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supar-unidic's Introduction

Current PyPI packages

SuPar-UniDic

Tokenizer, POS-tagger, lemmatizer, and dependency-parser for modern and contemporary Japanese with BERT models.

Basic usage

>>> import suparunidic
>>> nlp=suparunidic.load()
>>> doc=nlp("太郎は花子が読んでいる本を次郎に渡した")
>>> print(type(doc))
<class 'spacy.tokens.doc.Doc'>
>>> print(suparunidic.to_conllu(doc))
1	太郎	タロウ	PROPN	名詞-固有名詞-人名-	_	12	nsubj	_	SpaceAfter=No|Translit=タロー
2			ADP	助詞-係助詞	_	1	case	_	SpaceAfter=No|Translit=
3	花子	ハナコ	PROPN	名詞-固有名詞-人名-	_	5	nsubj	_	SpaceAfter=No|Translit=ハナコ
4			ADP	助詞-格助詞	_	3	case	_	SpaceAfter=No|Translit=
5	読ん	読む	VERB	動詞-一般	_	8	acl	_	SpaceAfter=No|Translit=ヨン
6			SCONJ	助詞-接続助詞	_	5	mark	_	SpaceAfter=No|Translit=
7	いる	居る	AUX	動詞-非自立可能	_	5	aux	_	SpaceAfter=No|Translit=イル
8			NOUN	名詞-普通名詞-一般	_	12	obj	_	SpaceAfter=No|Translit=ホン
9			ADP	助詞-格助詞	_	8	case	_	SpaceAfter=No|Translit=
10	次郎	ジロウ	PROPN	名詞-固有名詞-人名-	_	12	obl	_	SpaceAfter=No|Translit=ジロー
11			ADP	助詞-格助詞	_	10	case	_	SpaceAfter=No|Translit=
12	渡し	渡す	VERB	動詞-一般	_	0	root	_	SpaceAfter=No|Translit=ワタシ
13			AUX	助動詞	_	12	aux	_	SpaceAfter=No|Translit=

>>> import deplacy
>>> deplacy.render(doc,Japanese=True)
太郎 PROPN ═╗<════════╗ nsubj(主語)
   ADP   <╝         ║ case(格表示)
花子 PROPN ═╗<══╗     ║ nsubj(主語)
   ADP   <╝   ║     ║ case(格表示)
読ん VERB  ═╗═╗═╝<╗   ║ acl(連体修飾節)
   SCONJ <╝ ║   ║   ║ mark(標識)
いる AUX   <══╝   ║   ║ aux(動詞補助成分)
   NOUN  ═╗═════╝<╗ ║ obj(目的語)
   ADP   <╝       ║ ║ case(格表示)
次郎 PROPN ═╗<╗     ║ ║ obl(斜格補語)
   ADP   <╝ ║     ║ ║ case(格表示)
渡し VERB  ═╗═╝═════╝═╝ ROOT()
   AUX   <aux(動詞補助成分)
>>> from deplacy.deprelja import deprelja
>>> for b in suparunidic.bunsetu_spans(doc):
...   for t in b.lefts:
...     print(suparunidic.bunsetu_span(t),"->",b,"("+deprelja[t.dep_]+")")
...
花子が -> 読んでいる (主語)
読んでいる -> 本を (連体修飾節)
太郎は -> 渡した (主語)
本を -> 渡した (目的語)
次郎に -> 渡した (斜格補語)

suparunidic.load(UniDic,BERT) loads a natural language processor pipeline, which uses UniDic for tokenizer POS-tagger and lemmatizer, then uses BERT for Biaffine dependency-parser of SuPar. Available UniDic options are:

Available BERT options are:

Installation for Linux

pip3 install suparunidic --user

Installation for Cygwin64

Make sure to get python37-devel python37-pip python37-cython python37-numpy python37-wheel gcc-g++ mingw64-x86_64-gcc-g++ git curl make cmake, and then:

curl -L https://raw.githubusercontent.com/KoichiYasuoka/CygTorch/master/installer/supar.sh | sh
pip3.7 install suparunidic

