- It also has to do with the subject of qualitative criteria, qualitative and quantitative assessment.
- Det hänger också samman med frågan om kvalitativa kriterier, kvalitativ bedömning och kvantitativ bedömning.
- That is, though, rather a generalised way of looking at things, and I would again recommend that you think a bit about whether it is not perhaps the area of regional aid in which we have very definitely to be guided by qualitative criteria.
- Men det är ett ganska schablonartat sätt att se på det, och här skulle jag ändå än en gång rekommendera att man tänker över om inte just det regionala stödet är ett område där man verkligen utan tvekan måste inrikta sig på kvalitativa kriterier.
- This State Aid Scoreboard, which is in its earliest stages, can, in my view, be developed into an instrument which will make it possible to discern trends and assess aid by reference to qualitative criteria - the qualitative criteria to which I have just referred.
- Denna resultattavla, som befinner sig i initialskedet, kan enligt min åsikt utvecklas till ett instrument som möjliggör att man kan urskilja tendenser och bedöma stöd enligt kvalitativa kriterier, så som jag också just har nämnt.
show query
SET search_path TO f9miniensv;
WITH
list AS (SELECT
t11.token_id AS t11,
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t21.token_id AS t21,
t22.token_id AS t22,
r1.dep_id AS dep1,
r2.dep_id AS dep2
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deprel r1
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JOIN word_align a1 ON a1.wsource = r1.head AND a1.wsource < a1.wtarget
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FROM
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LEFT JOIN word_align ON wsource = token_id
WHERE
sentence_id IN (
SELECT sentence_id
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list
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)
GROUP BY sentence_id),
numbered AS (SELECT row_number() OVER () AS i, *
FROM
list),
sentences AS (SELECT *, .2 * (1 / (1 + exp(max(c) OVER (PARTITION BY i) - min(c) OVER (PARTITION BY i)))) +
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(
SELECT i, 1 AS n, sentence_id, ARRAY[t11,t12] AS tokens
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ORDER BY i, n)
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i,
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c_aligned,
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;