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MAILFOOT
MAILFOOT
NAME
SYNOPSIS
DESCRIPTION
EXIT STATUS
COMMANDS
USAGE
SCRIPT INTERFACE
ENVIRONMENT
NOTES
WARNING
SOURCE
AUTHOR
SEE ALSO
NAME
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mailfoot − a full-online-ordered-training simulator
for use with dbacl.
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SYNOPSIS
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mailfoot command [ command_arguments
]
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DESCRIPTION
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mailfoot automates the task of testing email
filtering and classification programs such as
dbacl(1). Given a set of categorized documents,
mailfoot initiates test runs to estimate the classification
errors and thereby permit fine tuning of the parameters of
the classifier.
Full Online Ordered Training is a learning method for
email classifiers where each incoming email is learned as
soon as it arrives, thereby always keeping category
descriptions up to date for the next classification. This
directly models the way that some email classifiers are used
in practice.
FOOT’s error rates depend directly on the order in
which emails are seen. A small change in ordering, as might
happen due to networking delays, can have an impact on the
number of misclassifications. Consequently, mailfoot
does not give meaningful results, unless the sample emails
are chosen carefully. However, as this method is commonly
used by spam filters, it is still worth computing to foster
comparisons. Other methods (see
mailcross(1),mailtoe(1)) attempt to capture
the behaviour of classification errors in other ways.
To improve and stabilize the error rate calculation,
mailfoot performs the FOOT simulations several times
on slightly reordered email streams, and averages the
results. The reorderings occur by multiplexing the emails
from each category mailbox in random order. Thus if there
are three categories, the first email classified is chosen
randomly from the front of the sample email streams of each
type. The second email is also chosen randomly among the
three types, from the front of the streams after the first
email was removed. Simulation stops when all sample streams
are exhausted.
mailfoot uses the environment variable
MAILFOOT_FILTER when executing, which permits the simulation
of arbitrary filters, provided these satisfy the
compatibility conditions stated in the ENVIRONMENT section
below.
For convenience, mailfoot implements a
testsuite framework with predefined wrappers for
several open source classifiers. This permits the direct
comparison of dbacl(1) with competing classifiers on
the same set of email samples. See the USAGE section
below.
During preparation, mailfoot builds a subdirectory
named mailfoot.d in the current working directory. All
needed calculations are performed inside this
subdirectory.
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EXIT STATUS
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mailfoot returns 0 on success, 1 if a problem
occurred.
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COMMANDS
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Prepares a subdirectory named mailfoot.d in the current
working directory, and populates it with empty
subdirectories for exactly size subsets.
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Takes a set of emails from either FILE if specified, or
STDIN, and associates them with category. The
ordering of emails within FILE is preserved, and
subsequent FILEs are appended to the first in each
category. This command can be repeated several times, but
should be executed at least once.
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clean
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Deletes the directory mailfoot.d and all its
contents.
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run
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Multiplexes randomly from the email streams added
earlier, and relearns categories only when a
misclassification occurs. The simulation is repeated
size times.
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Prints average error rates for the simulations.
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plot [ ps | logscale ]... |
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Plots the number of errors over simulation time. The
"ps" option, if present, writes the plot to a
postscript file in the directory mailfoot/plots, instead of
being shown on-screen. The "logscale" option, if
present, causes the plot to be on the log scale for both
ordinates.
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Scans the last run statistics and extracts all the
messages which belong to category truecat but have
been classified into category predcat. The extracted
messages are copied to the directory
mailfoot.d/review for perusal.
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Shows a list of available filters/wrapper scripts which
can be selected.
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testsuite select [ FILTER ]... |
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Prepares the filter(s) named FILTER to be used for
simulation. The filter name is the name of a wrapper script
located in the directory @PKGDATADIR@/testsuite. Each
filter has a rigid interface documented below, and the act
of selecting it copies it to the mailfoot.d/filters
directory. Only filters located there are used in the
simulations.
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testsuite deselect [ FILTER ]... |
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Removes the named filter(s) from the directory
mailfoot.d/filters so that they are not used in the
simulation.
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Invokes every selected filter on the datasets added
previously, and calculates misclassification rates. If the
"plots" option is present, each filter simulation
is plotted as a postscript file in the directory
mailfoot.d/plots.
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Describes the scheduled simulations.
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Shows the cross validation results for all filters. Only
makes sense after the run command.
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USAGE
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The normal usage pattern is the following: first, you
should separate your email collection into several
categories (manually or otherwise). Each category should be
associated with one or more folders, but each folder should
not contain more than one category. Next, you should decide
how many runs to use, say 10. The more runs you use, the
better the predicted error rates. However, more runs take
more time. Now you can type
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Next, for every category, you must add every folder
associated with this category. Suppose you have three
categories named spam, work, and play,
which are associated with the mbox files spam.mbox,
work.mbox, and play.mbox respectively. You
would type
% mailfoot add spam spam.mbox
% mailfoot add work work.mbox
% mailfoot add play play.mbox
You should aim for a similar number of emails in each
category, as the random multiplexing will be unbalanced
otherwise. The ordering of the email messages in each
*.mbox file is important, and is preserved during
each simulation. If you repeatedly add to the same category,
the later mailboxes will be appended to the first,
preserving the implied ordering.
