EnglishFrenchSpanish

OnWorks favicon

timbl - Online in the Cloud

Run timbl in OnWorks free hosting provider over Ubuntu Online, Fedora Online, Windows online emulator or MAC OS online emulator

This is the command timbl that can be run in the OnWorks free hosting provider using one of our multiple free online workstations such as Ubuntu Online, Fedora Online, Windows online emulator or MAC OS online emulator

PROGRAM:

NAME


timbl - Tilburg Memory Based Learner

SYNOPSYS


timbl [options]

timbl -f data-file -t test-file

DESCRIPTION


TiMBL is an open source software package implementing several memory-based learning
algorithms, among which IB1-IG, an implementation of k-nearest neighbor classification
with feature weighting suitable for symbolic feature spaces, and IGTree, a decision-tree
approximation of IB1-IG. All implemented algorithms have in common that they store some
representation of the training set explicitly in memory. During testing, new cases are
classified by extrapolation from the most similar stored cases.

OPTIONS


-a <n> or -a <string>
determines the classification algorithm.

Possible values are:

0 or IB
the IB1 (k-NN) algorithm (default)

1 or IGTREE
a decision-tree-based approximation of IB1

2 or TRIBL
a hybrid of IB1 and IGTREE

3 or IB2
an incremental editing version of IB1

4 or TRIBL2
a non-parameteric version of TRIBL

-b n
number of lines used for bootstrapping (IB2 only)

-B n
number of bins used for discretization of numeric feature values

--Beam=<n>
limit +v db output to n highest-vote classes

--clones=<n>
number f threads to use for parallel testing

-c n
clipping frequency for prestoring MVDM matrices

+D
store distributions on all nodes (necessary for using +v db with IGTree, but wastes
memory otherwise)

--Diversify
rescale weight (see docs)

-d val
weigh neighbors as function of their distance:
Z : equal weights to all (default)
ID : Inverse Distance
IL : Inverse Linear
ED:a : Exponential Decay with factor a (no whitespace!)
ED:a:b : Exponential Decay with factor a and b (no whitespace!)

-e n
estimate time until n patterns tested

-f file
read from data file 'file' OR use filenames from 'file' for cross validation test

-F format
assume the specified input format (Compact, C4.5, ARFF, Columns, Binary, Sparse )

-G normalization

normalize distibutions (+v db option only)

Supported normalizations are:

Probability or 0

normalize between 0 and 1

addFactor:<f> or 1:<f>

add f to all possible targets, then normalize between 0 and 1 (default f=1.0).

logProbability or 2

Add 1 to the target Weight, take the 10Log and then normalize between 0 and 1

+H or -H
write hashed trees (default +H)

-i file
read the InstanceBase from 'file' (skips phase 1 & 2 )

-I file
dump the InstanceBase in 'file'

-k n
search 'n' nearest neighbors (default n = 1)

-L n
set value frequency threshold to back off from MVDM to Overlap at level n

-l n
fixed feature value length (Compact format only)

-m string
use feature metrics as specified in' string':
The format is : GlobalMetric:MetricRange:MetricRange
e.g.: mO:N3:I2,5-7

C: cosine distance. (Global only. numeric features implied)
D: dot product. (Global only. numeric features implied)
DC: Dice coefficient
O: weighted overlap (default)
E: Euclidian distance
L: Levenshtein distance
M: modified value difference
J: Jeffrey divergence
S: Jensen-Shannon divergence
N: numeric values
I: Ignore named values

--matrixin=file
read ValueDifference Matrices from file 'file'

--matrixout=file
store ValueDifference Matrices in 'file'

-n file
create a C4.5-style names file 'file'

-M n
size of MaxBests Array

-N n
number of features (default 2500)

-o s
use s as output filename

--occurences=<value>
The input file contains occurrence counts (at the last position) value can be one
of: train , test or both

-O path
save output using 'path'

-p n
show progress every n lines (default p = 100,000)

-P path
read data using 'path'