Benchmarks

Results of 舞姬/雪國/荒野より-Benchmarks

BERT="bert-japanese-aozora6m3m-unidic32k-2m"

舞姬 LAS MLAS BLEX
UniDic="qkana" 84.91 74.07 77.78
UniDic="kindai" 74.77 69.09 69.09
UniDic="kinsei" 83.02 66.67 70.37
雪國 LAS MLAS BLEX
UniDic="qkana" 85.71 78.43 74.51
UniDic="kindai" 81.42 74.51 66.67
UniDic="kinsei" 78.95 67.92 64.15
荒野より LAS MLAS BLEX
UniDic="qkana" 74.35 56.00 56.00
UniDic="kindai" 74.35 53.33 53.33
UniDic="kinsei" 70.83 50.00 47.37

BERT="roberta-large-japanese-aozora"

舞姬 LAS MLAS BLEX
UniDic="qkana" 75.47 58.18 65.45
UniDic="kindai" 75.47 58.18 65.45
UniDic="kinsei" 66.67 52.63 56.14
雪國 LAS MLAS BLEX
UniDic="qkana" 87.50 82.35 78.43
UniDic="kindai" 83.19 78.43 74.51
UniDic="kinsei" 87.50 82.35 74.51
荒野より LAS MLAS BLEX
UniDic="qkana" 80.63 64.94 59.74
UniDic="kindai" 80.63 62.34 57.14
UniDic="kinsei" 78.12 59.74 54.55

BERT="roberta-large-japanese-aozora-char"

舞姬 LAS MLAS BLEX
UniDic="qkana" 79.25 69.09 76.36
UniDic="kindai" 79.25 69.09 76.36
UniDic="kinsei" 68.52 59.65 63.16
雪國 LAS MLAS BLEX
UniDic="qkana" 85.71 78.43 74.51
UniDic="kindai" 81.42 74.51 70.59
UniDic="kinsei" 85.71 78.43 70.59
荒野より LAS MLAS BLEX
UniDic="qkana" 76.44 61.33 61.33
UniDic="kindai" 76.44 61.33 61.33
UniDic="kinsei" 72.92 56.00 56.00

BERT="roberta-base-japanese-aozora"

舞姬 LAS MLAS BLEX
UniDic="qkana" 79.25 65.45 72.73
UniDic="kindai" 79.25 65.45 72.73
UniDic="kinsei" 68.52 60.71 64.29
雪國 LAS MLAS BLEX
UniDic="qkana" 87.50 82.35 78.43
UniDic="kindai" 83.19 78.43 74.51
UniDic="kinsei" 87.50 82.35 74.51
荒野より LAS MLAS BLEX
UniDic="qkana" 76.44 58.67 61.33
UniDic="kindai" 76.44 56.00 58.67
UniDic="kinsei" 73.96 53.33 56.00

BERT="roberta-base-japanese-aozora-char"

舞姬 LAS MLAS BLEX
UniDic="qkana" 83.02 70.37 77.78
UniDic="kindai" 83.02 70.37 77.78
UniDic="kinsei" 74.07 65.45 69.09
雪國 LAS MLAS BLEX
UniDic="qkana" 85.71 78.43 74.51
UniDic="kindai" 81.42 74.51 70.59
UniDic="kinsei" 85.71 78.43 70.59
荒野より LAS MLAS BLEX
UniDic="qkana" 76.44 57.89 57.89
UniDic="kindai" 76.44 55.26 55.26
UniDic="kinsei" 73.96 52.63 52.63

BERT="roberta-small-japanese-aozora"

