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Date: Sun, 6 Jan 2008 15:01:53 -0500
Subject: [MT_E and I] GBP/USD, 1/5/08, 5MINUTE  long based on RPD and CPD; 30 MINUTE also RPD and CPD
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Two time frames, 5 and 30 minute are attached for the Cable.  

 

For those few  who are traders and actually interested in TA and the
progress of the Cable or any pair for that matter, these two charts are most
interesting and informative with respect to trend change in these periods.
The analysis below is applicable to longer time frames which I ignore in
terms of trades based on those longer periods.  I have selected either the 5
or 15 and the 30 or 60 minute periods.  As a conservative trader I refuse to
accept massive DDs and therefore prefer the shorter periods for lower
exposure.  

 

In these examples I use the 5 and 30minute periods.  It is absolutely
mandatory that the trader consider/analyze the time period at least 4 to 6
times greater than the period traded.  In this example trades are based on
the 5 minute period and are confirmed or not by the 30 minute.  The
confirmation process is based on objective facts/events which establish the
propriety or lack thereof  for a trade.

 

Examination of the weekly and daily periods show the Cable in a down cycle.
Weekly AO and AC are both below zero and red declining values.  Daily AO is
below zero, latest bar red.  AC is above zero, last two bars red with
declining highs.  Any trades opposite the down cycle are higher risk and
require proof for entry long in the 5 and 30 periods.

 

5 MINUTE PERIOD;

 

This is the most important period since the contemplated trade is based
primarily on facts/findings in  this period.

 

Two Fibonacci retracement studies and one Fibonacci expansion study is used
in the period.  

 

The first study from point 0 to 3 high measures the strength of the up
cycle.  The most recent fractal low at 4 c reports HA candle close below
76.3.  At this time it is the apparent low and suggests the prior up cycle
was very weak and likely to fail (meaning that price is not likely to close
above  3 high).  This finding is wholly consistent with the longer term down
cycle referred to previously, namely the last up cycle is shown to be very
weak.

 

Fibonacci studies are objective assuming the study is placed on the chart
correctly.  However the result of that study (in this instance a weak up
cycle) is not always reliable with respect to its predictive function.  Most
of the time these studies are reliable and faithfully trace the progress of
a cycle.   Other objective findings later mentioned/studied suggest this
retracement analysis predictive function is not reliable which is important
in terms of later highs and trend change in the period.

 

The second Fibonacci study from point 3 high to 4 c low will measure the
strength of the active/current down cycle going forward.  This study is
underway at present with the last HA candle closing below 23.6.  Thus far
higher fractal lows (support) has occurred.   Importantly 4c fractal low is
higher than fractal low at point 0 and marks a RPD and CPD referred to
later.   It is not clear that 4c is in fact the lowest low of this down
cycle.  When a higher fractal low is recognized the trader will feel more
comfortable in defining point 0 as the correct low of this study.  There are
other objective findings which currently suggest 4c as the correct most
recent low which will be mentioned later.

 

The third Fibonacci expansion study from point 0 to 1 places FE higher
levels on the chart.  The purpose of the study is an effort to understanding
the likely high of the  up cycle in this period.  The last high of this
projected up cycle is at point 3 with HA candle close above FE 61.8.   The
anticipate ultimate high is FE 1.382 or FE 1.618 (1.9945).  There may be
resistance at FE 1.382 between 1.9901 and 1.9913 where two differently
constructed Fibonacci studies (circled in red) cluster.  More about the
importance of this expansion study later.

 

A/D and AO indicators trace a historical CND between the highs at 1 and 3.
Price has subsequently fallen to 4c low.   Currently these indicators trace
both a RPD and CPD as marked on the chart.  The CPD between the a and c
lows.  The RPD is one which is only found in an existing up cycle and is
more reliable than classic divergence.  The combination of these two
different objective active divergences suggest a trend change has occurred
in this 5 minute period.  

