Ahmed Zeer

CL
h-index16
4papers
28citations
Novelty26%
AI Score24

4 Papers

CLApr 26, 2024Code
Introducing cosmosGPT: Monolingual Training for Turkish Language Models

H. Toprak Kesgin, M. Kaan Yuce, Eren Dogan et al.

The number of open source language models that can produce Turkish is increasing day by day, as in other languages. In order to create the basic versions of such models, the training of multilingual models is usually continued with Turkish corpora. The alternative is to train the model with only Turkish corpora. In this study, we first introduce the cosmosGPT models that we created with this alternative method. Then, we introduce new finetune datasets for basic language models to fulfill user requests and new evaluation datasets for measuring the capabilities of Turkish language models. Finally, a comprehensive comparison of the adapted Turkish language models on different capabilities is presented. The results show that the language models we built with the monolingual corpus have promising performance despite being about 10 times smaller than the others.

CLApr 25, 2024Code
Türkçe Dil Modellerinin Performans Karşılaştırması Performance Comparison of Turkish Language Models

Eren Dogan, M. Egemen Uzun, Atahan Uz et al.

The developments that language models have provided in fulfilling almost all kinds of tasks have attracted the attention of not only researchers but also the society and have enabled them to become products. There are commercially successful language models available. However, users may prefer open-source language models due to cost, data privacy, or regulations. Yet, despite the increasing number of these models, there is no comprehensive comparison of their performance for Turkish. This study aims to fill this gap in the literature. A comparison is made among seven selected language models based on their contextual learning and question-answering abilities. Turkish datasets for contextual learning and question-answering were prepared, and both automatic and human evaluations were conducted. The results show that for question-answering, continuing pretraining before fine-tuning with instructional datasets is more successful in adapting multilingual models to Turkish and that in-context learning performances do not much related to question-answering performances.

CLDec 3, 2024
Optimizing Large Language Models for Turkish: New Methodologies in Corpus Selection and Training

H. Toprak Kesgin, M. Kaan Yuce, Eren Dogan et al.

In this study, we develop and assess new corpus selection and training methodologies to improve the effectiveness of Turkish language models. Specifically, we adapted Large Language Model generated datasets and translated English datasets into Turkish, integrating these resources into the training process. This approach led to substantial enhancements in model accuracy for both few-shot and zero-shot learning scenarios. Furthermore, the merging of these adapted models was found to markedly improve their performance. Human evaluative metrics, including task-specific performance assessments, further demonstrated that these adapted models possess a greater aptitude for comprehending the Turkish language and addressing logic-based queries. This research underscores the importance of refining corpus selection strategies to optimize the performance of multilingual models, particularly for under-resourced languages like Turkish.

AIDec 3, 2024
Cosmos-LLaVA: Chatting with the Visual Cosmos-LLaVA: Görselle Sohbet Etmek

Ahmed Zeer, Eren Dogan, Yusuf Erdem et al.

In this study, a Turkish visual instruction model was developed and various model architectures and dataset combinations were analysed to improve the performance of this model. The Cosmos-LLaVA model, which is built by combining different large language models and image coders, is designed to overcome the deficiencies in the Turkish language. In the experiments, the effects of fine-tuning with various datasets on the model performance are analysed in detail. The results show that model architecture and dataset selection have a significant impact on performance. Bu çalışmada bir Türkçe görsel talimat modeli geliştirilerek bu modelin performansını artırmaya yönelik çeşitli model mimarileri ve veri kümesi kombinasyonları derinlemesine incelenmiştir. Farklı büyük dil modelleri ve görüntü kodlayıcılarının bir araya getirilmesiyle oluşturulan Cosmos-LLaVA modeli, Türkçe dilindeki eksiklikleri gidermeye yönelik olarak tasarlanmıştır. Yapılan deneylerde, çeşitli veri kümeleri ile yapılan ince ayarların model performansını nasıl etkilediği detaylı olarak ele alınmıştır. Sonuçlar, model mimarisi ve veri kümesi seçiminin performans üzerinde önemli bir etkiye sahip olduğunu göstermektedir.