You can now perform as many FOOT simulations as desired.
The multiplexed emails are classified and learned one at a
time, by executing the command given in the environment
variable MAILFOOT_FILTER. If not set, a default value is
used.
% mailfoot run
% mailfoot summarize
The testsuite commands are designed to simplify the above
steps and allow comparison of a wide range of email
classifiers, including but not limited to dbacl.
Classifiers are supported through wrapper scripts, which are
located in the @PKGDATADIR@/testsuite directory.
The first stage when using the testsuite is deciding
which classifiers to compare. You can view a list of
available wrappers by typing:
% mailfoot testsuite list
Note that the wrapper scripts are NOT the actual email
classifiers, which must be installed separately by your
system administrator or otherwise. Once this is done, you
can select one or more wrappers for the simulation by
typing, for example:
% mailfoot testsuite select dbaclA ifile
If some of the selected classifiers cannot be found on
the system, they are not selected. Note also that some
wrappers can have hard-coded category names, e.g. if the
classifier only supports binary classification. Heed the
warning messages.
It remains only to run the simulation. Beware, this can
take a long time (several hours depending on the
classifier).
% mailfoot testsuite run
% mailfoot testsuite summarize
Once you are all done, you can delete the working files,
log files etc. by typing
% mailfoot clean
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SCRIPT INTERFACE
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mailfoot testsuite takes care of learning and
classifying your prepared email corpora for each selected
classifier. Since classifiers have widely varying
interfaces, this is only possible by wrapping those
interfaces individually into a standard form which can be
used by mailfoot testsuite.
Each wrapper script is a command line tool which accepts
a single command followed by zero or more optional
arguments, in the standard form:
wrapper command [argument]...
Each wrapper script also makes use of STDIN and STDOUT in
a well defined way. If no behaviour is described, then no
output or input should be used. The possible commands are
described below:
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filter
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In this case, a single email is expected on STDIN, and a
list of category filenames is expected in $2, $3, etc. The
script writes the category name corresponding to the input
email on STDOUT. No trailing newline is required or
expected.
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learn
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In this case, a standard mbox stream is expected on
STDIN, while a suitable category file name is expected in
$2. No output is written to STDOUT.
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clean
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In this case, a directory is expected in $2, which is
examined for old database information. If any old databases
are found, they are purged or reset. No output is written to
STDOUT.
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IN this case, a single line of text is written to STDOUT,
describing the filter’s functionality. The line should
be kept short to prevent line wrapping on a terminal.
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In this case, a directory is expected in $2. The wrapper
script first checks for the existence of its associated
classifier, and other prerequisites. If the check is
successful, then the wrapper is cloned into the supplied
directory. A courtesy notification should be given on STDOUT
to express success or failure. It is also permissible to
give longer descriptions caveats.
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toe
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Used by mailtoe(1).
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foot
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In this case, a list of categories is expected in $3,
$4, etc. Every possible category must be listed. Preceding
this list, the true category is given in $2.
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ENVIRONMENT
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Right after loading, mailfoot reads the hidden
file .mailfootrc in the $HOME directory, if it exists, so
this would be a good place to define custom values for
environment variables.
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This variable contains a shell command to be executed
repeatedly during the running stage. The command should
accept an email message on STDIN and output a resulting
category name. On the command line, it should also accept
first the true category name, then a list of all possible
category file names. If the output category does not match
the true category, then the relevant categories are assumed
to have been silently updated/relearned. If MAILFOOT_FILTER
is undefined, mailfoot uses a default value.
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This directory is exported for the benefit of wrapper
scripts. Scripts which need to create temporary files should
place them a the location given in TEMPDIR.
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NOTES
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The subdirectory mailfoot.d can grow quite large. It
contains a full copy of the training corpora, as well as
learning files for size times all the added
categories, and various log files.
FOOT simulations for dbacl(1) are very, very slow
(order n squared) and will take all night to perform. This
is not easy to improve.
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WARNING
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Because the ordering of emails within the added mailboxes
matters, the estimated error rates are not well defined or
even meaningful in an objective sense. However, if the
sample emails represent an actual snapshot of a user’s
incoming email, then the error rates are somewhat
meaningful. The simulations can then be interpreted as
alternate realities where a given classifier would have
intercepted the incoming mail.
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SOURCE
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The source code for the latest version of this program is
available at the following locations:
http://www.lbreyer.com/gpl.html
http://dbacl.sourceforge.net
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AUTHOR
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Laird A. Breyer <laird@lbreyer.com>
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SEE ALSO
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bayesol(1) dbacl(1), mailcross(1),
mailinspect(1), mailtoe(1),
regex(7)
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