 

As mentioned above the first Fibonacci period suggested the up cycle was
weak and likely to fail.  It is easier for 5, 10 or 15 minute traders to
force price lower consistent with the longer term down cycle observed in the
weekly and daily periods.  "Irrational exuberance" to the down side is
observed in this 5 minute period and they have overextended themselves.
However longer term 30 and/or 60 minute or longer traders have stopped the
decline and have caused the aforementioned CPD and RPD.  These active
divergences are objective evidence of that over extension and suggests that
the trend in the 5 minute period has changed.

 

AO is presently above zero, a requirement along with the two different
divergences, for a long condition in the period.  Support and S/L for such a
trade is the 4c or point 0 fractal low as shown in the trade and chart
record.

 

AC is also above zero with increasing values.  As the new up cycle
progresses  AC will fall below zero then rise above zero at which time new
entries may be considered.

 

The second and equally important feature of any trade is "closure".
Fibonacci expansion study mentioned above offers an objective method for
determining TP/closure levels.  It is reasonable to anticipate price will
reach the cluster level (1.9913), resistance,  at which time the trader may
wish to close some or all positions.  The trader will also be interested in
future CND for closure as the up cycle unfolds.

 

In summary this period suggests a proper long trade with support below point
0 or 4 c, TP near FE 1.382.  This trade must be confirmed in the next
larger, 6 times greater 30 minute time frame.

 

30 MINUTE PERIOD:

 

New Fibonacci retracement study for this period from the price high to low
will measure the strength of the unfolding up cycle.  The latest bar is
below 23.6 and is expected to move higher consistent with trend change
observed in the 5 minute period.  There are two red circled levels (61.8 and
76.3) which cluster with a different Fibonacci study later mentioned.  These
are levels at which resistance is expected.  Most retracements occur between
38.2 and 61.8 and deserve respect.

 

Fibonacci expansion study begins at price low to next high which generates
FE levels two of which deserve attention with respect to projected high as
previously stated.

 

The next and new study LRC lines are important with respect to trend issues.
The study begins at price high and ends with the latest bar.  Only the upper
and middle LRC lines are visible on this chart.  The middle line is
correctly described as the "standard deviation line" and is important
regarding trend.  Manually this study is redrawn every few hours.  An EA
would redraw every 30 minutes.

 

In a down cycle fractal lows trace below the SDL as shown in the chart.
Occasionally  fractal highs above the SDC line occur while AO is below zero
and are points at which new shorts may occur.  

 

In an up cycle fractal lows trace above the SDC line.   The three latest
fractal lows although each are lower they are nevertheless all above the SDC
line.  The last fractal low coincides with a second CPD as marked on the
chart and will be discussed later.  The fractal lows above the SDC line
suggests an existing up cycle and offers confirmation of the RPD marked in
the 5 minute period.  Again RPDs may only occur in an existing established
up cycle and are therefore the most reliable/trustworthy divergence.  The
documentation of RPD, CPD and fractal lows above the SDC line is important
regarding trend change issue and absolutely must be present to permit a
trade opposite the longer term trend.  Violation of this fundamental
combined rule is an invitation to a failed trade.

 

DIVERGENCE RECORD IN THE 30:

 

Historical RNDs and CND are traced in this period.  They accurately
predicted future price action.  AO (not A/D) traces two important RNDs in
the down trend as marked on the chart.  The last historical RND was also
joined by a CND traced by AO.  This last CND is the first warning of a
probable trend change in this period.  Previously the 5, 10 and 15 minute
traders were able to force lower fractal highs and lows.  Subsequently
longer term traders have caused higher fractal lows above the SDC line a
sign that trend has changed.

 

A/D and AO agree in tracing active CPDs marked on the chart.  There is also
a RPD marked however this the same RPD observed in the 5 minute period and
is so noted.

