo, Michael Marcus and Paul Tudor Jones (some of the so-called Market Wizards in the popular book of the same name by Jack D. Schwager) have each amassed massive fortunes via the use of technical analysis and its concepts. George Lane, a technical analyst, coined one of the most popular phrases on Wall Street, "The trend is your friend!"
Many non-arbitrage algorithmic trading systems rely on the idea of trend-following, as do many hedge funds.
A relatively recent trend, both in research and industrial practice,
has been the development of increasingly sophisticated automated
trading strategies. These often rely on underlying technical analysis
principles (see algorithmic trading article for an overview).
Systematic trading and technical analysis
Neural networks
Since the early 90's when the first practically usable types emerged, artificial neural networks (ANNs) have rapidly grown in popularity. They are artificial intelligence
adaptive software systems that have been inspired by how biological
neural networks work. Their use comes in because they can learn to
detect complex patterns in data. In mathematical terms, they are
universal non-linear function approximators[33] [34]
meaning that given the right data and configured correctly, they can
capture and model any input-output relationships. This not only removes
the need for human interpretation of charts or the series of rules for
generating entry/exit signals but also provides a bridge to fundamental analysis as the variables used in fundamental analysis can be used as input.
In addition, as ANNs are essentially non-linear statistical models,
their accuracy and prediction capabilities can be both mathematically
and empirically tested. In various studies neural networks used for
generating trading signals have significantly outperformed buy-hold
strategies as well as traditional linear technical analysis methods.[35] [36] [37]
While the advanced mathematical nature of such adaptive systems have
kept neural networks for financial analysis mostly within academic
research circles, in recent years more user friendly neural network software has made the technology more accessible to traders.
Rule-based trading
Rule-based trading is an approach to make one's trading plans by
strict and clear-cut rules. Unlike some other technical methods or most
fundamental analysis, it defines a set of rules that determines all
trades, leaving minimal discretion.
For instance, a trader
might make a set of rules stating that he will take a long position
whenever the price of a particular instrument closes above its 50-day moving average, and shorting it whenever it drops below.
Combining Technical Analysis with other Market Forecast Methods
John Murphy in his book "Technical Analysis of the Financial
Markets", says that the principal sources of information available to
technicians are price, volume and open interest. Other data, such as indicators and sentiment analysis are considered secondary.
However, many technical analysts reach outside pure technical
analysis, combining other market forecast methods with their technical
work. One such approach, known as Fusion Analysis [3002.html]
overlays fundamental with technical analysis, in an attempt to improve
portfolio manager performance. Another advocate for this approach is
John Bollinger, who coined the term Rational Analysis as the
intersection of technical analysis and fundamental analysis[capital growth letter.htm].
Technical analysis is also often combined with quantitative analysis and economics.For example, neural networks may be used to help identify intermarket relationships [[2]]. A few market forecasters combine financial astrology
with technical analysis. Chris Carolan's article "Autumn Panics and
Calendar Phenomenon," which won the Market Technicians Association Dow
Award for best technical analysis paper in 1998, demonstrates how
technical analysis and lunar cycles can be combined [[3]].
Investor and newsletter polls, and magazine cover sentiment indicators, are also used by technical and market analysts. [[4]]
Charting terms and indicators
Widely-known technical analysis concepts include:
Books
- Ichimoku Charts, Nicole Elliott, Harriman House, 2007, ISBN 9781897597842
- Getting Started in Technical Analysis, Jack D. Schwager, Wiley, 1999, ISBN 0-471-29542-6
- New Concepts in Technical Trading Systems, J. Welles Wilder, Trend Research, 1978, ISBN 0-89459-027-8
- Reminiscences of a Stock Operator, Edwin Lefèvre, John Wiley & Sons Inc, 1994, ISBN 0-471-05970-6
- Street Smarts, Connors/Raschke, 1995, ISBN 0-9650461-0-9
- Technical Analysis: The Complete Resource for Financial Market Technicians, Kirkpatrick/Dahlquist, 2007, ISBN 0-1315311-3-1
- Technical Analysis of Futures Markets, John J. Murphy, New York Institute of Finance, 1986, ISBN 0-13-898008-X
- Technical Analysis of Stock Trends, 8th Edition (Hardcover), Robert D. Edwards, John Magee, W. H. C. Bassetti (Editor), American Management Association, 2001, ISBN 0-8144-0680-7
- Technical Analysis of the Financial Markets, John J. Murphy, New York Institute of Finance, 1999, ISBN 0-7352-0066-1
- The Free E-Book of Technical Analysis, Wallstreetcourier, [5]
- The Profit Magic of Stock Transaction Timing, J.M. Hurst, Prentice-Hall, 1972, ISBN 0-13-726018-0
Notes
- ^ John J. Murphy, Technical Analysis of the Futures Markets (New York Institute of Finance, 1986), page 1.
- ^ Lo,
A.W.; Mamaysky, H.; Wang, J. (2000). "Foundations of Technical
Analysis: Computational Algorithms, Statistical Inference, and
Empirical Implementation". The Journal of Finance 55 (4): 1705-1765. doi:10.1111/0022-1082.00265.
- ^ Fama, Eugene (May 1970). "Efficient Capital Markets: A Review of Theory and Empirical Work," The Journal of Finance, v. 25 (2), pp. 383-417.,
- ^ a b Griffioen, Technical Analysis in Financial Markets
- ^ Taylor, Mark P., and Helen Allen (1992). "The Use of Technical Analysis in the Foreign Exchange Market," Journal of International Money and Finance, 11(3), 304–314.
