施工実績
To get a summary of individuals labels, i blended new set of Wordnet conditions underneath the lexical domain from noun
2022.08.15To understand new emails said from the fantasy report, we first built a databases out-of nouns dealing with the 3 kind of actors believed by the Hall–Van de- Castle program: somebody, animals and you can fictional letters.
person with the words that are subclass of or instance of the item Person in Wikidata. Similarly, for animal names, we merged all the words under the noun.animal lexical domain of Wordnet with the words that are subclass of or instance of the item Animal in Wikidata. To identify fictional characters, we considered the words that are subclass of or instance of the Wikidata items Fictional Human, Mythical Creature and Fictional Creature. As a result, we obtained three disjoint sets containing nouns describing people NAnyone (25 850 words), animals NPets (1521 words) and fictional characters NFictional (515 words). These three sets contain both common nouns (e.g. fox, waiter) and proper nouns (e.g. Jack, Gandalf). Lifeless and fictional characters are grouped into a set of Imaginary characters (CImaginary).
Having those three sets, the tool is able to extract characters from the dream report. It does so by intersecting these three sets with the set of all the proper and common nouns contained in the report (NDream). In so doing, the tool extracts the full set of characters C = C People ? C Animals ? C Fictional , where C People = N Dream ? N People is the the set of person characters, C Animals = N Dream ? N Animals is the set of animal characters, and C Fictional = N Dream ? N Fictional is the set of fictional characters. Note that the tool does not use pronouns to identify characters because: (i) the dreamer (most often referred to as ‘I’ in the reports) is not considered as a character in the Hall–Van de Castle guidelines; and (ii) our assumption is that dream reports are self-contained, in that, all characters are introduced with a common or proper name.
cuatro.3.step 3. Services off characters
In line with the official guidelines for dream coding, the tool identifies the sex of people characters only, and it does so as follows. If the character http://datingranking.net/tr/colombian-cupid-inceleme is introduced with a common name, the tool searches the character (noun) on Wikidata for the property sex or gender. In so doing, the tool builds two additional sets from the dream report: the set of male characters CPeople, and that of female characters CLadies.
To get the unit having the ability to select dead characters (just who function brand new group of fictional letters using in the past understood imaginary characters), i built-up a first list of passing-associated terminology extracted from the initial advice [16,26] (e.grams. deceased, die, corpse), and you will yourself extended you to definitely record having synonyms off thesaurus to improve coverage, and that remaining us that have a last list of 20 words.
Instead, in the event your profile are delivered which have a real name, the newest device matches the smoothness having a custom list of thirty two 055 brands whoever intercourse is well known-because it’s aren’t carried out in gender knowledge one to deal with unstructured text message investigation from the internet [74,75]
The tool then matches these terms with all the nodes in the dream report’s tree. For each matching node (i.e. for each death-related word), the tool computes the distance between that node and each of the other nodes previously identified as ‘characters’. The tool marks the character at the closest distance as ‘dead’ and adds it to the set of dead characters CDead. The distance between any two nodes u and v in the tree is calculated with the standard formula: