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A language model is a probabilistic model of a natural language. [1] In 1980, the first significant statistical language model was proposed, and during the decade IBM performed ‘Shannon-style’ experiments, in which potential sources for language modeling improvement were identified by observing and analyzing the performance of human subjects in predicting or correcting text. [2]

Language models are useful for a variety of tasks, including speech recognition [3] (helping prevent predictions of low-probability (e.g. nonsense) sequences), machine translation, [4] natural language generation (generating more human-like text), optical character recognition, handwriting recognition, [5] grammar induction, [6] and information retrieval. [7] [8]

Large language models, currently their most advanced form, are a combination of larger datasets (frequently using scraped words from the public internet), feedforward neural networks, and transformers. They have superseded recurrent neural network-based models, which had previously superseded the pure statistical models, such as word n-gram language model.

Pure statistical models

Models based on word n-grams

A word n-gram language model is a purely statistical model of language. It has been superseded by recurrent neural network-based models, which have been superseded by large language models. [9] It is based on an assumption that the probability of the next word in a sequence depends only on a fixed size window of previous words. If only one previous word was considered, it was called a bigram model; if two words, a trigram model; if n − 1 words, an n-gram model. [10] Special tokens were introduced to denote the start and end of a sentence and .

To prevent a zero probability being assigned to unseen words, each word's probability is slightly lower than its frequency count in a corpus. To calculate it, various methods were used, from simple "add-one" smoothing (assign a count of 1 to unseen n-grams, as an uninformative prior) to more sophisticated models, such as Good–Turing discounting or back-off models.

Exponential

Maximum entropy language models encode the relationship between a word and the n-gram history using feature functions. The equation is

where is the partition function, is the parameter vector, and is the feature function. In the simplest case, the feature function is just an indicator of the presence of a certain n-gram. It is helpful to use a prior on or some form of regularization.

The log-bilinear model is another example of an exponential language model.

Skip-gram model

Skip-gram language model is an attempt at overcoming the data sparsity problem that preceding (i.e. word n-gram language model) faced. Words represented in an embedding vector were not necessarily consecutive anymore, but could leave gaps that are skipped over. [11]

Formally, a k-skip-n-gram is a length-n subsequence where the components occur at distance at most k from each other.

For example, in the input text:

the rain in Spain falls mainly on the plain

the set of 1-skip-2-grams includes all the bigrams (2-grams), and in addition the subsequences

the in, rain Spain, in falls, Spain mainly, falls on, mainly the, and on plain.

In skip-gram model, semantic relations between words are represented by linear combinations, capturing a form of compositionality. For example, in some such models, if v is the function that maps a word w to its n-d vector representation, then

where ≈ is made precise by stipulating that its right-hand side must be the nearest neighbor of the value of the left-hand side. [12] [13]

Neural models

Recurrent neural network

Continuous representations or embeddings of words are produced in recurrent neural network-based language models (known also as continuous space language models). [14] Such continuous space embeddings help to alleviate the curse of dimensionality, which is the consequence of the number of possible sequences of words increasing exponentially with the size of the vocabulary, furtherly causing a data sparsity problem. Neural networks avoid this problem by representing words as non-linear combinations of weights in a neural net. [15]

Large language models

A large language model (LLM) is a language model notable for its ability to achieve general-purpose language generation and other natural language processing tasks such as classification. LLMs acquire these abilities by learning statistical relationships from text documents during a computationally intensive self-supervised and semi-supervised training process. [16] LLMs can be used for text generation, a form of generative AI, by taking an input text and repeatedly predicting the next token or word. [17]

LLMs are artificial neural networks. The largest and most capable, as of March 2024, are built with a decoder-only transformer-based architecture while some recent implementations are based on other architectures, such as recurrent neural network variants and Mamba (a state space model). [18] [19] [20]

Up to 2020, fine tuning was the only way a model could be adapted to be able to accomplish specific tasks. Larger sized models, such as GPT-3, however, can be prompt-engineered to achieve similar results. [21] They are thought to acquire knowledge about syntax, semantics and "ontology" inherent in human language corpora, but also inaccuracies and biases present in the corpora. [22]

Some notable LLMs are OpenAI's GPT series of models (e.g., GPT-3.5 and GPT-4, used in ChatGPT and Microsoft Copilot), Google's PaLM and Gemini (the latter of which is currently used in the chatbot of the same name), xAI's Grok, Meta's LLaMA family of open-source models, Anthropic's Claude models, and Mistral AI's open source models.

