AI Assistants Boost Beginners More Than Experts, Study Shows Correlation

There once was an AI named Chat who was really good at repeating back information it already knew. One day, Chat was given to some office workers [1] to help them with their jobs. Some of the workers were experts at their jobs, while others were still learning.  


At first, Chat helped all the workers get more work done faster - even the experts! But soon, the experts noticed something funny. The workers who were still learning got way MORE help from Chat. The new workers improved a lot using Chat, doing their work faster and better than ever before!   


The experts wondered why Chat didn't help them as much. That's when they realized - that Chat is an expert at repeating back facts but can't come up with brand new ideas. So, for workers who already knew those facts, Chat didn't offer them that much new help. But for newer workers still learning those basics, Chat was able to teach them so much more!


This shows a correlation - as in, two things that relate to each other and change together. The more expert a worker already was, the less helpful Chat was for them. But for newer workers, Chat could help them almost as much as the experts! It's because of their different starting points. Chat has a limit to how expert it can be. So, the closer a worker already was to Chat's expertise, the less new stuff Chat offered them.


The experts and newbies improved at different rates thanks to Chat. Their own expertise compared to Chat's matters for how much more they can learn. That connection in how much they improve is the correlation!


The SDTEST® gives clues to someone's motivational values. However, additional polls can provide more pieces of the puzzle.


Imagine also giving an "A.I. and the end of civilization" poll. It asks people to rate at the agree or disagree level. 


Now imagine 100 people who took both tests. You could match up each person's SDTEST® colors with their rated answers about the danger of AI.


Comparing tests gives an expanded picture of values in action. More puzzle pieces make the whole image more apparent!


Multiple tests can work together, like colors blending on a palette. Other polls reveal what engages your values, like what is the perception of the danger of AI. Combined, they paint a richer picture of what motivates our thoughts and deeds.


Below you can read an abridged version of the results of our VUCA poll “A.I. and the end of civilization“. The full results of the poll are available for free in the FAQ section after login or registration.


人工智能和文明的終結

Country
Lang
-
Mail
重新計算
Critical_value_of_the_correlation_coefficient
正態分佈,威廉·西莉·格塞特(William Sealy Gosset)(學生) r = 0.0841
正態分佈,威廉·西莉·格塞特(William Sealy Gosset)(學生) r = 0.0841
非正態分佈,Spearman r = 0.0036
分配非正常普通的普通的普通的普通的普通的普通的普通的
所有問題
所有問題
1) 安全(您同意或不同意多少?)
2) 控制(您同意或不同意多少?)
1) 安全(您同意或不同意多少?)
Answer 1-
Weak_positive
0.0780
Weak_negative
-0.0203
Weak_positive
0.1076
Weak_negative
-0.1236
Weak_positive
0.0201
Weak_negative
-0.0558
Weak_positive
0.0219
Answer 2-
Weak_positive
0.0291
Weak_positive
0.0217
Weak_positive
0.0410
Weak_negative
-0.0004
Weak_positive
0.0115
Weak_negative
-0.0052
Weak_negative
-0.0701
Answer 2-
Weak_negative
-0.0080
Weak_negative
-0.0342
Weak_negative
-0.0029
Weak_positive
0.0559
Weak_negative
-0.0069
Weak_negative
-0.0144
Weak_negative
-0.0098
Answer 3-
Weak_positive
0.0084
Weak_positive
0.0286
Weak_positive
0.0246
Weak_negative
-0.0160
Weak_negative
-0.0595
Weak_negative
-0.0229
Weak_positive
0.0472
Answer 4-
Weak_positive
0.0068
Weak_negative
-0.0191
Weak_negative
-0.0277
Weak_positive
0.0170
Weak_positive
0.0155
Weak_positive
0.0253
Weak_negative
-0.0333
Answer 5-
Weak_negative
-0.0479
Weak_negative
-0.0531
Weak_negative
-0.0963
Weak_positive
0.0830
Weak_positive
0.0147
Weak_positive
0.0488
Weak_positive
0.0153
Answer 6-
Weak_negative
-0.0570
Weak_positive
0.0710
Weak_negative
-0.0416
Weak_negative
-0.0400
Weak_positive
0.0104
Weak_positive
0.0233
Weak_positive
0.0381
2) 控制(您同意或不同意多少?)
Answer 7-
Weak_positive
0.0256
Weak_positive
0.0433
Weak_positive
0.0777
Weak_positive
0.0717
Weak_negative
-0.0227
Weak_negative
-0.1053
Weak_negative
-0.0730
Answer 8-
Weak_positive
0.0252
Weak_negative
-0.0475
Weak_negative
-0.0387
Weak_negative
-0.0048
Weak_positive
0.0944
Weak_negative
-0.0292
Weak_negative
-0.0068
Answer 8-
Weak_positive
0.0467
Weak_negative
-0.0260
Weak_negative
-0.0239
Weak_negative
-0.0176
Weak_negative
-0.0308
Weak_positive
0.0257
Weak_positive
0.0326
Answer 9-
Weak_positive
0.0187
Weak_positive
0.0033
Weak_positive
0.0059
Weak_negative
-0.0393
Weak_positive
1.36E-5
Weak_negative
-0.0115
Weak_positive
0.0303
Answer 10-
Weak_negative
-0.0510
Weak_positive
0.0347
Weak_positive
0.0304
Weak_positive
0.0540
Weak_negative
-0.0681
Weak_positive
0.0425
Weak_negative
-0.0531
Answer 11-
Weak_negative
-0.1076
Weak_negative
-0.0399
Weak_negative
-0.0071
Weak_positive
0.0259
Weak_negative
-0.0102
Weak_positive
0.0906
Weak_positive
0.0099
Answer 12-
Weak_negative
-0.0100
Weak_positive
0.0500
Weak_negative
-0.0522
Weak_negative
-0.1026
Weak_positive
0.0041
Weak_positive
0.0517
Weak_positive
0.0743


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[1] https://www.ft.com/content/b2928076-5c52-43e9-8872-08fda2aa2fcf


2023.11.27
Valerii Kosenko
產品主SaaS Pet ProjectSDTEST®

Valerii於1993年獲得社會教育學家的資格,此後已將其知識應用於項目管理。
Valerii在2013年獲得了碩士學位和項目和計劃經理資格。在他的碩士課程中,他熟悉Project Roadmap(GPM Deutsche GesellschaftFürProjektmanagemente。V.)和螺旋動力學。
Valerii進行了各種螺旋動力測試,並利用他的知識和經驗來適應當前版本的SDTest。
Valerii是探索V.U.C.A.的不確定性的作者。使用螺旋動力學和心理學中的數學統計數據,有20多個國際民意測驗的概念。
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