Personality is Revealed During Weekends: Towards Data Minimisation for Smartphone Based Personality Classification
Pith reviewed 2026-05-24 15:25 UTC · model grok-4.3
The pith
Smartphone data from one or two weekends classifies the five personality traits at 66-71 percent accuracy.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
Data from only one or two weekends is sufficient to achieve state-of-the-art accuracy between 66 percent and 71 percent when classifying the five personality traits using smartphone sensors.
What carries the argument
Weekend-only subsets of smartphone sensor and usage logs used as input features for standard machine-learning classifiers of the Big Five traits.
If this is right
- Personality classification models can be trained with collection windows reduced from weeks or months to one or two weekends.
- Smartphone-based personality services can comply with data-minimisation rules while retaining reported accuracy levels.
- User burden and privacy exposure decrease when data collection is limited to weekends.
Where Pith is reading between the lines
- The finding implies that personality-related behaviors may be more stable or detectable on weekends than on weekdays.
- Similar weekend-only sampling might be tested for other inference tasks that currently rely on multi-week smartphone data.
- Designers could explore whether specific weekend activities drive the predictive power rather than overall usage volume.
Load-bearing premise
Weekend smartphone data alone contains enough distinctive behavioral signals to classify personality traits accurately without weekday data or longer collection periods.
What would settle it
A study on a new user cohort that measures classification accuracy below 66 percent when models are trained on only one or two weekends of data would falsify the central result.
read the original abstract
Previous literature has explored automatic personality modelling using smartphone data for its potential to personalise mobile services. Although passive modelling of personality removes the burden of completing lengthy questionnaires, the fact that such models typically require a few weeks or months of personal data can negatively impact user's engagement. In this study, we explore the feasibility of reducing the duration of data collection in the context of personality classification. We found that only one or two weekends can suffice for achieving state-of-the-art accuracy between 66% and 71% for classifying the five personality traits. These results provide lessons for practicing "data minimisation" - a key principle of privacy laws.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The manuscript claims that smartphone sensor data collected over only one or two weekends is sufficient to reach state-of-the-art classification accuracy (66–71 %) for the five Big-Five personality traits, thereby demonstrating that extended multi-week collection periods are unnecessary and supporting the data-minimisation principle.
Significance. If the reported accuracies are robust, the result would be practically significant for privacy-aware mobile systems: shorter collection windows reduce user burden and regulatory risk while preserving predictive utility. The work supplies an empirical demonstration that weekend behavioural traces alone carry substantial personality signal, which could inform minimal-data designs in human–computer interaction.
major comments (2)
- [Abstract] Abstract: the central claim that “only one or two weekends can suffice for achieving state-of-the-art accuracy between 66 % and 71 %” is presented without any accompanying information on sample size (N), number of participants, cross-validation procedure, baseline models, or statistical significance. These details are load-bearing for assessing whether the weekend-only restriction genuinely supports the sufficiency claim.
- [Results] Results section (inferred from abstract): the manuscript does not report a direct comparison between weekend-only models and equivalent-length weekday-only or random-day subsets. Without such a control it remains unclear whether the reported performance is attributable to the weekend restriction or simply to any short observation window.
minor comments (1)
- Clarify the machine-learning pipeline (feature extraction, classifier, hyper-parameter tuning) and state whether the same pipeline was used for both weekend and longer-period baselines.
Simulated Author's Rebuttal
We thank the referee for the constructive feedback on our manuscript. The comments highlight opportunities to strengthen the presentation of key methodological details and the experimental design. We respond to each major comment below.
read point-by-point responses
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Referee: [Abstract] Abstract: the central claim that “only one or two weekends can suffice for achieving state-of-the-art accuracy between 66 % and 71 %” is presented without any accompanying information on sample size (N), number of participants, cross-validation procedure, baseline models, or statistical significance. These details are load-bearing for assessing whether the weekend-only restriction genuinely supports the sufficiency claim.
Authors: We agree that the abstract would benefit from greater self-containment. The full manuscript reports the sample size, participant details, cross-validation procedure, baseline comparisons, and evaluation metrics in the Methods and Results sections. To address this point directly, we will revise the abstract to include a concise statement on the number of participants and the validation approach used. revision: yes
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Referee: [Results] Results section (inferred from abstract): the manuscript does not report a direct comparison between weekend-only models and equivalent-length weekday-only or random-day subsets. Without such a control it remains unclear whether the reported performance is attributable to the weekend restriction or simply to any short observation window.
Authors: The manuscript's primary contribution is to demonstrate that one or two weekends of data suffice to reach the reported accuracy levels, comparable to those achieved with multi-week collection periods in prior work. This directly supports the data-minimisation claim without requiring a claim that weekends are uniquely effective among all short windows. The existing comparison is between weekend-only data and full multi-week traces. A direct weekday-only or random-day control of matched length is not reported and would constitute an extension rather than a necessary control for the stated sufficiency result. revision: no
Circularity Check
No significant circularity
full rationale
The paper reports an empirical result from smartphone data analysis showing that one or two weekends suffice for 66-71% personality classification accuracy. No equations, derivations, or parameter-fitting steps are described that would reduce any 'prediction' to its own inputs by construction. The central claim is presented as a data-driven observation rather than a self-referential or self-citation-dependent derivation. No load-bearing self-citations, ansatzes, or uniqueness theorems appear in the provided text. This is a standard empirical study whose argument chain is self-contained against external benchmarks.
Axiom & Free-Parameter Ledger
Reference graph
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