Measuring the semantic similarity of texts has a vital role in various tasks from the field of natural language processing. In this paper, we describe a set of experiments we carried out to evaluate and compare the performance of different approaches for measuring the semantic similarity of short texts. We perform a comparison of four models based on word embeddings: two variants of Word2Vec (one based on Word2Vec trained on a specific dataset and the second extending it with embeddings of word senses), FastText, and TF-IDF. Since these models provide word vectors, we experiment with various methods that calculate the semantic similarity of short texts based on word vectors. More precisely, for each of these models, we test five methods for...
Short snippets of written text play a central role in our day-to-day communication—SMS and email mes...
This paper presents a method for measuring the semantic similarity of texts using a corpus based mea...
We consider the following problem: given neural language models (embeddings) each of which is traine...
Measuring the semantic similarity of texts has a vital role in various tasks from the field of natur...
Measuring the semantic similarity of texts has a vital role in various tasks from the field of natur...
Evaluating semantic similarity of texts is a task that assumes paramount importance in real-world ap...
Levering data on social media, such as Twitter and Facebook, requires information retrieval algorith...
Estimating the semantic similarity between short texts plays an increasingly prominent role in many ...
Determining semantic similarity between texts is important in many tasks in information retrieval su...
This article discusses corpus-based and knowledge-based measures of text semantic similarity
This paper presents methods for measuring the semantic similarity of texts, where we evaluated diffe...
This paper presents a method for measuring the semantic similarity of texts, using corpus-based and ...
We propose in this paper a greedy method to the problem of measuring semantic similarity between sho...
In natural language processing, short-text semantic similarity (STSS) is a very prominent field. It ...
We assess the suitability of word embeddings for practical information retrieval scenarios. Thus, we...
Short snippets of written text play a central role in our day-to-day communication—SMS and email mes...
This paper presents a method for measuring the semantic similarity of texts using a corpus based mea...
We consider the following problem: given neural language models (embeddings) each of which is traine...
Measuring the semantic similarity of texts has a vital role in various tasks from the field of natur...
Measuring the semantic similarity of texts has a vital role in various tasks from the field of natur...
Evaluating semantic similarity of texts is a task that assumes paramount importance in real-world ap...
Levering data on social media, such as Twitter and Facebook, requires information retrieval algorith...
Estimating the semantic similarity between short texts plays an increasingly prominent role in many ...
Determining semantic similarity between texts is important in many tasks in information retrieval su...
This article discusses corpus-based and knowledge-based measures of text semantic similarity
This paper presents methods for measuring the semantic similarity of texts, where we evaluated diffe...
This paper presents a method for measuring the semantic similarity of texts, using corpus-based and ...
We propose in this paper a greedy method to the problem of measuring semantic similarity between sho...
In natural language processing, short-text semantic similarity (STSS) is a very prominent field. It ...
We assess the suitability of word embeddings for practical information retrieval scenarios. Thus, we...
Short snippets of written text play a central role in our day-to-day communication—SMS and email mes...
This paper presents a method for measuring the semantic similarity of texts using a corpus based mea...
We consider the following problem: given neural language models (embeddings) each of which is traine...