 

AO and AC INDICATORS:

 

AO is below zero with declining values.  AC is a faster version of AO and is
below zero with increasing values, last bar green.  This finding suggests AO
will change to green with increasing values also.   

 

AO and AC are useful in divergence recognition.  AC is helpful in add to
position issues.

 

A/D INDICATOR:

 

Its construction is different than AO and AC and thus avoids the rule
against multicollinerarity of indicators.  A/D though differently
constructed agrees in most instances with divergences traced by AO or AC
though not always.  Divergences traced by any of these indicators are worthy
of consideration even though unconfirmed by other indicators.  

 

Divergences and location of fractal lows with respect to the SDC line in the
larger time frame is important.

 

Comments:

 

Use of two times frames, divergences and fractal lows with respect to the
SDC line accurately guides a trader in trades which are higher risk as
demonstrated in these examples.  The long trades described here will likely
occur in the 30 minute period however the trades may extend to the 60 minute
or longer periods.  It is noted that the 60 minute period shows its latest
fractal low above the SDC line accordingly the longer period is involved in
the ultimate high in this retracement against the longer term down cycle.
All previous fractal lows in the 60 were below the SDC line.

 

No reference has been made to EW count in this analysis.  None of the
numbers or letters in the 5 minute refer to EW position.  They are use for
ID purpose only.

 