舞姬 LAS MLAS BLEX
UniDic="qkana" 83.02 72.73 76.36
UniDic="kindai" 83.02 72.73 76.36
UniDic="kinsei" 70.37 60.71 64.29
雪國 LAS MLAS BLEX
UniDic="qkana" 85.71 78.43 74.51
UniDic="kindai" 81.42 74.51 70.59
UniDic="kinsei" 85.71 78.43 70.59
荒野より LAS MLAS BLEX
UniDic="qkana" 74.35 56.00 56.00
UniDic="kindai" 74.35 53.33 53.33
UniDic="kinsei" 71.88 50.67 50.67

BERT="roberta-small-japanese-aozora-char"

舞姬 LAS MLAS BLEX
UniDic="qkana" 77.36 65.45 72.73
UniDic="kindai" 77.36 65.45 72.73
UniDic="kinsei" 70.37 59.65 63.16
雪國 LAS MLAS BLEX
UniDic="qkana" 85.71 78.43 74.51
UniDic="kindai" 81.42 74.51 70.59
UniDic="kinsei" 85.71 78.43 70.59
荒野より LAS MLAS BLEX
UniDic="qkana" 73.30 53.33 53.33
UniDic="kindai" 73.30 50.67 50.67
UniDic="kinsei" 70.83 48.00 48.00

BERT="deberta-large-japanese-aozora"

舞姬 LAS MLAS BLEX
UniDic="qkana" 84.91 74.07 77.78
UniDic="kindai" 76.64 72.73 69.09
UniDic="kinsei" 81.13 66.67 70.37
雪國 LAS MLAS BLEX
UniDic="qkana" 85.71 78.43 74.51
UniDic="kindai" 81.42 74.51 66.67
UniDic="kinsei" 78.95 67.92 64.15
荒野より LAS MLAS BLEX
UniDic="qkana" 77.49 61.33 61.33
UniDic="kindai" 77.49 58.67 58.67
UniDic="kinsei" 73.96 55.26 52.63

BERT="deberta-base-japanese-aozora"

舞姬 LAS MLAS BLEX
UniDic="qkana" 86.79 77.78 77.78
UniDic="kindai" 76.64 72.73 69.09
UniDic="kinsei" 81.13 65.45 65.45
雪國 LAS MLAS BLEX
UniDic="qkana" 85.71 78.43 74.51
UniDic="kindai" 83.19 78.43 70.59
UniDic="kinsei" 78.95 67.92 64.15
荒野より LAS MLAS BLEX
UniDic="qkana" 72.25 53.33 53.33
UniDic="kindai" 72.25 50.67 50.67
UniDic="kinsei" 69.79 50.00 47.37

BERT="deberta-small-japanese-aozora"

舞姬 LAS MLAS BLEX
UniDic="qkana" 75.47 60.71 64.29
UniDic="kindai" 67.29 59.65 56.14
UniDic="kinsei" 71.70 50.91 54.55
雪國 LAS MLAS BLEX
UniDic="qkana" 83.93 74.51 70.59
UniDic="kindai" 79.65 70.59 62.75
UniDic="kinsei" 77.19 64.15 60.38
荒野より LAS MLAS BLEX
UniDic="qkana" 75.39 56.00 56.00
UniDic="kindai" 75.39 56.00 56.00
UniDic="kinsei" 71.88 52.63 50.00

BERT="deberta-base-japanese-unidic"

舞姬 LAS MLAS BLEX
UniDic="qkana" 86.79 77.78 77.78
UniDic="kindai" 76.64 72.73 69.09
UniDic="kinsei" 79.25 60.71 60.71
雪國 LAS MLAS BLEX
UniDic="qkana" 83.93 76.00 72.00
UniDic="kindai" 79.65 72.00 64.00
UniDic="kinsei" 77.19 65.38 61.54
荒野より LAS MLAS BLEX
UniDic="qkana" 77.49 61.33 61.33
UniDic="kindai" 77.49 58.67 58.67
UniDic="kinsei" 73.96 55.26 52.63

BERT="bert-base-japanese-char-extended"