-q n
set TRIBL threshold at level n

-R n
solve ties at random with seed n

-s
use the exemplar weights from the input file

-s0
ignore the exemplar weights from the input file

-T n
use feature n as the class label. (default: the last feature)

-t file
test using 'file'

-t leave_one_out
test with the leave-one-out testing regimen (IB1 only). you may add --sloppy to
speed up leave-one-out testing (but see docs)

-t cross_validate
perform cross-validation test (IB1 only)

-t @file
test using files and options described in 'file' Supported options: d e F k m o p q
R t u v w x % -

--Treeorder =value n
ordering of the Tree:
DO: none
GRO: using GainRatio
IGO: using InformationGain
1/V: using 1/# of Values
G/V: using GainRatio/# of Valuess
I/V: using InfoGain/# of Valuess
X2O: using X-square
X/V: using X-square/# of Values
SVO: using Shared Variance
S/V: using Shared Variance/# of Values
GxE: using GainRatio * SplitInfo
IxE: using InformationGain * SplitInfo
1/S: using 1/SplitInfo

-u file
read value-class probabilities from 'file'

-U file
save value-class probabilities in 'file'

-V
Show VERSION

+v level or -v level
set or unset verbosity level, where level is:

s: work silently
o: show all options set
b: show node/branch count and branching factor
f: show calculated feature weights (default)
p: show value difference matrices
e: show exact matches
as: show advanced statistics (memory consuming)
cm: show confusion matrix (implies +vas)
cs: show per-class statistics (implies +vas)
cf: add confidence to output file (needs -G)
di: add distance to output file
db: add distribution of best matched to output file
md: add matching depth to output file.
k: add a summary for all k neigbors to output file (sets -x)
n: add nearest neigbors to output file (sets -x)

You may combine levels using '+' e.g. +v p+db or -v o+di

-w n
weighting
0 or nw: no weighting
1 or gr: weigh using gain ratio (default)
2 or ig: weigh using information gain
3 or x2: weigh using the chi-square statistic
4 or sv: weigh using the shared variance statistic
5 or sd: weigh using standard deviation. (all features must be numeric)

-w file
read weights from 'file'

-w file:n
read weight n from 'file'

-W file
calculate and save all weights in 'file'

+% or -%
do or don't save test result (%) to file

+x or -x
do or don't use the exact match shortcut
(IB1 and IB2 only, default is -x)

-X file
dump the InstanceBase as XML in 'file'

Use timbl online using onworks.net services


Free Servers & Workstations

Download Windows & Linux apps

  • 1
    AstrOrzPlayer
    AstrOrzPlayer
    AstrOrz Player is a free media player
    software, part based on WMP and VLC. The
    player is in a minimalist style, with
    more than ten theme colors, and can also
    b...
    Download AstrOrzPlayer
  • 2
    movistartv
    movistartv
    Kodi Movistar+ TV es un ADDON para XBMC/
    Kodi que permite disponer de un
    decodificador de los servicios IPTV de
    Movistar integrado en uno de los
    mediacenters ma...
    Download movistartv
  • 3
    Code::Blocks
    Code::Blocks
    Code::Blocks is a free, open-source,
    cross-platform C, C++ and Fortran IDE
    built to meet the most demanding needs
    of its users. It is designed to be very
    extens...
    Download Code::Blocks
  • 4
    Amidst
    Amidst
    Amidst or Advanced Minecraft Interface
    and Data/Structure Tracking is a tool to
    display an overview of a Minecraft
    world, without actually creating it. It
    can ...
    Download Amidst
  • 5
    MSYS2
    MSYS2
    MSYS2 is a collection of tools and
    libraries providing you with an
    easy-to-use environment for building,
    installing and running native Windows
    software. It con...
    Download MSYS2
  • 6
    libjpeg-turbo
    libjpeg-turbo
    libjpeg-turbo is a JPEG image codec
    that uses SIMD instructions (MMX, SSE2,
    NEON, AltiVec) to accelerate baseline
    JPEG compression and decompression on
    x86, x8...
    Download libjpeg-turbo
  • More »

Linux commands

Ad