1
|
|
|
"""Ensemble backend that combines results from multiple projects""" |
2
|
|
|
|
3
|
|
|
|
4
|
|
|
import annif.suggestion |
5
|
|
|
import annif.util |
6
|
|
|
import annif.eval |
7
|
|
|
from . import backend |
8
|
|
|
from . import hyperopt |
9
|
|
|
from annif.exception import NotSupportedException |
10
|
|
|
|
11
|
|
|
|
12
|
|
|
class BaseEnsembleBackend(backend.AnnifBackend): |
13
|
|
|
"""Base class for ensemble backends""" |
14
|
|
|
|
15
|
|
|
def _get_sources_attribute(self, attr): |
16
|
|
|
params = self._get_backend_params(None) |
17
|
|
|
sources = annif.util.parse_sources(params['sources']) |
18
|
|
|
return [getattr(self.project.registry.get_project(project_id), attr) |
19
|
|
|
for project_id, _ in sources] |
20
|
|
|
|
21
|
|
|
def initialize(self): |
22
|
|
|
# initialize all the source projects |
23
|
|
|
params = self._get_backend_params(None) |
24
|
|
|
for project_id, _ in annif.util.parse_sources(params['sources']): |
25
|
|
|
project = self.project.registry.get_project(project_id) |
26
|
|
|
project.initialize() |
27
|
|
|
|
28
|
|
|
def _normalize_hits(self, hits, source_project): |
29
|
|
|
"""Hook for processing hits from backends. Intended to be overridden |
30
|
|
|
by subclasses.""" |
31
|
|
|
return hits |
32
|
|
|
|
33
|
|
|
def _suggest_with_sources(self, text, sources): |
34
|
|
|
hits_from_sources = [] |
35
|
|
|
for project_id, weight in sources: |
36
|
|
|
source_project = self.project.registry.get_project(project_id) |
37
|
|
|
hits = source_project.suggest(text) |
38
|
|
|
self.debug( |
39
|
|
|
'Got {} hits from project {}, weight {}'.format( |
40
|
|
|
len(hits), source_project.project_id, weight)) |
41
|
|
|
norm_hits = self._normalize_hits(hits, source_project) |
42
|
|
|
hits_from_sources.append( |
43
|
|
|
annif.suggestion.WeightedSuggestion( |
44
|
|
|
hits=norm_hits, |
45
|
|
|
weight=weight, |
46
|
|
|
subjects=source_project.subjects)) |
47
|
|
|
return hits_from_sources |
48
|
|
|
|
49
|
|
|
def _merge_hits_from_sources(self, hits_from_sources, params): |
50
|
|
|
"""Hook for merging hits from sources. Can be overridden by |
51
|
|
|
subclasses.""" |
52
|
|
|
return annif.util.merge_hits(hits_from_sources, self.project.subjects) |
53
|
|
|
|
54
|
|
|
def _suggest(self, text, params): |
55
|
|
|
sources = annif.util.parse_sources(params['sources']) |
56
|
|
|
hits_from_sources = self._suggest_with_sources(text, sources) |
57
|
|
|
merged_hits = self._merge_hits_from_sources(hits_from_sources, params) |
58
|
|
|
self.debug('{} hits after merging'.format(len(merged_hits))) |
59
|
|
|
return merged_hits |
60
|
|
|
|
61
|
|
|
|
62
|
|
|
class EnsembleOptimizer(hyperopt.HyperparameterOptimizer): |
63
|
|
|
"""Hyperparameter optimizer for the ensemble backend""" |
64
|
|
|
|
65
|
|
|
def __init__(self, backend, corpus, metric): |
66
|
|
|
super().__init__(backend, corpus, metric) |
67
|
|
|
self._sources = [project_id for project_id, _ |
68
|
|
|
in annif.util.parse_sources( |
69
|
|
|
backend.config_params['sources'])] |
70
|
|
|
|
71
|
|
|
def _prepare(self): |
72
|
|
|
self._gold_subjects = [] |
73
|
|
|
self._source_hits = [] |
74
|
|
|
|
75
|
|
|
for doc in self._corpus.documents: |
76
|
|
|
self._gold_subjects.append( |
77
|
|
|
annif.corpus.SubjectSet((doc.uris, doc.labels))) |
78
|
|
|
srchits = {} |
79
|
|
|
for project_id in self._sources: |
80
|
|
|
registry = self._backend.project.registry |
81
|
|
|
source_project = registry.get_project(project_id) |
82
|
|
|
hits = source_project.suggest(doc.text) |
83
|
|
|
srchits[project_id] = hits |
84
|
|
|
self._source_hits.append(srchits) |
85
|
|
|
|
86
|
|
|
def _normalize(self, hps): |
87
|
|
|
total = sum(hps.values()) |
88
|
|
|
return {source: hps[source] / total for source in hps} |
89
|
|
|
|
90
|
|
|
def _format_cfg_line(self, hps): |
91
|
|
|
return 'sources=' + ','.join([f"{src}:{weight:.4f}" |
92
|
|
|
for src, weight in hps.items()]) |
93
|
|
|
|
94
|
|
|
def _objective(self, trial): |
95
|
|
|
batch = annif.eval.EvaluationBatch(self._backend.project.subjects) |
96
|
|
|
weights = {project_id: trial.suggest_uniform(project_id, 0.0, 1.0) |
97
|
|
|
for project_id in self._sources} |
98
|
|
|
for goldsubj, srchits in zip(self._gold_subjects, self._source_hits): |
99
|
|
|
weighted_hits = [] |
100
|
|
|
for project_id, hits in srchits.items(): |
101
|
|
|
weighted_hits.append(annif.suggestion.WeightedSuggestion( |
102
|
|
|
hits=hits, |
103
|
|
|
weight=weights[project_id], |
104
|
|
|
subjects=self._backend.project.subjects)) |
105
|
|
|
batch.evaluate( |
106
|
|
|
annif.util.merge_hits( |
107
|
|
|
weighted_hits, |
108
|
|
|
self._backend.project.subjects), |
109
|
|
|
goldsubj) |
110
|
|
|
results = batch.results(metrics=[self._metric]) |
111
|
|
|
return results[self._metric] |
112
|
|
|
|
113
|
|
|
def _postprocess(self, study): |
114
|
|
|
line = self._format_cfg_line(self._normalize(study.best_params)) |
115
|
|
|
return hyperopt.HPRecommendation(lines=[line], score=study.best_value) |
116
|
|
|
|
117
|
|
|
|
118
|
|
|
class EnsembleBackend(BaseEnsembleBackend, hyperopt.AnnifHyperoptBackend): |
119
|
|
|
"""Ensemble backend that combines results from multiple projects""" |
120
|
|
|
name = "ensemble" |
121
|
|
|
|
122
|
|
|
@property |
123
|
|
|
def is_trained(self): |
124
|
|
|
sources_trained = self._get_sources_attribute('is_trained') |
125
|
|
|
return all(sources_trained) |
126
|
|
|
|
127
|
|
|
@property |
128
|
|
|
def modification_time(self): |
129
|
|
|
mtimes = self._get_sources_attribute('modification_time') |
130
|
|
|
return max(filter(None, mtimes), default=None) |
131
|
|
|
|
132
|
|
|
def get_hp_optimizer(self, corpus, metric): |
133
|
|
|
return EnsembleOptimizer(self, corpus, metric) |
134
|
|
|
|
135
|
|
|
def _train(self, corpus, params): |
136
|
|
|
raise NotSupportedException( |
137
|
|
|
'Training ensemble backend is not possible.') |
138
|
|
|
|