Although sometimes matching human performance, it is not clear whether they are plausible cognitive models. At least for recurrent neural networks, it has been shown that they sometimes learn patterns that humans do not, but fail to learn patterns that humans typically do. [23]

Evaluation and benchmarks

Evaluation of the quality of language models is mostly done by comparison to human created sample benchmarks created from typical language-oriented tasks. Other, less established, quality tests examine the intrinsic character of a language model or compare two such models. Since language models are typically intended to be dynamic and to learn from data they see, some proposed models investigate the rate of learning, e.g., through inspection of learning curves. [24]

Various data sets have been developed for use in evaluating language processing systems. [25] These include:

  • Corpus of Linguistic Acceptability [26]
  • GLUE benchmark [27]
  • Microsoft Research Paraphrase Corpus [28]
  • Multi-Genre Natural Language Inference
  • Question Natural Language Inference
  • Quora Question Pairs [29]
  • Recognizing Textual Entailment [30]
  • Semantic Textual Similarity Benchmark
  • SQuAD question answering Test [31]
  • Stanford Sentiment Treebank [32]
  • Winograd NLI
  • BoolQ, PIQA, SIQA, HellaSwag, WinoGrande, ARC, OpenBookQA, NaturalQuestions, TriviaQA, RACE, MMLU (Massive Multitask Language Understanding), BIG-bench hard, GSM8k, RealToxicityPrompts, WinoGender, CrowS-Pairs. [33] ( LLaMa Benchmark)

