farmed animal
Speciesism in AI: Evaluating Discrimination Against Animals in Large Language Models
Jotautaitė, Monika, Caviola, Lucius, Brewster, David A., Hagendorff, Thilo
As large language models (LLMs) become more widely deployed, it is crucial to examine their ethical tendencies. Building on research on fairness and discrimination in AI, we investigate whether LLMs exhibit speciesist bias -- discrimination based on species membership -- and how they value non-human animals. We systematically examine this issue across three paradigms: (1) SpeciesismBench, a 1,003-item benchmark assessing recognition and moral evaluation of speciesist statements; (2) established psychological measures comparing model responses with those of human participants; (3) text-generation tasks probing elaboration on, or resistance to, speciesist rationalizations. In our benchmark, LLMs reliably detected speciesist statements but rarely condemned them, often treating speciesist attitudes as morally acceptable. On psychological measures, results were mixed: LLMs expressed slightly lower explicit speciesism than people, yet in direct trade-offs they more often chose to save one human over multiple animals. A tentative interpretation is that LLMs may weight cognitive capacity rather than species per se: when capacities were equal, they showed no species preference, and when an animal was described as more capable, they tended to prioritize it over a less capable human. In open-ended text generation tasks, LLMs frequently normalized or rationalized harm toward farmed animals while refusing to do so for non-farmed animals. These findings suggest that while LLMs reflect a mixture of progressive and mainstream human views, they nonetheless reproduce entrenched cultural norms around animal exploitation. We argue that expanding AI fairness and alignment frameworks to explicitly include non-human moral patients is essential for reducing these biases and preventing the entrenchment of speciesist attitudes in AI systems and the societies they influence.
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Digital Livestock Farming Offers Mixed Outcomes for Farmed Animals - Stray Dog Institute
Smart farming, an increasingly common part of food production, refers broadly to the innovative use of sensors, robotics, and artificial intelligence (AI) to streamline agriculture. Field crop examples of smart farming include monitoring soil health using small sensors, spotting signs of disease in plants via drones, and facilitating connections between smaller-scale farmers through consumer electronic devices. These smart innovations offer potential time savings and crop optimization benefits for farmers and may contribute to the wiser use of resources in food production. Smart farming is also used in animal agriculture in forms such as Precision Livestock Farming (PLF) and Digital Livestock Farming (DLF). PLF uses sensors and small electronics to measure key indicators related to animals' physiology and behavior.
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Speciesist bias in AI -- How AI applications perpetuate discrimination and unfair outcomes against animals
Hagendorff, Thilo, Bossert, Leonie, Fai, Tse Yip, Singer, Peter
Massive efforts are made to reduce biases in both data and algorithms in order to render AI applications fair. These efforts are propelled by various high-profile cases where biased algorithmic decision-making caused harm to women, people of color, minorities, etc. However, the AI fairness field still succumbs to a blind spot, namely its insensitivity to discrimination against animals. This paper is the first to describe the 'speciesist bias' and investigate it in several different AI systems. Speciesist biases are learned and solidified by AI applications when they are trained on datasets in which speciesist patterns prevail. These patterns can be found in image recognition systems, large language models, and recommender systems. Therefore, AI technologies currently play a significant role in perpetuating and normalizing violence against animals. This can only be changed when AI fairness frameworks widen their scope and include mitigation measures for speciesist biases. This paper addresses the AI community in this regard and stresses the influence AI systems can have on either increasing or reducing the violence that is inflicted on animals, and especially on farmed animals.
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How stressed out are factory-farmed animals? AI might have the answer.
Facial recognition technology is rapidly becoming ubiquitous, used in everything from security cameras to smartphones. But in the near future, humans may not be the only ones to be digitally captured. Researchers are training forms of artificial intelligence to recognize individual animals by their faces alone -- and even discern their emotional state just by reading their expressions. Much of the research into animal facial expressions has focused on species like dogs and horses. But some of the most cutting-edge work is aimed at an unlikely subject: the farmed hog.
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