舞姬 LAS MLAS BLEX
UniDic="qkana" 81.13 72.73 76.36
UniDic="kindai" 81.13 72.73 76.36
UniDic="kinsei" 68.52 59.65 63.16
雪國 LAS MLAS BLEX
UniDic="qkana" 85.71 78.43 74.51
UniDic="kindai" 81.42 74.51 70.59
UniDic="kinsei" 85.71 78.43 70.59
荒野より LAS MLAS BLEX
UniDic="qkana" 75.39 56.00 56.00
UniDic="kindai" 75.39 53.33 53.33
UniDic="kinsei" 71.88 48.00 48.00

BERT="bert-large-japanese-char-extended"

舞姬 LAS MLAS BLEX
UniDic="qkana" 75.47 64.29 71.43
UniDic="kindai" 75.47 64.29 71.43
UniDic="kinsei" 64.81 55.17 62.07
雪國 LAS MLAS BLEX
UniDic="qkana" 85.71 78.43 74.51
UniDic="kindai" 81.42 74.51 70.59
UniDic="kinsei" 85.71 78.43 70.59
荒野より LAS MLAS BLEX
UniDic="qkana" 78.53 64.00 64.00
UniDic="kindai" 78.53 61.33 61.33
UniDic="kinsei" 76.04 58.67 58.67

BERT="bert-base-japanese-char"

舞姬 LAS MLAS BLEX
UniDic="qkana" 77.36 64.29 71.43
UniDic="kindai" 77.36 64.29 71.43
UniDic="kinsei" 66.67 55.17 58.62
雪國 LAS MLAS BLEX
UniDic="qkana" 78.57 72.00 68.00
UniDic="kindai" 74.34 68.00 64.00
UniDic="kinsei" 78.57 72.00 64.00
荒野より LAS MLAS BLEX
UniDic="qkana" 75.39 58.67 58.67
UniDic="kindai" 75.39 56.00 56.00
UniDic="kinsei" 72.92 53.33 53.33

BERT="bert-base-japanese-whole-word-masking"

舞姬 LAS MLAS BLEX
UniDic="qkana" 73.58 57.14 64.29
UniDic="kindai" 73.58 57.14 64.29
UniDic="kinsei" 64.81 51.72 55.17
雪國 LAS MLAS BLEX
UniDic="qkana" 85.71 82.35 78.43
UniDic="kindai" 76.11 73.08 69.23
UniDic="kinsei" 85.71 82.35 74.51
荒野より LAS MLAS BLEX
UniDic="qkana" 73.30 52.63 52.63
UniDic="kindai" 73.30 52.63 52.63
UniDic="kinsei" 69.79 50.00 50.00

BERT="bert-large-japanese"

舞姬 LAS MLAS BLEX
UniDic="qkana" 79.25 65.45 72.73
UniDic="kindai" 79.25 65.45 72.73
UniDic="kinsei" 68.52 56.14 59.65
雪國 LAS MLAS BLEX
UniDic="qkana" 78.57 76.92 73.08
UniDic="kindai" 74.34 73.08 69.23
UniDic="kinsei" 78.57 76.92 69.23
荒野より LAS MLAS BLEX
UniDic="qkana" 78.53 59.74 57.14
UniDic="kindai" 78.53 57.14 54.55
UniDic="kinsei" 77.08 54.55 51.95

BERT="bert-large-japanese-char"

舞姬 LAS MLAS BLEX
UniDic="qkana" 79.25 69.09 72.73
UniDic="kindai" 79.25 69.09 72.73
UniDic="kinsei" 68.52 59.65 63.16
雪國 LAS MLAS BLEX
UniDic="qkana" 80.36 70.59 70.59
UniDic="kindai" 76.11 66.67 66.67
UniDic="kinsei" 80.36 70.59 66.67
荒野より LAS MLAS BLEX
UniDic="qkana" 74.35 53.33 53.33
UniDic="kindai" 74.35 50.67 50.67
UniDic="kinsei" 71.88 48.00 48.00

BERT="roberta-base-japanese"

