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Main Authors: Sundaresan, Sai, Chopra, Harshita, Sinha, Atanu R., Goswami, Koustava, Naidu, Nagasai Saketh, Karan, Raghav, Anushka, N
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.15474
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author Sundaresan, Sai
Chopra, Harshita
Sinha, Atanu R.
Goswami, Koustava
Naidu, Nagasai Saketh
Karan, Raghav
Anushka, N
author_facet Sundaresan, Sai
Chopra, Harshita
Sinha, Atanu R.
Goswami, Koustava
Naidu, Nagasai Saketh
Karan, Raghav
Anushka, N
contents A Large Language Model (LLM) offers versatility across domains and tasks, purportedly benefiting users with a wide variety of behaviors and preferences. We question this perception about an LLM when users have inherently subjective behaviors and preferences, as seen in their ubiquitous and idiosyncratic browsing of websites or apps. The sequential behavior logs of pages, thus generated, form something akin to each user's self-constructed "language", albeit without the structure and grammar imbued in natural languages. We ask: (i) Can a small LM represent the "language of browsing" better than a large LM? (ii) Can an LM with a single set of parameters (or, single LM) adequately capture myriad users' heterogeneous, subjective behaviors and preferences? (iii) Can a single LM with high average performance, yield low variance in performance to make alignment good at user level? We introduce clusterwise LM training, HeTLM (Heterogeneity aware Training of Language Model), appropriate for subjective behaviors. We find that (i) a small LM trained using a page-level tokenizer outperforms large pretrained or finetuned LMs; (ii) HeTLM with heterogeneous cluster specific set of parameters outperforms a single LM of the same family, controlling for the number of parameters; and (iii) a higher mean and a lower variance in generation ensues, implying improved alignment.
format Preprint
id arxiv_https___arxiv_org_abs_2508_15474
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Subjective Behaviors and Preferences in LLM: Language of Browsing
Sundaresan, Sai
Chopra, Harshita
Sinha, Atanu R.
Goswami, Koustava
Naidu, Nagasai Saketh
Karan, Raghav
Anushka, N
Computation and Language
Artificial Intelligence
A Large Language Model (LLM) offers versatility across domains and tasks, purportedly benefiting users with a wide variety of behaviors and preferences. We question this perception about an LLM when users have inherently subjective behaviors and preferences, as seen in their ubiquitous and idiosyncratic browsing of websites or apps. The sequential behavior logs of pages, thus generated, form something akin to each user's self-constructed "language", albeit without the structure and grammar imbued in natural languages. We ask: (i) Can a small LM represent the "language of browsing" better than a large LM? (ii) Can an LM with a single set of parameters (or, single LM) adequately capture myriad users' heterogeneous, subjective behaviors and preferences? (iii) Can a single LM with high average performance, yield low variance in performance to make alignment good at user level? We introduce clusterwise LM training, HeTLM (Heterogeneity aware Training of Language Model), appropriate for subjective behaviors. We find that (i) a small LM trained using a page-level tokenizer outperforms large pretrained or finetuned LMs; (ii) HeTLM with heterogeneous cluster specific set of parameters outperforms a single LM of the same family, controlling for the number of parameters; and (iii) a higher mean and a lower variance in generation ensues, implying improved alignment.
title Subjective Behaviors and Preferences in LLM: Language of Browsing
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2508.15474