fastrtext (version 0.3.3)

execute: Execute command on fastText model (including training)

Description

Use the same commands than the one to use for the command line.

Usage

execute(commands)

Arguments

commands

character of commands

Examples

Run this code
# NOT RUN {
# Supervised learning example
library(fastrtext)

data("train_sentences")
data("test_sentences")

# prepare data
tmp_file_model <- tempfile()

train_labels <- paste0("__label__", train_sentences[,"class.text"])
train_texts <- tolower(train_sentences[,"text"])
train_to_write <- paste(train_labels, train_texts)
train_tmp_file_txt <- tempfile()
writeLines(text = train_to_write, con = train_tmp_file_txt)

test_labels <- paste0("__label__", test_sentences[,"class.text"])
test_texts <- tolower(test_sentences[,"text"])
test_to_write <- paste(test_labels, test_texts)

# learn model
execute(commands = c("supervised", "-input", train_tmp_file_txt,
                     "-output", tmp_file_model, "-dim", 20, "-lr", 1,
                     "-epoch", 20, "-wordNgrams", 2, "-verbose", 1))

model <- load_model(tmp_file_model)
predict(model, sentences = test_sentences[1, "text"])

# Unsupervised learning example
library(fastrtext)

data("train_sentences")
data("test_sentences")
texts <- tolower(train_sentences[,"text"])
tmp_file_txt <- tempfile()
tmp_file_model <- tempfile()
writeLines(text = texts, con = tmp_file_txt)
execute(commands = c("skipgram", "-input", tmp_file_txt, "-output", tmp_file_model, "-verbose", 1))

model <- load_model(tmp_file_model)
dict <- get_dictionary(model)
get_word_vectors(model, head(dict, 5))
# }

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