An algorithm for suffix stripping
Originally published in Program, 14 no. 3, pp 130-137, July 1980.
1. Introduction
Removing suffixes by automatic means is an operation which is especially useful in the field of information retrieval. In a typical IR environment, one has a collection of documents, each described by the words in the document title and possibly by words in the document abstract. Ignoring the issue of precisely where the words originate, we can say that a document is represented by a vetor of words, or terms. Terms with a common stem will usually have similar meanings, for example:CONNECTFrequently, the performance of an IR system will be improved if term groups such as this are conflated into a single term. This may be done by removal of the various suffixes -ED, -ING, -ION, IONS to leave the single term CONNECT. In addition, the suffix stripping process will reduce the total number of terms in the IR system, and hence reduce the size and complexity of the data in the system, which is always advantageous.
CONNECTED
CONNECTING
CONNECTION
CONNECTIONS
Many strategies for suffix stripping have been reported in the literature.(e.g. 1-6) The nature of the task will vary considerably depending on whether a stem dictionary is being used, whether a suffix list is being used, and of course on the purpose for which the suffix stripping is being done. Assuming that one is not making use of a stem dictionary, and that the purpose of the task is to improve IR performance, the suffix stripping program will usually be given an explicit list of siffixes, and, with each suffix, the criterion under which it may be removed from a word to leave a valid stem. This is the approach adopted here. The main merits of the present program are that it is small (less than 400 lines of BCPL), fast (it will process a vocabulary of 10,000 different words in about 8.1 seconds on the IBM 370/165 at Cambridge University), and reasonably simple. At any rate, it is simple enough to be described in full as an algorithm in this paper. (The present version in BCPL is freely available from the author. BCPL is itself available on a wide range of different computers, but anyone wishing to use the program should have little difficulty in coding it up in other programming languages.) Given the speed of the program, it would be quite realistic to apply it to every word in a large file of continuous text, although for historical reasons we have found it convenient to apply it only to relatively small vocabulary lists derived from continuous text files.
In any suffix stripping program for IR work, two points must be borne in mind. Firstly, the suffixes are being removed simply to improve IR performance, and not as a linguistic exercise. This means that it would not be at all obvious under what circumstances a suffix should be removed, even if we could exactly determine the suffixes of a word by automatic means.
Perhaps the best criterion for removing suffixes from two words W1 and W2 to produce a single stem S, is to say that we do so if there appears to be no difference between the two statements `a document is about W1' and `a document is about W2'. So if W1=`CONNECTION' and W2=`CONNECTIONS' it seems very reasonable to conflate them to a single stem. But if W1=`RELATE' and W2=`RELATIVITY' it seems perhaps unreasonable, especially if the document collection is concerned with theoretical physics. (It should perhaps be added that RELATE and RELATIVITY are conflated together in the algorithm described here.) Between these two extremes there is a continuum of different cases, and given two terms W1 and W2, there will be some variation in opinion as to whether they should be conflated, just as there is with deciding the relevance of some document to a query. The evaluation of the worth of a suffix stripping system is correspondingly difficult.
The second point is that with the approach adopted here, i.e. the use of a suffix list with various rules, the success rate for the suffix stripping will be significantly less than 100% irrespective of how the process is evaluated. For example, if SAND and SANDER get conflated, so most probably will WAND and WANDER. The error here is that the -ER of WANDER has been treated as a suffix when in fact it is part of the stem. Equally, a suffix may completely alter the meaning of a word, in which case its removal is unhelpful. PROBE and PROBATE for example, have quite distinct meanings in modern English. (In fact these would not be conflated in our present algorithm.) There comes a stage in the development of a suffix stripping program where the addition of more rules to increase the performance in one area of the vocabulary causes an equal degradation of performance elsewhere. Unless this phenomenon is noticed in time, it is very easy for the program to become much more complex than is really necessary. It is also easy to give undue emphasis to cases which appear to be important, but which turn ut to be rather rare. For example, cases in which the root of a word changes with the addition of a suffix, as in DECEIVE/DECEPTION, RESUME/RESUMPTION, INDEX/INDICES occur much more rarely in real vocabularies than one might at first suppose. In view of the error rate that must in any case be expected, it did not seem worthwhile to try and cope with these cases.
It is not obvious that the simplicity of the present program is any demerit. In a test on the well-known Cranfield 200 collection7 it gave an improvement in retrieval performance when compared with a very much more elaborate program which has been in use in IR research in Cambridge since 1971(2,6). The test was done as follows: the words of the titles and abstracts in the documents were passed through the earlier suffix stripping system, and the resultis stems were used to index the documents. The words of the queries were reduced to stems in the same way, and the documents were ranked for each query using term coordination matching of query against document. From these rankings, recall and precision values were obtained using the standard recall cutoff method. The entire process was then repeated using the suffix stripping system described in this paper, and the results were as follows:
earlier system present systemCleary, the performance is not very different. The important point is that the earlier, more elaborate system certainly performs no better than the present, simple system.