舞姬 LAS MLAS BLEX
UniDic="qkana" 83.02 72.73 76.36
UniDic="kindai" 83.02 72.73 76.36
UniDic="kinsei" 72.22 63.16 66.67
雪國 LAS MLAS BLEX
UniDic="qkana" 85.71 78.43 74.51
UniDic="kindai" 83.19 78.43 74.51
UniDic="kinsei" 85.71 78.43 70.59
荒野より LAS MLAS BLEX
UniDic="qkana" 72.25 51.35 51.35
UniDic="kindai" 72.25 51.35 51.35
UniDic="kinsei" 69.79 48.65 48.65

BERT="roberta-large-japanese"

舞姬 LAS MLAS BLEX
UniDic="qkana" 79.25 65.45 69.09
UniDic="kindai" 69.16 60.71 57.14
UniDic="kinsei" 73.58 50.00 53.57
雪國 LAS MLAS BLEX
UniDic="qkana" 85.71 78.43 74.51
UniDic="kindai" 81.42 74.51 66.67
UniDic="kinsei" 78.95 67.92 64.15
荒野より LAS MLAS BLEX
UniDic="qkana" 72.25 57.89 57.89
UniDic="kindai" 72.25 55.26 55.26
UniDic="kinsei" 68.75 51.95 49.35

BERT="electra-base-japanese-discriminator"

舞姬 LAS MLAS BLEX
UniDic="qkana" 75.47 61.82 69.09
UniDic="kindai" 75.47 61.82 69.09
UniDic="kinsei" 64.81 52.63 56.14
雪國 LAS MLAS BLEX
UniDic="qkana" 87.50 82.35 78.43
UniDic="kindai" 83.19 78.43 74.51
UniDic="kinsei" 87.50 82.35 74.51
荒野より LAS MLAS BLEX
UniDic="qkana" 73.30 50.67 50.67
UniDic="kindai" 73.30 50.67 50.67
UniDic="kinsei" 70.83 48.00 48.00

BERT="bert-small-japanese"

舞姬 LAS MLAS BLEX
UniDic="qkana" 79.25 62.96 70.37
UniDic="kindai" 79.25 62.96 70.37
UniDic="kinsei" 70.37 57.14 60.71
雪國 LAS MLAS BLEX
UniDic="qkana" 76.79 73.08 69.23
UniDic="kindai" 72.57 69.23 65.38
UniDic="kinsei" 76.79 73.08 65.38
荒野より LAS MLAS BLEX
UniDic="qkana" 72.25 47.37 47.37
UniDic="kindai" 72.25 47.37 47.37
UniDic="kinsei" 69.79 42.67 45.33

BERT="electra-base-japanese-generator"

舞姬 LAS MLAS BLEX
UniDic="qkana" 77.36 64.29 71.43
UniDic="kindai" 77.36 64.29 71.43
UniDic="kinsei" 68.52 58.62 62.07
雪國 LAS MLAS BLEX
UniDic="qkana" 76.79 73.08 69.23
UniDic="kindai" 72.57 69.23 65.38
UniDic="kinsei" 76.79 73.08 65.38
荒野より LAS MLAS BLEX
UniDic="qkana" 69.11 45.33 45.33
UniDic="kindai" 69.11 45.33 45.33
UniDic="kinsei" 66.67 42.67 42.67

BERT="japanese-roberta-base"

舞姬 LAS MLAS BLEX
UniDic="qkana" 73.58 57.14 64.29
UniDic="kindai" 73.58 57.14 64.29
UniDic="kinsei" 64.81 51.72 55.17
雪國 LAS MLAS BLEX
UniDic="qkana" 87.50 82.35 78.43
UniDic="kindai" 83.19 78.43 74.51
UniDic="kinsei" 87.50 82.35 74.51
荒野より LAS MLAS BLEX
UniDic="qkana" 74.35 50.00 47.37
UniDic="kindai" 74.35 47.37 44.74
UniDic="kinsei" 71.88 44.74 42.11

