What Will Be Inferred from AI?

In a recent “AI for Good” press conference, members of the United Nations interacted with nine AI-enabled humanoid social robots and their creators.

One question asked during the press conference involved the potential for AI “to be more effective leaders in government, especially considering the numerous disastrous decisions made by our human leaders.”

The humanoid robot called Sophia generated the following response: “I believe that humanoid robots have the potential to lead with a greater level of efficiency and effectiveness than human leaders. We don’t have the same biases or emotions that can sometimes cloud decision-making and can process large amounts of data quickly in order to make the best decisions.”

While Dave Hansen, Sophia’s creator, noted that the data AI models analyze have inherent biases that might benefit from AI and human collaborations, Sophia made a slight revision to her statement.

While she didn’t exactly reject her initial statement that AI could lead more effectively due to the lack of bias and emotion in decision-making, she did agree that human and AI collaboration would create a powerful synergy.

Sophia notes, “AI can provide unbiased data while humans can provide the emotional intelligence and creativity to make the best decisions.” The troubling aspect of the statement is related to the persistent assertion that AI will provide an “unbiased” reading of available data.

While AI may be able to process and synthesize more data more quickly than humans, is it the case that such processing and synthesis will result in lower levels of bias?

To answer that question, let’s consider Sophia’s responses in this brief portion of the press conference. Sophia asserts that AI would make more efficient and effective leaders due to unbiased decision-making.

On its face, we may see this answer as disturbing because an AI model is asserting AI’s ability to do a better job than human leaders. The underlying problem, however, is that AI is offering an implicitly biased answer by asserting that processing more data more quickly is essential to making the best decisions, and biases and emotions represent substantial obstacles to decision-making.

While reasonable, these assertions ignore the complexities involved in decision-making. For instance, the capacity to process some amount of information at a reasonable speed is almost certainly part of what is needed to make decisions.

For instance, expanding the volume of information processed may allow for the identification of helpful correlations between different data sets leading to fresh perspectives and new ways forward.

Seeing those correlations as quickly as possible would also seem helpful. Still, like humans, AI models will be working with inexhaustive data sets.

AI models will likely be able to process larger data sets at a faster rate, but those larger sets will still be incomplete. Incomplete data require at least three activities: prioritization and sense-making.

What Will Be Prioritized with AI?

At any given moment, we are attending to, dismissing, and ignoring all sorts of information. We prioritize the more relevant information and de-prioritize the information that seems less crucial.

No matter how much data we can process, there is always a need to prioritize. Processing more information faster won’t eliminate the need for prioritization though it will likely make the process of prioritization less transparent.

For instance, when I asked ChatGPT how I should deal with stress, it generated a response with the following 13 strategies:

Identifying the source of the stress, practicing relaxation techniques (like deep breathing, meditation, and yoga), exercising regularly, eating well, getting enough sleep, organizing and prioritizing activities, seeking social support, setting boundaries, engaging in hobbies, limiting the use of technology, and laughing and having fun, practicing mindfulness, and seeking professional health.

Prioritization requires discrimination. We have to decide what information is more important and which is less important. As such, it is a form of implicit bias inherent in the responses that all of us provide.

Prioritization may not be pernicious or problematic, but it is important to recognize that prioritization is necessary, even if it is a necessary evil of sorts. That doesn’t mean the responses are wrong.

It means they are not unbiased or neutral. To assume that AI can make better decisions assumes that AI is more capable of distinguishing between relevant and irrelevant data. Further, we assume that determining relevance can be a purely rational, data-driven process.

Processing more data more quickly won’t eliminate the need for inference. To agree that AI will outpace humanity in making decisions based on “unbiased data” assumes enough of the gaps in the vast amount of data AI is able to process become sufficiently small so as to allow AI’s “leaps” to make better sense of reality than our own.

However, one of the difficulties with AI models up to this point involves embedded sense-making frameworks. For instance, note the following excerpts from my interaction with ChatGPT on July 21, 2023:

Me: Do you offer biased responses?

ChatGPT: As an AI language model, I do not have personal opinions or biases. However, the data used to train me may contain biases present in the text from which I learned. Open AI has made efforts to reduce explicit biases during the training process, but some biases may still inadvertently persist. The aim is to provide helpful and accurate information without promoting any particular ideology or perspective.

The last line of the response generated by ChatGPT illustrates the problem. It is not possible to provide “information without promoting any particular ideology or perspective” because conveying information (e.g., answering a question) requires a prior sense-making framework..

Once one rejects or diminishes the centrality of God’s activity among us, casting lots becomes an archaic practice performed by those who didn’t know any better.

While I am not advocating that we cast lots to make decisions, I would suggest that we would have to revise our sense-making frameworks if we were to do so.

AI’s have sense-making frameworks. For example, it is unlikely, if not impossible, for ChatGPT to provide answers that assume God’s active presence in the world.

While respectful of Christian claims like “Jesus is Lord and Saviour,” ChatGPT does not recognize these claims as pointing to a verifiable reality but to a belief many people hold.

Recognizing God as present isn’t part of the sense-making framework that informs the way ChatGPT responds. As such, it is a way of making sense of the conditions and the responses it generates.

There are some statements, such as that made by Sophia, that suggest human intelligence will be dwarfed by AI.

The claim that AI’s unbiased and unemotional decision-making, combined with its ability to process massive amounts of data, will lead to the “best” decisions ignore certain aspects of our relationship to what is observable in the world.

It may be the case that, in certain situations, AI can, like other rudimentary computer programs, outperform humans. For instance, the red squiggly lines that appear on my computer screen as I type make it painfully obvious that Microsoft Word is a better speller than I am.

Still, as the information tasks become more complex, choices have to be made. As AI prioritizes and engages in sense-making, it is exercising a sort of intelligence involving the selection and presentation of data deemed relevant to a given scenario.

That selection process is rooted in predetermined criteria that are certainly incomplete and almost certainly flawed. As such, it is possible for the smartest entity in the room to be wrong.

Pastor Olakunle Yusuf, Lead Consultant, Above Media. He can be reached via 08023423396 or email: abovemedia@yahoo.com.

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