Loren

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

`


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            <p>





<div class="Section1">

<p class="MsoNormal">Two time frames, 5 and 30 minute are attached for the
Cable.&nbsp; <o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">For those few &nbsp;who are traders and actually interested
in TA and the progress of the Cable or any pair for that matter, these two
charts are most interesting and informative with respect to trend change in
these periods.&nbsp; The analysis below is applicable to longer time frames
which I ignore in terms of trades based on those longer periods.&nbsp; I have
selected either the 5 or 15 and the 30 or 60 minute periods.&nbsp; As a
conservative trader I refuse to accept massive DDs and therefore prefer the
shorter periods for lower exposure.&nbsp; <o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">In these examples I use the 5 and 30minute periods.&nbsp; It
is absolutely mandatory that the trader consider/analyze the time period at
least 4 to 6 times greater than the period traded.&nbsp; In this example trades
are based on the 5 minute period and are confirmed or not by the 30
minute.&nbsp; The confirmation process is based on objective facts/events which
establish the propriety or lack thereof&nbsp; for a trade.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">Examination of the weekly and daily periods show the Cable
in a down cycle.&nbsp; Weekly AO and AC are both below zero and red declining
values.&nbsp; Daily AO is below zero, latest bar red.&nbsp; AC is above zero,
last two bars red with declining highs.&nbsp; Any trades opposite the down
cycle are higher risk and require proof for entry long in the 5 and 30 periods.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">5 MINUTE PERIOD;<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">This is the most important period since the contemplated
trade is based primarily on facts/findings in&nbsp; this period.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">Two Fibonacci retracement studies and one Fibonacci
expansion study is used in the period.&nbsp; <o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">The first study from point 0 to 3 high measures the strength
of the up cycle.&nbsp; The most recent fractal low at 4 c reports HA candle
close below 76.3.&nbsp; At this time it is the apparent low and suggests the
prior up cycle was very weak and likely to fail (meaning that price is not
likely to close above&nbsp; 3 high).&nbsp; This finding is wholly consistent
with the longer term down cycle referred to previously, namely the last up
cycle is shown to be very weak.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">Fibonacci studies are objective assuming the study is placed
on the chart correctly.&nbsp; However the result of that study (in this
instance a weak up cycle) is not always reliable with respect to its predictive
function.&nbsp; Most of the time these studies are reliable and faithfully
trace the progress of a cycle.&nbsp;&nbsp; Other objective findings later
mentioned/studied suggest this retracement analysis predictive function is not
reliable which is important in terms of later highs and trend change in the
period.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">The second Fibonacci study from point 3 high to 4 c low will
measure the strength of the active/current down cycle going forward.&nbsp; This
study is underway at present with the last HA candle closing below 23.6.&nbsp; Thus
far &nbsp;higher fractal lows (support) has occurred. &nbsp;&nbsp;Importantly
4c fractal low is higher than fractal low at point 0 and marks a RPD and CPD referred
to later.&nbsp; &nbsp;It is not clear that 4c is in fact the lowest low of this
down cycle.&nbsp; When a higher fractal low is recognized the trader will feel
more comfortable in defining point 0 as the correct low of this study.&nbsp;
There are other objective findings which currently suggest 4c as the correct most
recent low which will be mentioned later.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">The third Fibonacci expansion study from point 0 to 1 places
FE higher levels on the chart.&nbsp; The purpose of the study is an effort to understanding
the likely high of the &nbsp;up cycle in this period.&nbsp; The last high of
this projected up cycle is at point 3 with HA candle close above FE 61.8.&nbsp;
&nbsp;The anticipate ultimate high is FE 1.382 or FE 1.618 (1.9945).&nbsp; There
may be resistance at FE 1.382 between 1.9901 and 1.9913 where two differently
constructed Fibonacci studies (circled in red) cluster.&nbsp; More about the
importance of this expansion study later.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">A/D and AO indicators trace a historical CND between the
highs at 1 and 3.&nbsp; Price has subsequently fallen to 4c low.&nbsp; &nbsp;Currently
these indicators trace both a RPD and CPD as marked on the chart.&nbsp; The CPD
between the a and c lows.&nbsp; The RPD is one which is only found in an
existing up cycle and is more reliable than classic divergence.&nbsp; The
combination of these two different objective active divergences suggest a trend
change has occurred in this 5 minute period.&nbsp; <o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">As mentioned above the first Fibonacci period suggested the
up cycle was weak and likely to fail.&nbsp; It is easier for 5, 10 or 15 minute
traders to force price lower consistent with the longer term down cycle
observed in the weekly and daily periods.&nbsp; &#8220;Irrational exuberance&#8221;
to the down side is observed in this 5 minute period and they have overextended
themselves.&nbsp; However longer term 30 and/or 60 minute or longer traders
have stopped the decline and have caused the aforementioned CPD and RPD.&nbsp; These
active divergences are objective evidence of that over extension and suggests
that the trend in the 5 minute period has changed.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">AO is presently above zero, a requirement along with the two
different divergences, for a long condition in the period.&nbsp; Support and
S/L for such a trade is the 4c or point 0 fractal low as shown in the trade and
chart record.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">AC is also above zero with increasing values.&nbsp; As the
new up cycle progresses &nbsp;AC will fall below zero then rise above zero at