See also

References

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  3. ^ Kuhn, Roland, and Renato De Mori (1990). "A cache-based natural language model for speech recognition". IEEE transactions on pattern analysis and machine intelligence 12.6: 570–583.
  4. ^ Andreas, Jacob, Andreas Vlachos, and Stephen Clark (2013). "Semantic parsing as machine translation" Archived 15 August 2020 at the Wayback Machine. Proceedings of the 51st Annual Meeting of the Association for Computational Linguistics (Volume 2: Short Papers).
  5. ^ Pham, Vu, et al (2014). "Dropout improves recurrent neural networks for handwriting recognition" Archived 11 November 2020 at the Wayback Machine. 14th International Conference on Frontiers in Handwriting Recognition. IEEE.
  6. ^ Htut, Phu Mon, Kyunghyun Cho, and Samuel R. Bowman (2018). "Grammar induction with neural language models: An unusual replication" Archived 14 August 2022 at the Wayback Machine. arXiv: 1808.10000.
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  8. ^ Hiemstra, Djoerd (1998). A linguistically motivated probabilistically model of information retrieval. Proceedings of the 2nd European conference on Research and Advanced Technology for Digital Libraries. LNCS, Springer. pp. 569–584. doi: 10.1007/3-540-49653-X_34.
  9. ^ Bengio, Yoshua; Ducharme, Réjean; Vincent, Pascal; Janvin, Christian (1 March 2003). "A neural probabilistic language model". The Journal of Machine Learning Research. 3: 1137–1155 – via ACM Digital Library.
  10. ^ Jurafsky, Dan; Martin, James H. (7 January 2023). "N-gram Language Models". Speech and Language Processing (PDF) (3rd edition draft ed.). Retrieved 24 May 2022.
  11. ^ David Guthrie; et al. (2006). "A Closer Look at Skip-gram Modelling" (PDF). Archived from the original (PDF) on 17 May 2017. Retrieved 27 April 2014.
  12. ^ Mikolov, Tomas; Chen, Kai; Corrado, Greg; Dean, Jeffrey (2013). "Efficient estimation of word representations in vector space". arXiv: 1301.3781 [ cs.CL].
  13. ^ Mikolov, Tomas; Sutskever, Ilya; Chen, Kai; Corrado irst4=Greg S.; Dean, Jeff (2013). Distributed Representations of Words and Phrases and their Compositionality (PDF). Advances in Neural Information Processing Systems. pp. 3111–3119. Archived (PDF) from the original on 29 October 2020. Retrieved 22 June 2015.{{ cite conference}}: CS1 maint: numeric names: authors list ( link)
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  15. ^ Bengio, Yoshua (2008). "Neural net language models". Scholarpedia. Vol. 3. p. 3881. Bibcode: 2008SchpJ...3.3881B. doi: 10.4249/scholarpedia.3881. Archived from the original on 26 October 2020. Retrieved 28 August 2015.
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  17. ^ Bowman, Samuel R. (2023). "Eight Things to Know about Large Language Models". arXiv: 2304.00612 [ cs.CL].
  18. ^ Peng, Bo; et al. (2023). "RWKV: Reinventing RNNS for the Transformer Era". arXiv: 2305.13048 [ cs.CL].
  19. ^ Merritt, Rick (25 March 2022). "What Is a Transformer Model?". NVIDIA Blog. Retrieved 25 July 2023.
  20. ^ Gu, Albert; Dao, Tri (1 December 2023), Mamba: Linear-Time Sequence Modeling with Selective State Spaces, arXiv: 2312.00752
  21. ^ Brown, Tom B.; Mann, Benjamin; Ryder, Nick; Subbiah, Melanie; Kaplan, Jared; Dhariwal, Prafulla; Neelakantan, Arvind; Shyam, Pranav; Sastry, Girish; Askell, Amanda; Agarwal, Sandhini; Herbert-Voss, Ariel; Krueger, Gretchen; Henighan, Tom; Child, Rewon; Ramesh, Aditya; Ziegler, Daniel M.; Wu, Jeffrey; Winter, Clemens; Hesse, Christopher; Chen, Mark; Sigler, Eric; Litwin, Mateusz; Gray, Scott; Chess, Benjamin; Clark, Jack; Berner, Christopher; McCandlish, Sam; Radford, Alec; Sutskever, Ilya; Amodei, Dario (December 2020). Larochelle, H.; Ranzato, M.; Hadsell, R.; Balcan, M.F.; Lin, H. (eds.). "Language Models are Few-Shot Learners" (PDF). Advances in Neural Information Processing Systems. 33. Curran Associates, Inc.: 1877–1901.
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  27. ^ "GLUE Benchmark". gluebenchmark.com. Archived from the original on 4 November 2020. Retrieved 25 February 2019.
  28. ^ "Microsoft Research Paraphrase Corpus". Microsoft Download Center. Archived from the original on 25 October 2020. Retrieved 25 February 2019.
  29. ^ Aghaebrahimian, Ahmad (2017), "Quora Question Answer Dataset", Text, Speech, and Dialogue, Lecture Notes in Computer Science, vol. 10415, Springer International Publishing, pp. 66–73, doi: 10.1007/978-3-319-64206-2_8, ISBN  9783319642055
  30. ^ Sammons, V.G.Vinod Vydiswaran, Dan Roth, Mark; Vydiswaran, V.G.; Roth, Dan. "Recognizing Textual Entailment" (PDF). Archived from the original (PDF) on 9 August 2017. Retrieved 24 February 2019.{{ cite web}}: CS1 maint: multiple names: authors list ( link)
  31. ^ "The Stanford Question Answering Dataset". rajpurkar.github.io. Archived from the original on 30 October 2020. Retrieved 25 February 2019.
  32. ^ "Recursive Deep Models for Semantic Compositionality Over a Sentiment Treebank". nlp.stanford.edu. Archived from the original on 27 October 2020. Retrieved 25 February 2019.
  33. ^ Hendrycks, Dan (14 March 2023), Measuring Massive Multitask Language Understanding, archived from the original on 15 March 2023, retrieved 15 March 2023

Further reading

  • J M Ponte; W B Croft (1998). "A Language Modeling Approach to Information Retrieval". Research and Development in Information Retrieval. pp. 275–281. CiteSeerX  10.1.1.117.4237.
  • F Song; W B Croft (1999). "A General Language Model for Information Retrieval". Research and Development in Information Retrieval. pp. 279–280. CiteSeerX  10.1.1.21.6467.
  • Chen, Stanley; Joshua Goodman (1998). An Empirical Study of Smoothing Techniques for Language Modeling (Technical report). Harvard University. CiteSeerX  10.1.1.131.5458.