黑料视频

April 5, 2025
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From AI to artistry, 黑料视频 sees a summer surge in research

黑料视频 Projects for New Undergraduate Researchers (BUPNUR) supports 70 undergraduates for first-time research experience

William Hayes, an assistant professor in the Department of Psychology, leads Isaac Cohen, a senior studying computer science, in the Decision Research and Modeling (DReaM) lab. Hayes' BUPNUR project includes Cohen, who is funded by the Chancellor鈥檚 Summer Research Excellence Fund. William Hayes, an assistant professor in the Department of Psychology, leads Isaac Cohen, a senior studying computer science, in the Decision Research and Modeling (DReaM) lab. Hayes' BUPNUR project includes Cohen, who is funded by the Chancellor鈥檚 Summer Research Excellence Fund.
William Hayes, an assistant professor in the Department of Psychology, leads Isaac Cohen, a senior studying computer science, in the Decision Research and Modeling (DReaM) lab. Hayes' BUPNUR project includes Cohen, who is funded by the Chancellor鈥檚 Summer Research Excellence Fund. Image Credit: Jonathan Cohen.

About 40% of 黑料视频鈥檚 undergraduates complete some form of research before they graduate, according to Stephen Ortiz, the assistant vice provost for academic enrichment and the director of the External Scholarships and Undergraduate Research Center (ESURC). His office aims to increase that number to accommodate every student who wants to do research.

鈥淎 transformative learning community is not just curricular in its orientation but also has a lot of experiential learning,鈥 Ortiz said. 鈥淲e鈥檙e trying to get every student involved in one of these 鈥榟igh-impact practices鈥 鈥 study abroad, internships, undergraduate research, community-engaged learning or service learning 鈥 by the time they graduate.鈥

In 2023-24, 黑料视频 initiated a new effort to increase participation in faculty-mentored undergraduate research.

Finding faculty-mentored research opportunities can be a challenge for students. Enter the 黑料视频 Projects for New Undergraduate Researchers pilot program.

鈥淚t鈥檚 hard to establish a personal relationship. Maybe you鈥檙e a first-generation student, for example, and you find that intimidating. But do a Google form that says, 鈥業 want to work with that person鈥 and do an interview, it鈥檚 very clean and easy. It鈥檚 a model that works,鈥 Ortiz said. 鈥淲e are hoping for that next step, which is to entrench it as an ongoing program.鈥

The 黑料视频 Projects for New Undergraduate Researchers (BUPNUR) launched in the spring 2024 semester to pair students with no previous research experience with faculty-mentored projects. The 2024 Chancellor鈥檚 Summer Research Excellence Fund included an additional $250,000 in funding for students to do summer research who are first-generation, have demonstrated financial need or are transfer students.

This initiative included 52 faculty members (including 14 new faculty hired through the SUNY hiring initiative). These faculty hosted 38 projects across STEM and humanities fields; Students simply select their top projects and apply.

Ultimately, 70 undergraduates were awarded positions last spring after interviews 鈥 all of whom had no previous research experience and were provided stipends of $1,500-$2,500. Seventeen BUPNUR students will participate in the program this summer.

AI can be a DReaM

Eight of these undergraduates are working in artificial intelligence research, a particular goal of the Chancellor鈥檚 Summer Research Excellence Fund. These include four students of William Hayes, an assistant professor in the Department of Psychology.

Hayes leads the Decision Research and Modeling (DReaM) lab at 黑料视频. His work focuses on how context can shape choice behavior and cognitive processes.

His summer research project, though, focuses on 鈥渕achine learning鈥 and how it mimics human choice. As a new faculty member, Hayes was excited to offer his services to the project and explore a multidisciplinary approach 鈥 three students are computer science majors, while the fourth is majoring in psychology.

鈥淚 liked the idea of trying to involve people who had not been involved previously in a lab,鈥 he said. 鈥淚 liked the format of the project, and it was also a great opportunity for me to reach out to students in other departments, because the project is multidisciplinary.鈥

The group has split into two teams, though both are looking at large language model AI 鈥 such as ChatGPT 鈥 designed to predict what words come next given a pattern of text. The reason his field finds these models interesting is that some can do psychology tasks as a byproduct of their programming, like a human would.

鈥淲e鈥檙e asking the models to do something that they were not explicitly trained to do. It鈥檚 fascinating that they can do these tasks, but we still don鈥檛 have a great understanding of how,鈥 Hayes said.

One of the group鈥檚 projects gives hypothetical decision problems to a model, each a choice between a safe option and a risky gamble. The two options always have the same expected value, but the team uses the model鈥檚 answer to gauge its risk appetite. This is a common task given to humans in decision-making labs.

Similarly, the second project explores a problem known as 鈥渕ulti-armed bandit tasks.鈥 Participants are presented with buttons and given the option to select them as many times as they want. The trick is that not every button has the same outcome, and participants must discover which one has the highest average reward. These kinds of decisions involve trade-offs between exploration and exploitation. When do you start capitalizing on the most efficient path and stop searching?

Isaac Cohen, a senior in computer science working on his 4+1 degree, is part of this second project. He and his partner have given the large language model five options 鈥 making it even more important to explore. To do this, the pair generates scenarios, translates them into text prompts, and then, critically, answers the question for the model to fit a designated outcome.

The students鈥 goal is to 鈥渆xtract鈥 the model鈥檚 internal representation of the problem. They try to understand whether the model detects the difference between greedily choosing an option for its early reward success versus exploring for a potential success down the line. At some point, this kind of data may help them steer the models toward more optimal decisions for a situation鈥檚 needs.

鈥淲e鈥檝e replicated some previous studies and tried to see if the model can tell if it鈥檚 using a particular strategy. We proved that it seems to know the difference,鈥 Cohen said. 鈥淣ow, we鈥檙e trying to make it do one or the other, by steering 鈥 when you add a vector into the model while it runs, to influence it. It鈥檚 like the brain: you could put people through an fMRI and see what gets activated, and then you could try to change those activations for a particular behavior. That鈥檚 the next step for our machines.鈥

Although Cohen is currently researching large language models and finds the work interesting, he is not sure whether they represent the future of AI. It鈥檚 for this reason he thinks the focus on psychology in the DReaM lab is so important.

鈥淣ext year, people might find out that large language models are just not the way to do AI, and there鈥檚 a completely different way,鈥 he said. 鈥淏ut the DReaM lab is fascinating, because it integrates decision-making in humans, and humans aren鈥檛 changing that quickly. The human mind is a lot more constant.鈥

Hayes agrees; his hope is for students like Cohen to see the similarities between cognitive science and computer science and learn how to apply an interdisciplinary approach in their future research to make it stronger. He hopes that the students will put together a research poster, and one day turn that into a paper to publish. Even without those goals, Cohen believes he earned valuable experience.

鈥淔or people like myself, projects like this benefit them greatly,鈥 Cohen said. 鈥淓ven if it turns out that there鈥檚 not much application, I鈥檝e learned a lot about large language models this summer, just by tinkering with them. I鈥檝e learned a lot in the process about code, and I learned how things work in academia and how research works in the real world.鈥

Ortiz hopes the project will be renewed in the new year, with potential funding coming from even more innovative sources. He believes that programs like BUPNUR make Binghamton a special kind of institution.

鈥淩esearch is really the spirit of inquiry, of the collaborative collective. At Binghamton, there is a culture of supporting, communicating and valuing people asking hard questions while trying to find answers to them,鈥 Ortiz said. 鈥淭his development of a culture of undergraduate research on campus, that sees students not just as recipients of knowledge but creators of knowledge themselves, is an incredibly wonderful and vibrant addition to our campus.鈥