Your browser does not support JavaScript!

Author: Tronserve admin

Friday 30th July 2021 01:32 AM

Google Refines Search To Better Understand Sloppy Queries


image cap
147 Views

Google on Friday announced its “biggest leap forward” in years in its search algorithm, offering an unusually detailed public explanation of its secret formula. The world’s most prevalent internet search engine said its latest refinement uses machine learning to augment how it manages conversationally phrased English-language requests.


“We’re making a significant improvement to how we understand queries, representing the biggest leap forward in the past five years, and one of the biggest leaps forward in the history of search,” Google search vice president Pandu Nayak said in an online post.


The California-based internet company just last year premiered a neural network-based technique for processing “natural language.” The company said the new effort is based on what it calls Bidirectional Encoder Representations from Transformers (BERT), which attempts to realize query words in the context of sentences for insights, according to Nayak.




Google software, like humans, has to grapple with understanding what people are trying to say despite the fact that they most likely is not expressing themselves clearly, or even be making sense. Some BERT models for figuring queries out are extremely strenuous they need to be handled by high-powered computer processors specifically designed for the cloud, according to Google.


“By applying BERT models to both ranking and featured snippets in search, we’re able to do a much better job helping you find useful information,” Nayak said.


“In fact, when it comes to ranking results, BERT will help search better understand one in 10 searches in the U.S. in English.” He gave the example of Google software now understanding that the word “to” in a query such as “2019 brazil traveler to usa need a visa” is about a Brazilian heading to the U.S. and not the other way around.




“Previously, our algorithms wouldn’t understand the importance of this connection, and we returned results about U.S. citizens traveling to Brazil,” Nayak said. “With BERT, search is able to grasp this nuance and know that the very common word ‘to’ actually matters a lot here, and we can provide a much more relevant result for this query.”


Google planned to spread the improvement to more languages and locations “over time.”


JAPAN TIMES


Share this post:


This is the old design: Please remove this section after work on the functionalities for new design

Posted on : Friday 30th July 2021 01:32 AM

Google Refines Search To Better Understand Sloppy Queries


none
Posted by  Tronserve admin
image cap

Google on Friday announced its “biggest leap forward” in years in its search algorithm, offering an unusually detailed public explanation of its secret formula. The world’s most prevalent internet search engine said its latest refinement uses machine learning to augment how it manages conversationally phrased English-language requests.


“We’re making a significant improvement to how we understand queries, representing the biggest leap forward in the past five years, and one of the biggest leaps forward in the history of search,” Google search vice president Pandu Nayak said in an online post.


The California-based internet company just last year premiered a neural network-based technique for processing “natural language.” The company said the new effort is based on what it calls Bidirectional Encoder Representations from Transformers (BERT), which attempts to realize query words in the context of sentences for insights, according to Nayak.




Google software, like humans, has to grapple with understanding what people are trying to say despite the fact that they most likely is not expressing themselves clearly, or even be making sense. Some BERT models for figuring queries out are extremely strenuous they need to be handled by high-powered computer processors specifically designed for the cloud, according to Google.


“By applying BERT models to both ranking and featured snippets in search, we’re able to do a much better job helping you find useful information,” Nayak said.


“In fact, when it comes to ranking results, BERT will help search better understand one in 10 searches in the U.S. in English.” He gave the example of Google software now understanding that the word “to” in a query such as “2019 brazil traveler to usa need a visa” is about a Brazilian heading to the U.S. and not the other way around.




“Previously, our algorithms wouldn’t understand the importance of this connection, and we returned results about U.S. citizens traveling to Brazil,” Nayak said. “With BERT, search is able to grasp this nuance and know that the very common word ‘to’ actually matters a lot here, and we can provide a much more relevant result for this query.”


Google planned to spread the improvement to more languages and locations “over time.”


JAPAN TIMES

Tags:
google sloppy queries algorithm internet search engine machine learning internet company bert models