Abraka
The author is dead, but what if they never lived? A reception experiment on Czech AI- and human-authored poetry
Marklová, Anna, Vinš, Ondřej, Vokáčová, Martina, Milička, Jiří
Large language models are increasingly capable of producing creative texts, yet most studies on AI-generated poetry focus on English -- a language that dominates training data. In this paper, we examine the perception of AI- and human-written Czech poetry. We ask if Czech native speakers are able to identify it and how they aesthetically judge it. Participants performed at chance level when guessing authorship (45.8\% correct on average), indicating that Czech AI-generated poems were largely indistinguishable from human-written ones. Aesthetic evaluations revealed a strong authorship bias: when participants believed a poem was AI-generated, they rated it as less favorably, even though AI poems were in fact rated equally or more favorably than human ones on average. The logistic regression model uncovered that the more the people liked a poem, the less probable was that they accurately assign the authorship. Familiarity with poetry or literary background had no effect on recognition accuracy. Our findings show that AI can convincingly produce poetry even in a morphologically complex, low-resource (with respect of the training data of AI models) Slavic language such as Czech. The results suggest that readers' beliefs about authorship and the aesthetic evaluation of the poem are interconnected.
- North America > United States > North Dakota > Billings County (0.04)
- Europe > Netherlands > North Holland > Amsterdam (0.04)
- Europe > Czechia > Prague (0.04)
- Africa > Nigeria > Delta State > Abraka (0.04)
- Research Report > New Finding (1.00)
- Research Report > Experimental Study (1.00)
- Information Technology > Artificial Intelligence > Natural Language > Large Language Model (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning > Regression (0.54)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (0.47)
Global PIQA: Evaluating Physical Commonsense Reasoning Across 100+ Languages and Cultures
Chang, Tyler A., Arnett, Catherine, Eldesokey, Abdelrahman, Sadallah, Abdelrahman, Kashar, Abeer, Daud, Abolade, Olanihun, Abosede Grace, Mohammed, Adamu Labaran, Praise, Adeyemi, Sharma, Adhikarinayum Meerajita, Gupta, Aditi, Iyigun, Afitab, Simplício, Afonso, Essouaied, Ahmed, Chorana, Aicha, Eppa, Akhil, Oladipo, Akintunde, Ramesh, Akshay, Dorkin, Aleksei, Kondoro, Alfred Malengo, Aji, Alham Fikri, Çetintaş, Ali Eren, Hanbury, Allan, Dembele, Alou, Niksarli, Alp, Arroyo, Álvaro, Bajand, Amin, Khanna, Amol, Chkhaidze, Ana, Condez, Ana, Mkhonto, Andiswa, Hoblitzell, Andrew, Tran, Andrew, Poulis, Angelos, Majumder, Anirban, Vacalopoulou, Anna, Wong, Annette Kuuipolani Kanahele, Simonsen, Annika, Kovalev, Anton, S, Ashvanth., Lana, Ayodeji Joseph, Kinay, Barkin, Alhafni, Bashar, Busole, Benedict Cibalinda, Ghanem, Bernard, Nathani, Bharti, Đurić, Biljana Stojanovska, Agbonile, Bola, Bergsson, Bragi, Fischer, Bruce Torres, Tutar, Burak, Çınar, Burcu Alakuş, Kane, Cade J. Kanoniakapueo, Udomcharoenchaikit, Can, Arnett, Catherine, Helwe, Chadi, Nerella, Chaithra Reddy, Liu, Chen Cecilia, Nwokolo, Chiamaka Glory, España-Bonet, Cristina, Amol, Cynthia, Lee, DaeYeop, Arad, Dana, Dzenhaliou, Daniil, Pugacheva, Daria, Choi, Dasol, Abolade, Daud, Liu, David, Semedo, David, Popoola, Deborah, Mataciunas, Deividas, Nyaboke, Delphine, Kumar, Dhyuthy Krishna, Glória-Silva, Diogo, Tavares, Diogo, Goyal, Divyanshu, Lee, DongGeon, Anajemba, Ebele Nwamaka, Grace, Egonu Ngozi, Mickel, Elena, Tutubalina, Elena, Herranen, Elias, Anand, Emile, Habumuremyi, Emmanuel, Ajiboye, Emuobonuvie Maria, Yulianrifat, Eryawan Presma, Adenuga, Esther, Rudnicka, Ewa, Itiola, Faith Olabisi, Butt, Faran