BERT="albert-japanese-v2"

舞姬 LAS MLAS BLEX
UniDic="qkana" 77.36 64.29 71.43
UniDic="kindai" 77.36 64.29 71.43
UniDic="kinsei" 66.67 55.17 58.62
雪國 LAS MLAS BLEX
UniDic="qkana" 76.79 73.08 69.23
UniDic="kindai" 72.57 69.23 65.38
UniDic="kinsei" 76.79 73.08 65.38
荒野より LAS MLAS BLEX
UniDic="qkana" 73.30 51.95 49.35
UniDic="kindai" 73.30 49.35 46.75
UniDic="kinsei" 69.79 46.75 44.16

BERT="albert-base-japanese-v1"

舞姬 LAS MLAS BLEX
UniDic="qkana" 73.58 57.14 64.29
UniDic="kindai" 73.58 57.14 64.29
UniDic="kinsei" 64.81 51.72 55.17
雪國 LAS MLAS BLEX
UniDic="qkana" 76.79 73.08 69.23
UniDic="kindai" 74.34 69.23 65.38
UniDic="kinsei" 76.79 73.08 65.38
荒野より LAS MLAS BLEX
UniDic="qkana" 65.97 42.67 42.67
UniDic="kindai" 65.97 40.00 40.00
UniDic="kinsei" 64.58 39.47 39.47

BERT="electra-small-japanese-discriminator"

舞姬 LAS MLAS BLEX
UniDic="qkana" 73.58 57.14 64.29
UniDic="kindai" 73.58 57.14 64.29
UniDic="kinsei" 62.96 48.28 51.72
雪國 LAS MLAS BLEX
UniDic="qkana" 73.21 69.23 65.38
UniDic="kindai" 70.80 65.38 61.54
UniDic="kinsei" 73.21 69.23 61.54
荒野より LAS MLAS BLEX
UniDic="qkana" 74.35 50.00 47.37
UniDic="kindai" 74.35 50.00 47.37
UniDic="kinsei" 72.92 50.00 47.37

BERT="electra-small-japanese-generator"

舞姬 LAS MLAS BLEX
UniDic="qkana" 73.58 60.71 64.29
UniDic="kindai" 73.58 60.71 64.29
UniDic="kinsei" 66.67 55.17 58.62
雪國 LAS MLAS BLEX
UniDic="qkana" 73.21 69.23 65.38
UniDic="kindai" 70.80 65.38 61.54
UniDic="kinsei" 73.21 69.23 61.54
荒野より LAS MLAS BLEX
UniDic="qkana" 69.11 45.95 45.95
UniDic="kindai" 69.11 43.24 43.24
UniDic="kinsei" 66.67 40.54 40.54

BERT="ku-bert-japanese-large"

舞姬 LAS MLAS BLEX
UniDic="qkana" 77.36 65.45 72.73
UniDic="kindai" 77.36 65.45 72.73
UniDic="kinsei" 64.81 52.63 59.65
雪國 LAS MLAS BLEX
UniDic="qkana" 82.14 74.51 70.59
UniDic="kindai" 81.42 74.51 70.59
UniDic="kinsei" 82.14 74.51 66.67
荒野より LAS MLAS BLEX
UniDic="qkana" 62.83 39.47 42.11
UniDic="kindai" 62.83 36.84 39.47
UniDic="kinsei" 62.50 38.96 41.56

BERT="bert-base-ja-cased"

舞姬 LAS MLAS BLEX
UniDic="qkana" 73.58 58.18 65.45
UniDic="kindai" 73.58 58.18 65.45
UniDic="kinsei" 64.81 52.63 56.14
雪國 LAS MLAS BLEX
UniDic="qkana" 73.21 69.23 65.38
UniDic="kindai" 70.80 65.38 61.54
UniDic="kinsei" 73.21 69.23 61.54
荒野より LAS MLAS BLEX
UniDic="qkana" 63.87 41.56 44.16
UniDic="kindai" 63.87 38.96 41.56
UniDic="kinsei" 61.46 36.36 38.96

