www射-国产免费一级-欧美福利-亚洲成人福利-成人一区在线观看-亚州成人

USEUROPEAFRICAASIA 中文雙語Fran?ais
China
Home / China / Across America

Chinese researchers' artificial intelligence outwits humans on verbal IQ test

By William Hennelly | China Daily USA | Updated: 2015-07-02 11:02

Microsoft and university researchers in China have proven that we may just talk a good game when it comes to competing verbally with computers.

Computers are known for their mathematical proficiency, but the nuances and whimsy of human verbal expression are usually beyond their ken.

A five-member team developed an artificial intelligence (AI) program with the goal of performing well on verbal sections of IQ tests.

The findings suggest machines could be closer to approaching human intelligence, the researchers wrote in a study, titled Solving Verbal Comprehension Questions in IQ Test by Knowledge-Powered Word Embedding, which they posted to the online database arXivl on June 17.

The researchers gave a set of IQ test questions to their computer program and to a group of 200 people with different levels of education. The test-takers were recruited through Amazon Mechanical Turk, a crowdsourcing platform. The program beat the average score of the test group.

Researchers took an approach known as "deep learning", which involves building up abstract representations of concepts from raw data. The researchers used the method to learn the different representations of words, a technique known as word embedding.

And then they came up with a way to solve the test problems.

The AI's results were surprising, although the machine didn't do as well against people with master's or doctorate degrees.

The report described the approach:

"First, we build a classifier to recognize the specific type

of verbal questions. According to previous studies, verbal

questions usually include sub-types like analogy, classification, synonym and antonym.

"For different types of questions, different kinds of relationships need to be considered and the solvers could have different forms. Therefore, with an effective question-type classifier, we may solve the questions in a divide-and-conquer manner and achieve high accuracy.

"Second, we obtain distributed representations of words and relations by leveraging a novel word-embedding method that considers the multi-sense nature of words and the relational knowledge among words (or their senses) contained in dictionaries.

"For each polysemous word (those with multiple meanings), we retrieve its number of senses from a dictionary, and conduct clustering on all its context windows in the corpus.

"Third, for each specific type of questions, we propose a simple yet effective solver based on the obtained distributed word representations and relation representations."

The report said the researchers then attached "the example sentences for every sense in the dictionary to the clusters, such that we can tag the polysemous word in each context window with a specific word sense".

It said that "the learning of word-sense representations and relation representations interacts with each other, to effectively incorporate the relational knowledge obtained from dictionaries".

They concluded that "the results are highly encouraging, indicating that with appropriate uses of the deep learning technologies, we could be a further small step closer to human intelligence".

Actually, I kind of had some trouble comprehending the report, which means I would probably lose to the computer.

The researchers were encouraged: "In the future, we plan to leverage more types of knowledge from the knowledge graph to enhance the power of obtaining word-sense and relation embeddings. Moreover, we will explore new frameworks based on deep learning or other AI techniques to solve other parts of IQ tests beyond verbal comprehension questions."

The research team included Huazheng Wang and Fei Tian, of the Department of Computer Science at the University of Science and Technology of China in Hefei, Anhui province, and researchers Bin Yao, Tie-Yan Liu and Jiang Bian at Microsoft.

Contact the writer at williamhennelly@chinadailyusa.com

Polar icebreaker Snow Dragon arrives in Antarctic
Xi's vision on shared future for humanity
Air Force units explore new airspace
Premier Li urges information integration to serve the public
Dialogue links global political parties
Editor's picks
Beijing limits signs attached to top of buildings across city
Copyright 1995 - . All rights reserved. The content (including but not limited to text, photo, multimedia information, etc) published in this site belongs to China Daily Information Co (CDIC). Without written authorization from CDIC, such content shall not be republished or used in any form. Note: Browsers with 1024*768 or higher resolution are suggested for this site.
License for publishing multimedia online 0108263

Registration Number: 130349
FOLLOW US
主站蜘蛛池模板: 最新国产一区二区精品久久 | 国内自拍亚洲 | 性久久久久久久久久 | 免费看成人www的网站软件 | 日本不卡一区视频 | 成年人网站在线观看视频 | 中国精品视频一区二区三区 | 一二三区视频 | 欧美一级高清在线观看 | 免费特黄一区二区三区视频一 | 日韩三级在线观看视频 | 一级特黄一欧美俄罗斯毛片 | 天堂素人搭讪系列嫩模在线观看 | 久久久久久久久久久96av | 久久香蕉国产观看猫咪3atv | 国产精品v欧美精品v日本精 | 亚洲欧美日韩综合在线一区二区三区 | 免看一级a一片成人123 | 国产精品成人aaaaa网站 | 日韩美女一级片 | 日本一级特黄aa毛片免费观看 | 久久久国产精品网站 | 亚洲精品午夜一区二区在线观看 | 欧美videos娇小 | 国产成人精品久久一区二区小说 | 男女做性免费视频软件 | 99在线热视频只有精品免费 | 欧美另类视频一区二区三区 | 亚洲男人a天堂在线2184 | 农村寡妇偷毛片一级 | 亚洲 欧美 激情 另类 校园 | 国产精品高清在线 | 中文字幕亚洲欧美日韩不卡 | 日本一级在线播放线观看免 | 国产日韩视频在线观看 | 狠狠色狠狠色综合久久第一次 | 亚洲第四页 | 久草综合在线观看 | 国产成人在线免费观看 | 精品国产区一区二区三区在线观看 | 一 级 黄 色 片生活片 |