Home Technology peripherals AI AI challenges college entrance examination composition again, relying on powerful hard-core technology to achieve 'second' writing

AI challenges college entrance examination composition again, relying on powerful hard-core technology to achieve 'second' writing

Apr 09, 2023 pm 11:41 PM
AI composition college entrance examination

Yesterday (June 7), the 2022 National Unified College Entrance Examination kicked off. In the morning, the college entrance examination Chinese subject test ended, and the composition questions of the 7 sets of college entrance examination Chinese test papers were released. Artificial intelligence (AI) once again challenges college entrance examination essays. It is reported that Baidu AI virtual digital human challenged the college entrance examination composition writing after the college entrance examination Chinese test ended today, and completed 40 compositions in 40 seconds!

AI challenges college entrance examination composition again, relying on powerful hard-core technology to achieve 'second' writing

#It’s the college entrance examination time again. After 12 years of hard work, I’m just waiting to take the test. Today, the National College Entrance Examination Chinese subject test is over, and the composition questions of the seven sets of Chinese College Entrance Examination papers (including National Paper A, National Paper B, New College Entrance Examination Paper I, New College Entrance Examination Paper II, and three sets of independent proposition papers from Beijing, Tianjin, and Zhejiang) are also Already released.

For example, the National Paper A material composition ""A Dream of Red Mansions" writes about the 'Grand View Garden Examination Questions Correct' has a plot" write an article based on the relevant content of the material; the National Paper B "Beijing: City of Double Olympics" "Relevant materials, write an article with the theme of "Leaping, Leaping Again"; National New College Entrance Examination Paper I, National New College Entrance Examination Paper II, Tianjin Paper, and Zhejiang Paper are also material essay questions, while the Beijing Paper essay questions include micro-writing and choose one of the two questions.

In fact, no matter which set of college entrance examination Chinese test papers, the composition can be said to be an important part in widening the gap in college entrance examination Chinese scores. With the rapid development of AI technology, AI virtual digital humans are emerging in various industries and fields. Among them, as far as Chinese composition is concerned, artificial intelligence (AI) has walked into the examination room together with many college entrance examination students, challenged the college entrance examination composition, set off a peak showdown of "man-machine war", and defeated several writers.

It is said that the robot "Champion" developed by Google received a perfect score of 100 points from the expert judges who had participated in the college entrance examination essay grading in the 1-out-of-2 college entrance examination essay "Green Waters and Green Mountains". This also reflects from the side that AI's language processing ability is completely superior to the human camp. Today (the first day of the college entrance examination), AI virtual digital humans also challenge the college entrance examination essay again.

In fact, college entrance examination Chinese composition writing poses a great challenge to artificial intelligence (AI) capabilities. Some experts in the industry said that writing college entrance examination Chinese compositions by AI virtual digital people is more difficult than writing reviews, summaries, and advertising creative writing. It faces at least three major challenges: "question review" ability, "logic" ability, and "creativity" ability. As an AI candidate, Baidu digital personality Du Xiaoxiao challenged herself to complete 40 college entrance examination essays in 40 seconds during a live broadcast at 13:00 p.m.

According to the author’s understanding, the AI ​​virtual digital human is driven by Baidu Brain 7.0 core technology and integrates multi-modal interaction technology, 3D digital human modeling, natural language understanding, speech recognition, machine translation, etc. Technology, and the application of Baidu Wenxin large model, have strong ability to review, understand and create, avoid off-topic and boring articles, and have the quality assurance of "writing like a god".

In fact, it is nothing new that artificial intelligence (AI) can write. Xinhua News Agency, Agence France-Presse and other domestic and foreign news agencies have applied artificial intelligence (AI) to news reporting cases, and are widely active. In news cases such as finance and sports. Whether it is in terms of writing speed or article quality, it is obvious that artificial intelligence (AI) has won because it is based on powerful data and algorithm technology!

However, there is a saying that "art comes from life and is higher than life." After all, artificial intelligence (AI) cannot truly experience life like humans, nor can it express complex human emotions, and has no understanding of life. Ability... There must be a long way to go before we can completely replace writers, poets, reporters, editors and other related writing practitioners! ​

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