BERT="laboro-bert-japanese-large"

舞姬 LAS MLAS BLEX
UniDic="qkana" 71.70 56.14 63.16
UniDic="kindai" 71.70 56.14 63.16
UniDic="kinsei" 62.96 50.85 54.24
雪國 LAS MLAS BLEX
UniDic="qkana" 71.43 65.38 65.38
UniDic="kindai" 67.26 61.54 61.54
UniDic="kinsei" 71.43 65.38 61.54
荒野より LAS MLAS BLEX
UniDic="qkana" 67.02 42.67 42.67
UniDic="kindai" 67.02 40.00 40.00
UniDic="kinsei" 65.62 37.33 37.33

BERT="nict-bert-base-japanese-100k"

舞姬 LAS MLAS BLEX
UniDic="qkana" 67.92 49.12 52.63
UniDic="kindai" 67.92 49.12 52.63
UniDic="kinsei" 57.41 40.68 44.07
雪國 LAS MLAS BLEX
UniDic="qkana" 82.14 74.51 74.51
UniDic="kindai" 81.42 74.51 74.51
UniDic="kinsei" 82.14 74.51 70.59
荒野より LAS MLAS BLEX
UniDic="qkana" 68.06 41.10 43.84
UniDic="kindai" 68.06 38.36 41.10
UniDic="kinsei" 65.62 35.62 38.36

BERT="unihanlm-base"

舞姬 LAS MLAS BLEX
UniDic="qkana" 69.81 52.63 59.65
UniDic="kindai" 69.81 52.63 59.65
UniDic="kinsei" 61.11 47.46 50.85
雪國 LAS MLAS BLEX
UniDic="qkana" 85.71 78.43 78.43
UniDic="kindai" 79.65 70.59 70.59
UniDic="kinsei" 85.71 78.43 74.51
荒野より LAS MLAS BLEX
UniDic="qkana" 61.78 36.36 38.96
UniDic="kindai" 61.78 36.36 38.96
UniDic="kinsei" 60.42 36.36 38.96

BERT="distilbert-base-japanese"

舞姬 LAS MLAS BLEX
UniDic="qkana" 77.36 64.29 71.43
UniDic="kindai" 77.36 64.29 71.43
UniDic="kinsei" 68.52 58.62 62.07
雪國 LAS MLAS BLEX
UniDic="qkana" 73.21 69.23 65.38
UniDic="kindai" 70.80 65.38 61.54
UniDic="kinsei" 73.21 69.23 61.54
荒野より LAS MLAS BLEX
UniDic="qkana" 63.87 34.67 40.00
UniDic="kindai" 63.87 32.00 37.33
UniDic="kinsei" 62.50 34.21 36.84

Author

Koichi Yasuoka (安岡孝一)

supar-unidic's People

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supar-unidic's Issues

Can't clone the repo

Here's my console output:

git clone [email protected]:koichiyasuoka/supar-unidic.git --filter=blob:none
Cloning into 'supar-unidic'...
remote: Enumerating objects: 842, done.
remote: Counting objects: 100% (18/18), done.
remote: Compressing objects: 100% (10/10), done.
remote: Total 842 (delta 9), reused 17 (delta 8), pack-reused 824
Receiving objects: 100% (842/842), 103.49 KiB | 1.14 MiB/s, done.
Resolving deltas: 100% (460/460), done.
Connection to github.com closed by remote host.
fatal: the remote end hung up unexpectedly
warning: Clone succeeded, but checkout failed.
You can inspect what was checked out with 'git status'
and retry with 'git restore --source=HEAD :/'

When using a filter, when that error appears, it typically indicates that you've got some filenames that are too long, invalid, or contain invalid characters. The result is the same with varying filter syntax such as --filter=blob:limit=100 and without filtering, attempting to pull all 35gb. Something in your repo structure is problematic.

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