Taimoor, Thekkekara, Fathima, Haouari, Fatima, Tjiaranata, Filbert Aurelian, Laakom, Firas, Grasso, Francesca, Orabona, Francesco, Periti, Francesco, Solomon, Gbenga Kayode, Ngo, Gia Nghia, Udhehdhe-oze, Gloria, Martins, Gonçalo, Challagolla, Gopi Naga Sai Ram, Son, Guijin, Abdykadyrova, Gulnaz, Einarsson, Hafsteinn, Hu, Hai, Saffari, Hamidreza, Zaidi, Hamza, Zhang, Haopeng, Shairah, Harethah Abu, Vuong, Harry, Kuulmets, Hele-Andra, Bouamor, Houda, Yu, Hwanjo, Debess, Iben Nyholm, Deveci, İbrahim Ethem, Hanif, Ikhlasul Akmal, Cho, Ikhyun, Calvo, Inês, Vieira, Inês, Manzi, Isaac, Daud, Ismail, Itzhak, Itay, Iuliia, null, Alekseenko, null, Belashkin, Ivan, Spada, Ivan, Zhelyazkov, Ivan, Brinton, Jacob, Isbarov, Jafar, Čibej, Jaka, Čuhel, Jan, Kocoń, Jan, Krito, Jauza Akbar, Purbey, Jebish, Mickel, Jennifer, Za, Jennifer, Kunz, Jenny, Jeong, Jihae, Dávalos, Jimena Tena, Lee, Jinu, Magalhães, João, Yi, John, Kim, Jongin, Chataignon, Joseph, Imperial, Joseph Marvin, Thevakumar, Jubeerathan, Land, Judith, Jiang, Junchen, Kim, Jungwhan, Sirts, Kairit, R, Kamesh, V, Kamesh, Tshinu, Kanda Patrick, Kukk, Kätriin, Ponkshe, Kaustubh, Huseynova, Kavsar, He, Ke, Buchanan, Kelly, Sarveswaran, Kengatharaiyer, Zaman, Kerem, Mrini, Khalil, Kyars, Kian, Kruusmaa, Krister, Chouhan, Kusum, Krishnakumar, Lainitha, Sánchez, Laura Castro, Moscoso, Laura Porrino, Choshen, Leshem, Sencan, Levent, Øvrelid, Lilja, Alazraki, Lisa, Ehimen-Ugbede, Lovina, Thevakumar, Luheerathan, Thavarasa, Luxshan, Malik, Mahnoor, Keita, Mamadou K., Jangid, Mansi, De Santis, Marco, García, Marcos, Suppa, Marek, D'Ciofalo, Mariam, Ojastu, Marii, Sikander, Maryam, Narayan, Mausami, Skandalis, Maximos, Mehak, Mehak, Bozkurt, Mehmet İlteriş, Workie, Melaku Bayu, Velayuthan, Menan, Leventhal, Michael, Marcińczuk, Michał, Potočnjak, Mirna, Shafiei, Mohammadamin, Sharma, Mridul, Indoria, Mrityunjaya, Habibi, Muhammad Ravi Shulthan, Kolić, Murat, Galant, Nada, Permpredanun, Naphat, Maugin, Narada, Corrêa, Nicholas Kluge, Ljubešić, Nikola, Thomas, Nirmal, de Silva, Nisansa, Joshi, Nisheeth, Ponkshe, Nitish, Habash, Nizar, Udeze, Nneoma C., Thomas, Noel, Ligeti-Nagy, Noémi, Coulibaly, Nouhoum, Faustin, Nsengiyumva, Buliaminu, Odunayo Kareemat, Ogundepo, Odunayo, Fejiro, Oghojafor Godswill, Funmilola, Ogundipe Blessing, God'spraise, Okechukwu, Samuel, Olanrewaju, Oluwaseun, Olaoye Deborah, Akindejoye, Olasoji, Popova, Olga, Snissarenko, Olga, Chiemezie, Onyinye Anulika, Kinay, Orkun, Tursun, Osman, Moses, Owoeye Tobiloba, Joshua, Oyelade Oluwafemi, Fiyinfoluwa, Oyesanmi, Gamallo, Pablo, Fernández, Pablo Rodríguez, Arora, Palak, Valente, Pedro, Rupnik, Peter, Ekiugbo, Philip Oghenesuowho, Sahoo, Pramit, Prokopidis, Prokopis, Niau-Puhipau, Pua, Yahya, Quadri, Mignone, Rachele, Singhal, Raghav, Kadiyala, Ram Mohan Rao, Merx, Raphael, Afolayan, Rapheal, Rajalakshmi, Ratnavel, Ghosh, Rishav, Oji, Romina, Solis, Ron Kekeha, Guerra, Rui, Zawar, Rushikesh, Bashir, Sa'ad Nasir, Alzaabi, Saeed, Sandeep, Sahil, Batchu, Sai Pavan, Kantareddy, SaiSandeep, Pranida, Salsabila Zahirah, Buchanan, Sam, Rutunda, Samuel, Land, Sander, Sulollari, Sarah, Ali, Sardar, Sapkota, Saroj, Tautvaisas, Saulius, Sen, Sayambhu, Banerjee, Sayantani, Diarra, Sebastien, M, SenthilNathan., Lee, Sewoong, Shah, Shaan, Venkitachalam, Shankar, Djurabaeva, Sharifa, Ibejih, Sharon, Dutta, Shivanya Shomir, Gupta, Siddhant, Suárez, Silvia Paniagua, Ahmadi, Sina, Sukumar, Sivasuthan, Song, Siyuan, A., Snegha, Sofianopoulos, Sokratis, Simon, Sona Elza, Benčina, Sonja, Gvasalia, Sophie, More, Sphurti Kirit, Dragazis, Spyros, Kaufhold, Stephan P., S, Suba., AlRashed, Sultan, Ranathunga, Surangika, Someya, Taiga, Pungeršek, Taja Kuzman, Haklay, Tal, Jibril, Tasi'u, Aoyama, Tatsuya, Abashidze, Tea, Cruz, Terenz Jomar Dela, Blevins, Terra, Nikas, Themistoklis, Idoko, Theresa