- ^ Cross, Sam Y. (1998). All About the Foreign Exchange Market in the United States, Federal Reserve Bank of New York chapter 11, pp. 113-115.
- ^ Brock,
William, Josef Lakonishok and Blake Lebaron (1992). "Simple Technical
Trading Rules and the Stochastic Properties of Stock Returns," The Journal of Finance, 47(5), pp. 1731–1764.
- ^ a b
Osler, Karen (July 2000). "Support for Resistance: Technical Analysis
and Intraday Exchange Rates," FRBNY Economic Policy Review (abstract and paper here).
- ^ Neely, Christopher J., and Paul A. Weller (2001). "Technical analysis and Central Bank Intervention," Journal of International Money and Finance, 20 (7), 949–70 (abstract and paper here)
- ^ Taylor, M.P.; Allen, H. (1992). "The use of technical analysis in the foreign exchange market". Journal of International Money and Finance 11 (3): 304-314. Retrieved on 2008-03-29.
- ^ Frankel, J.A.; Froot, K.A. (1990). "Chartists, Fundamentalists, and Trading in the Foreign Exchange Market". The American Economic Review 80 (2): 181-185. Retrieved on 2008-03-29.
- ^ Neely, C.J. (1998). "Technical Analysis and the Profitability of US Foreign Exchange Intervention". Federal Reserve Bank of St. Louis Review 80 (4): 3-17. Retrieved on 2008-03-29.
- ^ Burton Malkiel, A Random Walk Down Wall Street pp. 118, 139, 165
- ^ a b c John J. Murphy, Technical Analysis of the Financial Markets (New York Institute of Finance, 1999), pages 1-5,24-31.
- ^ Nison, Steve (1991). Japanese Candlestick Charting Techniques, 15 -18.
- ^ Nison, Steve (1994). Beyond Candlesticks: New Japanese Charting Techniques Revealed, John Wiley and Sons, p. 14. ISBN 047100720X
- ^ Hill, Arthur. Dow Theory. Retrieved on 2006-04-23.
- ^ David M. Cutler, James M. Poterba, Lawrence H. Summers, "What Moves Stock Prices?", NBER Working Paper #2538 (March 1988), pp 13-14.
- ^ a b Kahn, Michael N. (2006). Technical Analysis Plain and Simple: Charting the Markets in Your Language, Financial Times Press, Upper Saddle River, New Jersey, p. 80. ISBN 0131345974.
- ^ Browning, E.S.. "Reading market tea leaves", The Wall Street Journal Europe, Dow Jones, July 31, 2007, pp. 17-18.
- ^ Skabar, Cloete, Networks, Financial Trading and the Efficient Markets Hypothesis
- ^ Cheol-Ho Park and Scott H. Irwin, What Do We Know about the Profitability of Technical Analysis? (March 2006).
- ^ Sullivan, R.; Timmermann, A.; White, H. (1999). "Data-Snooping, Technical Trading Rule Performance, and the Bootstrap". The Journal of Finance 54 (5): 1647-1691. doi:10.1111/0022-1082.00163.
- ^ Chan, L.K.C.; Jegadeesh, N.; Lakonishok, J. (1996). "Momentum Strategies". The Journal of Finance 51 (5): 1681-1713. Retrieved on 2008-03-29.
- ^
Lo, Andrew W., Harry Mamaysky and Jiang Wang (2000). "Foundations of
Technical Analysis: Computational Algorithms, Statistical Inference,
and Empirical Implementation," Journal of Finance, v. 55 (abstract and paper here), pp. 1705-1765.
- ^ Eugene Fama, "Efficient Capital Markets: A Review of Theory and Empirical Work," The Journal of Finance, volume 25, issue 2 (May 1970), pp. 383-417.
- ^ a b c Aronson, David R. (2006). Evidence-Based Technical Analysis, Hoboken, New Jersey: John Wiley and Sons, pages 357, 355-356, 342. ISBN 978-0-470-00874-4.
- ^
Prechter, Robert R., Jr., and Wayne D. Parker (2007). "The
Financial/Economic Dichotomy in Social Behavioral Dynamics: The
Socionomic Perspective," Journal of Behavioral Finance, vol. 8 no. 2 (abstract here), pp. 84-108.
- ^ a b Clarke, J., T. Jandik, and Gershon Mandelker (2001). “The efficient markets hypothesis,” Expert Financial Planning: Advice from Industry Leaders, ed. R. Arffa, 126-141. New York: Wiley & Sons.
- ^ Burton Malkiel, A Random Walk Down Wall Street, W. W. Norton & Company (April 2003) p. 168.
- ^ Lo, Andrew and MacKinlay, Craig, A Non-Random Walk Down Wall Street, Princeton University Press (1999)
- ^ Poser, Steven W. (2003). Applying Elliott Wave Theory Profitably, John Wiley and Sons, p. 71. ISBN 0471420077.
- ^ K. Funahashi, On the approximate realization of continuous mappings by neural networks, Neural Networks vol 2, 1989
- ^ K. Hornik, Multilayer feed-forward networks are universal approximators, Neural Networks, vol 2, 1989
- ^ R. Lawrence. Using Neural Networks to Forecast Stock Market Prices
- ^ B.Egeli et al. Stock Market Prediction Using Artificial Neural Networks
- ^ M. Zekić. Neural Network Applications in Stock Market Predictions - A Methodology Analysis
See also
External links
This article is licensed under the GNU Free Documentation License. It uses material from Wikipedia Encyclopedia article "Technical Analysis"
|