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precision recall precision recall
0 57.24 0 58.60
10 56.85 10 58.13
20 52.85 20 53.92
30 42.61 30 43.51
40 42.20 40 39.39
50 39.06 50 38.85
60 32.86 60 33.18
70 31.64 70 31.19
80 27.15 80 27.52
90 24.59 90 25.85
100 24.59 100 25.85
(This test was done by prof. C.J. van Rijsbergen.)
2. The Algorithm
To present the suffix stripping algorithm in its entirety we will need a few difinitions.A consonant in a word is a letter other than A, E, I, O or U, and other than Y preceded by a consonant. (The fact that the term `consonant' is defined to some extent in terms of itself does not make it ambiguous.) So in TOY the consonants are T and Y, and in SYZYGY they are S, Z and G. If a letter is not a consonant it is a vowel.
A consonant will be denoted by c, a vowel by v. A list ccc... of length greater than 0 will be denoted by C, and a list vvv... of length greater than 0 will be denoted by V. Any word, or part of a word, therefore has one of the four forms:
CVCV ... CThese may all be represented by the single form
CVCV ... V
VCVC ... C
VCVC ... V
[C]VCVC ... [V]where the square brackets denote arbitrary presence of their contents. Using (VC)m to denote VC repeated m times, this may again be written as
[C](VC)m[V].m will be called the measure of any word or word part when represented in this form. The case m = 0 covers the null word. Here are some examples:
m=0 TR, EE, TREE, Y, BY.The rules for removing a suffix will be given in the form
m=1 TROUBLE, OATS, TREES, IVY.
m=2 TROUBLES, PRIVATE, OATEN, ORRERY.
(condition) S1 -> S2This means that if a word ends with the suffix S1, and the stem before S1 satisfies the given condition, S1 is replaced by S2. The condition is usually given in terms of m, e.g.
(m > 1) EMENT ->Here S1 is `EMENT' and S2 is null. This would map REPLACEMENT to REPLAC, since REPLAC is a word part for which m = 2.
The `condition' part may also contain the following:
*S - the stem ends with S (and similarly for the other letters).
*v* - the stem contains a vowel.
*d - the stem ends with a double consonant (e.g. -TT, -SS).
*o - the stem ends cvc, where the second c is not W, X or Y (e.g. -WIL, -HOP).
And the condition part may also contain expressions with and, or and not, so that
(m>1 and (*S or *T))tests for a stem with m>1 ending in S or T, while
(*d and not (*L or *S or *Z))tests for a stem ending witha double consonant other than L, S or Z. Elaborate conditions like this are required only rarely.
In a set of rules written beneath each other, only one is obeyed, and this will be the one with the longest matching S1 for the given word. For example, with
SSES -> SS(here the conditions are all null) CARESSES maps to CARESS since SSES is the longest match for S1. Equally CARESS maps to CARESS (S1=`SS') and CARES to CARE (S1=`S').
IES -> I
SS -> SS
S ->
In the rules below, examples of their application, successful or otherwise, are given on the right in lower case. The algorithm now follows:
Step 1a
SSES -> SS caresses -> caress
IES -> I ponies -> poni
ties -> ti
SS -> SS caress -> caress
S -> cats -> cat
Step 1b
(m>0) EED -> EE feed -> feedIf the second or third of the rules in Step 1b is successful, the following is done:
agreed -> agree
(*v*) ED -> plastered -> plaster
bled -> bled
(*v*) ING -> motoring -> motor
sing -> sing
AT -> ATE conflat(ed) -> conflateThe rule to map to a single letter causes the removal of one of the double letter pair. The -E is put back on -AT, -BL and -IZ, so that the suffixes -ATE, -BLE and -IZE can be recognised later. This E may be removed in step 4.
BL -> BLE troubl(ed) -> trouble
IZ -> IZE siz(ed) -> size
(*d and not (*L or *S or *Z))
-> single letter
hopp(ing) -> hop
tann(ed) -> tan
fall(ing) -> fall
hiss(ing) -> hiss
fizz(ed) -> fizz
(m=1 and *o) -> E fail(ing) -> fail
fil(ing) -> file
Step 1c
(*v*) Y -> I happy -> happiStep 1 deals with plurals and past participles. The subsequent steps are much more straightforward.
sky -> sky
Step 2
(m>0) ATIONAL -> ATE relational -> relateThe test for the string S1 can be made fast by doing a program switch on the penultimate letter of the word being tested. This gives a fairly even breakdown of the possible values of the string S1. It will be seen in fact that the S1-strings in step 2 are presented here in the alphabetical order of their penultimate letter. Similar techniques may be applied in the other steps.
(m>0) TIONAL -> TION conditional -> condition
rational -> rational
(m>0) ENCI -> ENCE valenci -> valence
(m>0) ANCI -> ANCE hesitanci -> hesitance
(m>0) IZER -> IZE digitizer -> digitize
(m>0) ABLI -> ABLE conformabli -> conformable
(m>0) ALLI -> AL radicalli -> radical
(m>0) ENTLI -> ENT differentli -> different
(m>0) ELI -> E vileli - > vile
(m>0) OUSLI -> OUS analogousli -> analogous
(m>0) IZATION -> IZE vietnamization -> vietnamize
(m>0) ATION -> ATE predication -> predicate
(m>0) ATOR -> ATE operator -> operate
(m>0) ALISM -> AL feudalism -> feudal
(m>0) IVENESS -> IVE decisiveness -> decisive
(m>0) FULNESS -> FUL hopefulness -> hopeful
(m>0) OUSNESS -> OUS callousness -> callous
(m>0) ALITI -> AL formaliti -> formal
(m>0) IVITI -> IVE sensitiviti -> sensitive
(m>0) BILITI -> BLE sensibiliti -> sensible
Step 3
(m>0) ICATE -> IC triplicate -> triplic
(m>0) ATIVE -> formative -> form
(m>0) ALIZE -> AL formalize -> formal
(m>0) ICITI -> IC electriciti -> electric
(m>0) ICAL -> IC electrical -> electric
(m>0) FUL -> hopeful -> hope
(m>0) NESS -> goodness -> good
Step 4
(m>1) AL -> revival -> revivThe suffixes are now removed. All that remains is a little tidying up.
(m>1) ANCE -> allowance -> allow
(m>1) ENCE -> inference -> infer
(m>1) ER -> airliner -> airlin
(m>1) IC -> gyroscopic -> gyroscop
(m>1) ABLE -> adjustable -> adjust
(m>1) IBLE -> defensible -> defens
(m>1) ANT -> irritant -> irrit
(m>1) EMENT -> replacement -> replac
(m>1) MENT -> adjustment -> adjust
(m>1) ENT -> dependent -> depend
(m>1 and (*S or *T)) ION -> adoption -> adopt
(m>1) OU -> homologou -> homolog
(m>1) ISM -> communism -> commun
(m>1) ATE -> activate -> activ
(m>1) ITI -> angulariti -> angular
(m>1) OUS -> homologous -> homolog
(m>1) IVE -> effective -> effect
(m>1) IZE -> bowdlerize -> bowdler
Step 5a
(m>1) E -> probate -> probat
rate -> rate
(m=1 and not *o) E -> cease -> ceas
Step 5b
(m > 1 and *d and *L) -> single letter
controll -> control
roll -> roll
The algorithm is careful not to remove a suffix when the stem is too short, the length of the stem being given by its measure, m. There is no linguistic basis for this approach. It was merely observed that m could be used quite effectively to help decide whether or not it was wise to take off a suffix. For example, in the following two lists:
list A list B-ATE is removed from the list B words, but not from the list A words. This means that the pairs DERIVATE/DERIVE, ACTIVATE/ACTIVE, DEMONSTRATE/DEMONS- TRABLE, NECESSITATE/NECESSITOUS, will conflate together. The fact that no attempt is made to identify prefixes can make the results look rather inconsistent. Thus PRELATE does not lose the -ATE, but ARCHPRELATE becomes ARCHPREL. In practice this does not matter too much, because the presence of the prefix decreases the probability of an erroneous conflation.
------ ------
RELATE DERIVATE
PROBATE ACTIVATE
CONFLATE DEMONSTRATE
PIRATE NECESSITATE
PRELATE RENOVATE
Complex suffixes are removed bit by bit in the different steps. Thus GENERALIZATIONS is stripped to GENERALIZATION (Step 1), then to GENERALIZE (Step 2), then to GENERAL (Step 3), and then to GENER (Step 4). OSCILLATORS is stripped to OSCILLATOR (Step 1), then to OSCILLATE (Step 2), then to OSCILL (Step 4), and then to OSCIL (Step 5). In a vocabulary of 10,000 words, the reduction in size of the stem was distributed among the steps as follows:
Suffix stripping of a vocabulary of 10,000 wordsThe resulting vocabulary of stems contained 6370 distinct entries. Thus the suffix stripping process reduced the size of the vocabulary by about one third.
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Number of words reduced in step 1: 3597
" 2: 766
" 3: 327
" 4: 2424
" 5: 1373
Number of words not reduced: 3650
Referencies
1. LOVINS, J.B. Development of a Stemming Algorithm. Mechanical Translation and computation Linguistics. 11 (1) March 1968 pp 23-31.2. ANDREWS, K. The Development of a Fast Conflation Algorithm for English. Dissertation for the Diploma in Computer Science, Computer Laboratory, University of Cambridge, 1971.
3. PETRARCA, A.E. and LAY W.M. Use of an automatically generated authority list to eliminate scattering caused by some singular and plural main index terms. Proceedings of the American Society for Information Science, 6 1969 pp 277-282.
4. DATTOLA, Robert T. FIRST: Flexible Information Retrieval System for Text. Webster N.Y: Xerox Corporation, 12 Dec 1975.
5. COLOMBO, D.S. and NIEHOFF R.T. Final report on improved access to scientific and technical information through automated vocabulary switching. NSF Grant No. SIS75-12924 to the National Science Foundation.
6. DAWSON, J.L. Suffix Removal and Word Conflation. ALLC Bulletin, Michaelmas 1974 p.33-46.
7. CLEVERDON, C.W., MILLS J. and KEEN M. Factors Determining the Performance of Indexing Systems 2 vols. College of Aeronautics, Cranfield 1966.
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