which time new entries may be considered.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">The second and equally important feature of any trade is &#8220;closure&#8221;.&nbsp;&nbsp;
Fibonacci expansion study mentioned above offers an objective method for
determining TP/closure levels.&nbsp; It is reasonable to anticipate price will
reach the cluster level (1.9913), resistance, &nbsp;at which time the trader
may wish to close some or all positions.&nbsp; The trader will also be
interested in future CND for closure as the up cycle unfolds.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">In summary this period suggests a proper long trade with
support below point 0 or 4 c, TP near FE 1.382.&nbsp; This trade must be
confirmed in the next larger, 6 times greater 30 minute time frame.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">30 MINUTE PERIOD:<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">New Fibonacci retracement study for this period from the
price high to low will measure the strength of the unfolding up cycle.&nbsp; The
latest bar is below 23.6 and is expected to move higher consistent with trend
change observed in the 5 minute period.&nbsp; There are two red circled levels (61.8
and 76.3) which cluster with a different Fibonacci study later mentioned.&nbsp;
These are levels at which resistance is expected.&nbsp; Most retracements occur
between 38.2 and 61.8 and deserve respect.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">Fibonacci expansion study begins at price low to next high which
generates FE levels two of which deserve attention with respect to projected
high as previously stated.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">The next and new study LRC lines are important with respect
to trend issues.&nbsp; The study begins at price high and ends with the latest
bar.&nbsp; Only the upper and middle LRC lines are visible on this chart.&nbsp;
The middle line is correctly described as the &#8220;standard deviation line&#8221;
and is important regarding trend.&nbsp; Manually this study is redrawn every few
hours.&nbsp; An EA would redraw every 30 minutes.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">In a down cycle fractal lows trace below the SDL as shown in
the chart.&nbsp; &nbsp;&nbsp;Occasionally &nbsp;fractal highs above the SDC
line occur while AO is below zero and are points at which new shorts may occur.&nbsp;
<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">In an up cycle fractal lows trace above the SDC line. &nbsp;&nbsp;The
three latest fractal lows although each are lower they are nevertheless all
above the SDC line.&nbsp; The last fractal low coincides with a second CPD as marked
on the chart and will be discussed later.&nbsp; The fractal lows above the SDC
line suggests an existing up cycle and offers confirmation of the RPD marked in
the 5 minute period.&nbsp; Again RPDs may only occur in an existing established
up cycle and are therefore the most reliable/trustworth<wbr>y divergence.&nbsp; The documentation
of RPD, CPD and fractal lows above the SDC line is important regarding trend
change issue and absolutely must be present to permit a trade opposite the
longer term trend.&nbsp; Violation of this fundamental combined rule is an
invitation to a failed trade.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">DIVERGENCE RECORD IN THE 30:<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">Historical RNDs and CND are traced in this period.&nbsp;
They accurately predicted future price action.&nbsp; AO (not A/D) traces two
important RNDs in the down trend as marked on the chart.&nbsp; The last
historical RND was also joined by a CND traced by AO.&nbsp; This last CND is
the first warning of a probable trend change in this period.&nbsp; Previously
the 5, 10 and 15 minute traders were able to force lower fractal highs and
lows.&nbsp; Subsequently longer term traders have caused higher fractal lows above
the SDC line a sign that trend has changed.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">A/D and AO agree in tracing active CPDs marked on the
chart.&nbsp; There is also a RPD marked however this the same RPD observed in
the 5 minute period and is so noted.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">AO and AC INDICATORS:<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">AO is below zero with declining values.&nbsp; AC is a faster
version of AO and is below zero with increasing values, last bar green.&nbsp; This
finding suggests AO will change to green with increasing values also.&nbsp; &nbsp;<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">AO and AC are useful in divergence recognition.&nbsp; AC is
helpful in add to position issues.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">A/D INDICATOR:<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">Its construction is different than AO and AC and thus avoids
the rule against multicollinerarity of indicators.&nbsp; A/D though differently
constructed agrees in most instances with divergences traced by AO or AC though
not always.&nbsp; Divergences traced by any of these indicators are worthy of
consideration even though unconfirmed by other indicators.&nbsp; <o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">Divergences and location of fractal lows with respect to the
SDC line in the larger time frame is important.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">Comments:<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">Use of two times frames, divergences and fractal lows with
respect to the SDC line accurately guides a trader in trades which are higher
risk as demonstrated in these examples.&nbsp; The long trades described here
will likely occur in the 30 minute period however the trades may extend to the
60 minute or longer periods.&nbsp; It is noted that the 60 minute period shows its
latest fractal low above the SDC line accordingly the longer period is involved
in the ultimate high in this retracement against the longer term down cycle.&nbsp;
All previous fractal lows in the 60 were below the SDC line.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">No reference has been made to EW count in this analysis.&nbsp;
None of the numbers or letters in the 5 minute refer to EW position.&nbsp; They
are use for ID purpose only.<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">Loren<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

<p class="MsoNormal">&nbsp;<o></o></p>

<p class="MsoNormal"><o>&nbsp;</o></p>

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