Latent Semantic Indexing (LSI) is a technique used in natural language processing (NLP) to analyse and represent the meaning of a text.
LSI uses a mathematical model to identify patterns of similarity between words and documents, creating a vector representation of the text that reflects its semantic content.
This technique is commonly used in search engines and recommender systems to improve the accuracy of results and suggestions, as it can identify subtle semantic relationships between words and documents that are not evident in their literal form.
In this article we are going to focus on how artificial intelligence (AI) can increase efficiency and reduce costs for your company by [...]
Read More »Big data analytics is the process of analyzing large and complex data sources to uncover trends, patterns, customer behaviors, and other data sources [...]
Read More »The integration of tools for predictive analytics is already commonplace in large companies, but thanks to the evolution and, above all, to the dem [...]
Read More »You are probably wondering, what is surety insurance and how does it help your company? In today's economic environment, [...]
Read More »