By using a trigram model and fine-tuning a pretrained BERT model for sequence classification, we show that machine translation and human translation can be classified with an accuracy above chance level, which suggests that machine translation and human translation are different in a systematic way. The classification accuracy of machine translation is much higher than of human translation. We show that this may be explained by the difference in lexical diversity between machine translation and human translation. If machine translation has independent patterns from human translation, automatic metrics which measure the deviation of machine translation from human translation may conflate difference with quality. Our experiment with two diffe...
We address the task of automatically distinguishing between human-translated (HT) and machine transl...
We address the task of automatically distinguishing between human-translated (HT) and machine transl...
We address the task of automatically distinguishing between human-translated (HT) and machine transl...
By using a trigram model and fine-tuning a pretrained BERT model for sequence classification, we sho...
We address the task of automatically distinguishing between human-translated (HT) and machine transl...
We address the task of automatically distinguishing between human-translated (HT) and machine transl...
Constructing a classifier that distinguishes machine translations from human transla-tions is a prom...
Machine translation of human languages is a field almost as old as computers themselves. Recent appr...
Neural machine translation systems have revolutionized translation processes in terms of quantity an...
Neural machine translation systems have revolutionized translation processes in terms of quantity an...
Deep neural models tremendously improved machine translation. In this context, we investigate whethe...
In this thesis I aimed to demonstrate common translation mistakes of two statistical Machine Transla...
Comparisons to human performance are often made in quite general and exaggerated terms. Thus, it is ...
Comparisons to human performance are often made in quite general and exaggerated terms. Thus, it is ...
We address the task of automatically distinguishing between human-translated (HT) and machine transl...
We address the task of automatically distinguishing between human-translated (HT) and machine transl...
We address the task of automatically distinguishing between human-translated (HT) and machine transl...
We address the task of automatically distinguishing between human-translated (HT) and machine transl...
By using a trigram model and fine-tuning a pretrained BERT model for sequence classification, we sho...
We address the task of automatically distinguishing between human-translated (HT) and machine transl...
We address the task of automatically distinguishing between human-translated (HT) and machine transl...
Constructing a classifier that distinguishes machine translations from human transla-tions is a prom...
Machine translation of human languages is a field almost as old as computers themselves. Recent appr...
Neural machine translation systems have revolutionized translation processes in terms of quantity an...
Neural machine translation systems have revolutionized translation processes in terms of quantity an...
Deep neural models tremendously improved machine translation. In this context, we investigate whethe...
In this thesis I aimed to demonstrate common translation mistakes of two statistical Machine Transla...
Comparisons to human performance are often made in quite general and exaggerated terms. Thus, it is ...
Comparisons to human performance are often made in quite general and exaggerated terms. Thus, it is ...
We address the task of automatically distinguishing between human-translated (HT) and machine transl...
We address the task of automatically distinguishing between human-translated (HT) and machine transl...
We address the task of automatically distinguishing between human-translated (HT) and machine transl...
We address the task of automatically distinguishing between human-translated (HT) and machine transl...