asr-lombardia.it

Multilingual Wikipedia

In June 2020 the website asr-lombardia.it was on the 43,730th place in the ranking of the most reliable and popular sources in multilingual Wikipedia from readers' point of view (PR-score). If we consider only frequency of appearance of this source in references of Wikipedia articles (F-score), this website was on the 154,085th place in June 2020. From Wikipedians' point of view, "asr-lombardia.it" is the 74,066th most reliable source in different language versions of Wikipedia (AR-score).

The website is placed before vzbv.de and after nhsdirect.nhs.uk in multilingual PR ranking of the most reliable sources in Wikipedia.

PR-score:
43,730th place
519,842
-44,986
AR-score:
74,066th place
38,992
-302
F-score:
154,085th place
42
+1

German Wikipedia (de)

PR-score:
6,612th place
252,600
+77,300
AR-score:
57,263rd place
4,142
-658
F-score:
225,615th place
1
0

English Wikipedia (en)

PR-score:
59,594th place
176,225
-50,384
AR-score:
93,141st place
12,415
+172
F-score:
189,672nd place
10
0

Italian Wikipedia (it)

PR-score:
8,715th place
73,317
-70,547
AR-score:
9,947th place
14,560
+137
F-score:
14,629th place
21
0

French Wikipedia (fr)

PR-score:
65,236th place
11,288
-1,723
AR-score:
107,340th place
1,394
0
F-score:
220,733rd place
1
0

Portuguese Wikipedia (pt)

PR-score:
91,617th place
2,100
-500
AR-score:
117,096th place
263
+2
F-score:
116,134th place
1
0

Slovenian Wikipedia (sl)

PR-score:
5,302nd place
1,153
-543
AR-score:
11,545th place
152
0
F-score:
7,614th place
2
0

Esperanto Wikipedia (eo)

PR-score:
2,904th place
600
-200
AR-score:
989th place
4,400
0
F-score:
12,192nd place
1
0

Macedonian Wikipedia (mk)

PR-score:
5,752nd place
483
-17
AR-score:
1,984th place
1,433
+11
F-score:
8,214th place
2
0

Arabic Wikipedia (ar)

PR-score:
82,941st place
332
-14
AR-score:
147,981st place
72
0
F-score:
88,496th place
1
0
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BestRef shows popularity and reliability scores for sources in references of Wikipedia articles in different languages. Data extraction based on complex method using Wikimedia dumps. To find the most popular and reliable sources we used information about over 200 million references of Wikipedia articles. More details...