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6

You build your regex from a dictionary. Dictionaries aren't ordered, so the regex pattern can differ from time to time and thus produce different results. If you want "stable" results, I suggest you either use sorted(tokens_re.values()) or specify them in a list/tuple rather than the dictionary. For example you can specify them as list of pairs and then ...


3

You should not be using both filters on the same field, they will completely mess up your matching. If you need to match in a middle of a token, you use NGrams. If you only need to match from the start, you use EdgeNGrams. Never both together.


3

This is a very domain-specific task that we don't perform for you in CoreNLP. You should be able to make this work with a regular expression filter and a stopword filter on top of the CoreNLP tokenizer. Here's an example list of English stopwords.


3

Because symbol is not nul terminated you need to nul terminate it before passing it to strcat().


3

This is because you use wrong condition: outterNext = serialized.find_first_of(categoryDelim, outterPrev) != std::string::npos mean outterNext = (serialized.find_first_of(categoryDelim, outterPrev) != std::string::npos) so outterNext = 1 when serialized.find_first_of(categoryDelim, outterPrev) != std::string::npos I think you should avoid codes like ...


2

In stanford Corenlp, there is a stopword removal annotator which provides the functionality to remove the standord stopwords. You can also define custom stopwords here as per your need (i.e ---,<,. etc) You can see the example here: Properties props = new Properties(); props.put("annotators", "tokenize, ssplit, stopword"); ...


2

Just call Split() on each of the lines and keep them in a List. If you need an array you can always call ToArray() on the list: string readContents; using (StreamReader streamReader = new StreamReader(@"File.txt")) { readContents = streamReader.ReadToEnd(); string[] lines = readContents.Split('\r'); List<string> pieces = new ...


2

string readContents; using (StreamReader streamReader = new StreamReader(@"File.txt")) { readContents = streamReader.ReadToEnd(); string[] lines = readContents.Split('\r'); foreach (string s in lines) { string[] lines2 = s.Split('\t'); foreach (string s2 in lines2) { Console.WriteLine(s2); } ...


2

You can leverage PCRE regex power of capturing groups in look-aheads and subroutines to get the nested {...} substrings. A regex demo is available here. $re = "#(?=(\{(?>[^{}]|(?1))*+\}))#"; $str = "Hello {#name}! I'm a {%string|sentence|bit of {#random} text}"; preg_match_all($re, $str, $matches, PREG_OFFSET_CAPTURE); print_r($matches[1]); See ...


2

I have NLP version 0.1-7 and openNLP version 0.2-5 installed on my computer. There is not a function named tokenize anymore in the openNLP package. You can ask the maintainer about the old function. Alternatively, you can perform the following: install.packages("sos") library(sos) ???tokenize ???tokenize will search for the keyword tokenize in R ...


1

strtok has some internal state that you aren't taking into account. See here: http://www.cplusplus.com/reference/cstring/strtok/ This line only grabs the first character of the token: data[Tcount++] = *token; Then this line skips to the next token (due to internal state of strtok remembering location of last token): token = strtok(NULL, " "); ...


1

I just used the following code, which removed all the punctuation: tokens = nltk.wordpunct_tokenize(raw) type(tokens) text = nltk.Text(tokens) type(text) words = [w.lower() for w in text if w.isalpha()]


1

Since they are single chars, they are already terminal symbols. No need to make a token out of it. You can find the list of available parser tokens here: http://php.net/manual/en/tokens.php Have a look at a (pseudo) grammar: # Using a token product := T_NUMBER T_MULT_OPERATOR T_NUMBER # Using the plain char product := T_NUMBER '*' T_NUMBER What looks ...


1

From what you have explained what I got is that you want to do partial matches also like searching for "aterial_get". To satisfy all your requirement, you need to change the mapping of your field to have ngram token filter in the analyzer and without removing the special characters. A sample analyzer can look like { "settings":{ "analysis":{ ...


1

Change the rule for string-literal in lex.rkt to: [string-literal (:: #\" (:* char-literal1) #\")] Note the added 1.


1

To achieve this in the custom word-delimiter filter one needs to set "generate_word_parts" : true and "generate_number_parts" : true. This essentially ensures that an "alphanumeric token" when split should generate its numeric and word parts. Example filter would be as follows : { "settings" : { "analysis" : { "analyzer" : { ...


1

Yes, it's possible. Check the return value of the sscanf() with the first format string. If it does not equal the expected number, use the other format string for sscanf(). P.S. - I assume you have only two formats, can appear in a either-or fashion. EDIT: If you want a more flexible, robust and sleek way to do so and if you are able to drop the usage ...



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