Some of CNC corpora (the first of which is SYN2015) are syntactically annotated, marking dependency relations between two words in a sentence and the analytical functions of individual words. This syntactic annotation is based on the principles of the analytical-layer annotation used in the Prague Dependency Treebank (PDT). The InterCorp parallel corpus in its release 13ud is syntactically (and also morphologically) annotated in an alternative way, following the guidelines of the international Universal Dependencies project.
The analytical layer of the PDT (PDT 2.0 following revisions 2.5 and 3.0) was chosen as the starting point for tagging the SYN2015 corpus for the following two reasons: firstly because of the intelligibility of the syntactic theory contained in the PDT, and secondly due to the availability of high-quality „manually“ tagged data. The dependency structure based on which the PDT is annotated is based on that of Vl. Šmilauer, and is therefore closely related to the „traditional“ Czech structure as it is taught is the majority of primary and secondary schools to this day, which makes it easily comprehensible for a large number of users. In addition, the PDT's analytical layer contains approximately 1.5 million words of high-quality syntactically annotated data, which can be used to train and test automatic syntactic annotation programs; such a vast quantity of manually annotated data is not contained in any other syntactically annotated corpus of the Czech language.
Syntactic annotation is done automatically, using a syntactic (parser). For the annotation of the SYN2015 corpus, the TurboParser was used, for SYN2020, a “neural” parser of the NeuroNLP2 tools was used. This kind of annotation has a higher error rate than morphological annotation. In SYN2020, more than 1/9 tokens are left without a correctly identified „parent“ or correctly matched syntactic function, in SYN2015, it's as much as 1/6 of tokens.
The success rate of parsing is measured as UAS (unlabeled attachment score), the rate of successful parent identification, and LAS (labeled attachment score), the rate of successful identification of both parent and syntactic function. In the SYN2015 and SYN2020, these rates are as follows:
korpus | UAS | LAS |
---|---|---|
SYN2015 | 88,48 % | 82,46 % |
SYN2020 | 92,39 % | 88,73 % |
Therefore, although syntactic annotation can be used as an approximate guide for further language research, we must keep in mind that it is not entirely reliable. The error rate is higher for less common syntactic functions and constructions, whereas the most frequent functions in expected contexts have an error rate lower than 5% (SYN2020) or 10% (SYN2015).
In dependency-based syntactic annotation, each token is assigned one „parent“, i.e. another token on which the given token is dependent, or alternatively the „root“ of the sentence, an external parent representing the entire sentence (e.g. the predicate in the main clause is dependent on the sentence „root“). One syntactic tag is also assigned to each token. Syntactic tags partially correspond to the usual syntactic functions such as predicate (Pred), subject (Sb), attribute (Atr) etc., and partially they have auxiliary functions, most often assigned to synsemantic words (e.g. AuxP for prepositions) and punctuation marks (AuxK for punctuation marks at the end of a sentence).
The syntactic structure of a sentence can be illustrated using the example Plavidlo bude převážet turisty mezi minaretem a zříceninou Janohrad v parku. The sentence is shown as a dependency tree, where the branches represent the dependency relations between the individual words. In the dependency tree, tokens with basic syntax functions are written in red, tokens with auxiliary functions are green and graphic symbols are yellow.
The technical root of the dependency tree (top left, with the sentence identifier) governs the predicate převážet (Pred) and final punctuation mark (AuxK). The predicate governs the subject Plavidlo (Sb) and object turisty (Obj). The auxiliary verb bude (AuxV) forms one verbal unit with the verb převážet, and it is therefore also depicted as being dependent on this node. Furthermore, the verb převážet also governs the coordinated prepositional phrase with a locative adverbial function mezi minaretem a zříceninou Janohrad. In PDT, on the level of surface syntax the preposition's function is to formally govern, so the verb převážet governs the preposition (AuxP), which in turn governs the representative of the coordinating relation, the conjunction a (Coord). Both coordinated nouns from the prepositional phrase minaretem a zříceninou are dependent on the coordination node (Adv_Co: Adv, i.e. adverbial function, is furnished with an additional component _Co, which indicates coordinated members). The noun zříceninou is further modified by the incongruent attribute Janohrad (Atr). The coordinating node (Coord) also governs the prepositional phrase v parku, which itself is not coordinated, but modifies both members of the coordination, i.e. both the word minaretem and the word zříceninou. Again, the preposition v (AuxP) is dependent on the governing member, and the noun parku with the attributive function (Atr) is in turn dependent on the preposition.
For every sentence in a syntactically annotated corpus (currently SYN2015 and SYN2020), a syntactic structure can be visualised by clicking on a little icon representing a syntactic tree on the left side of a concordance line (marked with a red circle in the following image):
By clicking on the icon, a representation of the syntactic structure is displayed (a syntactic tree). The left-to-right order in the syntactic representation corresponds to the order in the sentence, the dependent tokens are placed below the governing tokens. The following image represents the structure of a subordinate clause from the SYN2020 corpus “aby ses měla nač vymluvit” [so that you can find an excuse]. The sentence contains three so called agreggates, i.e. tokens containing two or more syntactic words:
It is possible to formulate queries in KonText based on syntactic properties of words. For this purpose, each token is assigned several attributes. All syntactic attributes are described in a separate entry. The basic syntactic attributes assigned to all tokens are:
Other attributes allow us to search based on the „parent“ properties. In the case of autosemantic words we can search based on the „effective parent“, which is the given word's closest autosemantic parent (or grandparent). In the previously mentioned example, this would mean that the word zříceninou, which is dependent on the verb převážet by way of coordination and the preposition mezi, would be assigned the following attributes:
afun="Adv_Co";
parent="-1", p_tag="J^--------------", p_lemma="a", p_afun="Coord";
eparent="-5, "ep_tag="Vf--------------", ep_lemma="převážet", ep_afun="Pred";
prep="mezi"
The corpus allows us to search based on these attributes, e.g. a search for all nouns in the accusative case with the syntactic function Obj and dependent on the verb převážet would look like this:
[afun="Obj" & tag="NN..4.*" & p_lemma="převážet"]
We can also search for all words (syntactic nouns) in the 7th case (instrumental) with the preposition mezi which are dependent on a verb in the infinitive: [prep="mezi" & case="7" & ep_tag="Vf.*"]
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— Tomáš Jelínek