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Permissive, rule-based Malayalam morphological synthesizer (noun inflection generation).

Project description

mlinflect

A permissive, rule-based Malayalam morphological synthesizer. It does forward morphological generation: given a root and grammatical features, it produces the inflected surface form (the counterpart to morphological analysis/segmentation).

from mlinflect import synthesize_noun, Case, Number

synthesize_noun("മരം", Case.LOCATIVE).surface          # 'മരത്തിൽ'
synthesize_noun("മരം", Case.GENITIVE).surface          # 'മരത്തിന്റെ'
synthesize_noun("കുട്ടി", Case.GENITIVE).surface        # 'കുട്ടിയുടെ'
synthesize_noun("മരം", Case.NOMINATIVE, number=Number.PLURAL).surface  # 'മരങ്ങൾ'

Why this exists

Existing Malayalam morphology tools are either copyleft (Apertium, libindic = GPL/AGPL) or, in the case of the one permissive generator (mlmorph, MIT), built on a GPL FST runtime. There is no permissive, dependency-clean, rule-based Malayalam synthesizer. mlinflect aims to fill that gap with a small pure-Python rule engine and no copyleft dependencies.

Design

  • Declarative, provenance-tagged rules (mlinflect/rules.py): each rule cites the source it was drawn from and carries a verified flag that is True only when the form has been ratified by a native reviewer. Adding or correcting a paradigm is a data edit, not a code change.
  • Inspectable results: every synthesize_noun(...) returns a SynthResult with the surface form, the morphemes that compose it, the stem_class, the provenance key, and verified. Feature combinations that are not yet encoded raise rather than return a silently wrong form.
  • Akshara-correct joins: suffixes are represented matra-initial so concatenation produces correct conjuncts/vowel signs; the genitive uses the canonical nta form (NA + virama + RRA).

Status

Alpha. Eleven ending-conditioned noun classes across 11 cases, covering the major Malayalam noun shapes, with every encoded form native-ratified (verified=True); shapes outside the supported classes raise rather than guess. Five classes (am_neuter മരം, vowel_anuswara കലാം, i_vowel കുട്ടി/സ്ത്രീ, u_vowel പശു, ṭ_geminate വീട്) are complete in singular and plural; a_stem (അമ്മ) and the chillu classes (അവൻ, മകൾ, കാർ, കാൽ, തൂൺ) are singular-complete; their plurals are animacy-conditioned across the full paradigm (inanimate -കൾ/-ഉകൾ, human -മാർ/-ന്മാർ/-കാർ, animate -കൾ). Suppletive personal pronouns (ഞാൻ, നീ, അവർ, നാം, താൻ, ഇവൻ) are handled through an exception table rather than the rule engine. A derive_feminine helper builds a feminine lemma from a masculine base (എഴുത്തുകാരൻ → എഴുത്തുകാരി) before inflection. Includes differential object marking and a synthetic/colloquial register for the instrumental. See LIMITATIONS.md for the precise gaps. Clitics/postpositions, stylistic variants, and verbs are future work.

Install

pip install mlinflect        # once published
# from source:
pip install -e ".[dev]"

License

Apache-2.0. See LICENSE and NOTICE. Contributions are accepted under Apache-2.0 §5 (inbound = outbound); no separate CLA is required.

The implemented linguistic rules are facts restated in our own code; no source's text, tables, code, or data is reproduced. Sources are credited in REFERENCES.md as scholarship; that implies no endorsement and creates no license obligation.

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