Dora, Do, Thu Mai, Chubakov, Tilek, Gargiani, Tommaso, Rathore, Uma, Johannesen, Uni, Ugwu, Uwuma Doris, Putra, Vallerie Alexandra, Kumar, Vanya Bannihatti, Jeyarajalingam, Varsha, Arzt, Varvara, Nedumpozhimana, Vasudevan, Ondrejova, Viktoria, Horbik, Viktoryia, Kummitha, Vishnu Vardhan Reddy, Dinić, Vuk, Sewunetie, Walelign Tewabe, Wu, Winston, Zhao, Xiaojing, Diarra, Yacouba, Nikankin, Yaniv, Mathur, Yash, Chen, Yixi, Li, Yiyuan, Xavier, Yolanda, Belinkov, Yonatan, Abayomi, Yusuf Ismail, Alyafeai, Zaid, Shan, Zhengyang, Tam, Zhi Rui, Tang, Zilu, Nadova, Zuzana, Abbasi, Baber, Biderman, Stella, Stap, David, Ataman, Duygu, Schmidt, Fabian, Gonen, Hila, Wang, Jiayi, Adelani, David Ifeoluwa
To date, there exist almost no culturally-specific evaluation benchmarks for large language models (LLMs) that cover a large number of languages and cultures. In this paper, we present Global PIQA, a participatory commonsense reasoning benchmark for over 100 languages, constructed by hand by 335 researchers from 65 countries around the world. The 116 language varieties in Global PIQA cover five continents, 14 language families, and 23 writing systems. In the non-parallel split of Global PIQA, over 50% of examples reference local foods, customs, traditions, or other culturally-specific elements. We find that state-of-the-art LLMs perform well on Global PIQA in aggregate, but they exhibit weaker performance in lower-resource languages (up to a 37% accuracy gap, despite random chance at 50%). Open models generally perform worse than proprietary models. Global PIQA highlights that in many languages and cultures, everyday knowledge remains an area for improvement, alongside more widely-discussed capabilities such as complex reasoning and expert knowledge. Beyond its uses for LLM evaluation, we hope that Global PIQA provides a glimpse into the wide diversity of cultures in which human language is embedded.
- Education > Educational Setting (0.67)
- Leisure & Entertainment > Sports (0.67)
- Government (0.67)
The IgboAPI Dataset: Empowering Igbo Language Technologies through Multi-dialectal Enrichment
Emezue, Chris Chinenye, Okoh, Ifeoma, Mbonu, Chinedu, Chukwuneke, Chiamaka, Lal, Daisy, Ezeani, Ignatius, Rayson, Paul, Onwuzulike, Ijemma, Okeke, Chukwuma, Nweya, Gerald, Ogbonna, Bright, Oraegbunam, Chukwuebuka, Awo-Ndubuisi, Esther Chidinma, Osuagwu, Akudo Amarachukwu, Nmezi, Obioha
The Igbo language is facing a risk of becoming endangered, as indicated by a 2025 UNESCO study. This highlights the need to develop language technologies for Igbo to foster communication, learning and preservation. To create robust, impactful, and widely adopted language technologies for Igbo, it is essential to incorporate the multi-dialectal nature of the language. The primary obstacle in achieving dialectal-aware language technologies is the lack of comprehensive dialectal datasets. In response, we present the IgboAPI dataset, a multi-dialectal Igbo-English dictionary dataset, developed with the aim of enhancing the representation of Igbo dialects. Furthermore, we illustrate the practicality of the IgboAPI dataset through two distinct studies: one focusing on Igbo semantic lexicon and the other on machine translation. In the semantic lexicon project, we successfully establish an initial Igbo semantic lexicon for the Igbo semantic tagger, while in the machine translation study, we demonstrate that by finetuning existing machine translation systems using the IgboAPI dataset, we significantly improve their ability to handle dialectal variations in sentences.
- North America > United States > California > Los Angeles County > Los Angeles (0.14)
- Asia > Indonesia > Bali (0.04)
- Africa > Nigeria > Oyo State > Ibadan (0.04)
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