In this paper, we present the results and main findings of our system for the DIACR-Ita 2020 Task. Our system focuses on using variations of training sets and different semantic detection methods. The task involves training, aligning and predicting a word’s vector change from two diachronic Italian corpora. We demonstrate that using Temporal Word Embeddings with a Compass C-BOW model is more effective compared to different approaches including Logistic Regression and a Feed Forward Neural Network using accuracy. Our model ranked 3rd with an accuracy of 83.3%
In this paper, we describe the creation of a diachronic corpus for Italian by exploiting the digi...
The use of contextualised word embeddings allowed for a relevant performance increase for almost all...
The use of contextualised word embeddings allowed for a relevant performance increase for almost all...
In this paper, we present the results and main findings of our system for the DIACR-Ita 2020 Task. O...
We present our systems and findings on unsupervised lexical semantic change for the Italian language...
This paper describes the first edition of the “Diachronic Lexical Semantics” (DIACR-Ita) task at the...
In recent years, there has been a significant increase in interest in lexical semantic change detect...
In this paper, we present our results related to the EVALITA 2020 challenge, DIACR-Ita, for semantic...
We present the results of our participation in the DIACR-Ita shared task on lexical semantic change ...
In this paper, we describe our method for detection of lexical semantic change (i.e., word sense cha...
We present the results of our participation in the DIACR-Ita shared task on lexical semantic change ...
This paper describes the first edition of the “Diachronic Lexical Seman-tics” (DIACR-Ita) task ...
This paper describes the first edition of the “Diachronic Lexical Semantics” (DIACR-Ita) task at the...
With the growing availability of digitized diachronic corpora, the need for tools capable of taking ...
In this paper, we describe the creation of a diachronic corpus for Italian by exploiting the digital...
In this paper, we describe the creation of a diachronic corpus for Italian by exploiting the digi...
The use of contextualised word embeddings allowed for a relevant performance increase for almost all...
The use of contextualised word embeddings allowed for a relevant performance increase for almost all...
In this paper, we present the results and main findings of our system for the DIACR-Ita 2020 Task. O...
We present our systems and findings on unsupervised lexical semantic change for the Italian language...
This paper describes the first edition of the “Diachronic Lexical Semantics” (DIACR-Ita) task at the...
In recent years, there has been a significant increase in interest in lexical semantic change detect...
In this paper, we present our results related to the EVALITA 2020 challenge, DIACR-Ita, for semantic...
We present the results of our participation in the DIACR-Ita shared task on lexical semantic change ...
In this paper, we describe our method for detection of lexical semantic change (i.e., word sense cha...
We present the results of our participation in the DIACR-Ita shared task on lexical semantic change ...
This paper describes the first edition of the “Diachronic Lexical Seman-tics” (DIACR-Ita) task ...
This paper describes the first edition of the “Diachronic Lexical Semantics” (DIACR-Ita) task at the...
With the growing availability of digitized diachronic corpora, the need for tools capable of taking ...
In this paper, we describe the creation of a diachronic corpus for Italian by exploiting the digital...
In this paper, we describe the creation of a diachronic corpus for Italian by exploiting the digi...
The use of contextualised word embeddings allowed for a relevant performance increase for almost all...
The use of contextualised word embeddings allowed for a relevant performance increase for almost all...