Why Do Students (Not) Choose Second-Cycle Mathematics Studies? Questionnaire and Graduate-Tracking Evidence from Poland
Pith reviewed 2026-05-23 07:29 UTC · model grok-4.3
The pith
Students planning to continue math studies rate their bachelor's programs higher in quality and usefulness.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
The results indicate that students willing to continue second-cycle studies evaluate both the substantive quality and practical usefulness of their studies more positively than students intending to leave mathematics or change institutions. Satisfaction with the chosen specialization emerged as one of the strongest differentiating factors between the analysed groups. At the same time, a substantial proportion of respondents expressed doubts regarding the professional utility of continuing mathematical education, despite administrative labour-market data suggesting several advantages associated with obtaining a Master's degree. The findings suggest that retention in mathematics is shaped not
What carries the argument
Comparison of self-reported student evaluations of course quality, practical usefulness, and specialization satisfaction across groups defined by continuation intentions, backed by nationwide graduate-tracking records.
If this is right
- Retention rates in mathematics rise when students see stronger connections between their specialization and future employment.
- Curriculum adjustments that highlight practical applications can shift intentions toward continuing studies.
- Greater cooperation between universities and external stakeholders improves how students perceive the value of second-cycle programs.
- Communicating administrative evidence of master's degree advantages can address widespread doubts about professional utility.
Where Pith is reading between the lines
- The same perception-based drivers could operate in related fields such as physics or computer science where students weigh labor-market signals heavily.
- Targeted changes to how specializations are presented in the first cycle could be piloted and measured for effects on continuation rates.
- Graduate-tracking systems might be used more proactively to shape student expectations before they reach the decision point.
Load-bearing premise
That self-reported questionnaire responses from the sampled students accurately capture the causal factors driving continuation decisions without substantial response bias, social desirability effects, or selection bias in who chose to participate.
What would settle it
A longitudinal follow-up that matches the original survey responses to actual enrollment records in second-cycle programs and finds no predictive link between reported satisfaction levels and later continuation would undermine the claimed associations.
Figures
read the original abstract
The Bologna Process has substantially reshaped higher education systems across Europe, including the structure of mathematical studies in Poland. One of the increasingly visible consequences of these transformations is the relatively low retention rate between first- and second-cycle studies. The aim of this paper is to investigate selected factors associated with students' willingness to continue mathematical education after obtaining a Bachelor's degree. The study combines questionnaire-based research conducted among mathematics students from 13 Polish higher education institutions with an auxiliary analysis of nationwide graduate-tracking data obtained from the Polish Graduate Tracking System (ELA). The survey investigated students' opinions on general and specialized courses, perceived labour-market usefulness of studies and future educational intentions. The results indicate that students willing to continue second-cycle studies evaluate both the substantive quality and practical usefulness of their studies more positively than students intending to leave mathematics or change institutions. Satisfaction with the chosen specialization emerged as one of the strongest differentiating factors between the analysed groups. At the same time, a substantial proportion of respondents expressed doubts regarding the professional utility of continuing mathematical education, despite administrative labour-market data suggesting several advantages associated with obtaining a Master's degree. The findings suggest that retention in mathematics is shaped not only by academic difficulty, but also by the perceived relationship between university curricula, specialization structures and labour-market expectations. We conclude with recommendations regarding curriculum design, cooperation with external stakeholders and other aspects of second-cycle mathematical education.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The paper investigates factors associated with Polish mathematics students' willingness to continue from first- to second-cycle studies, using a questionnaire administered at 13 higher education institutions on course quality, labor-market usefulness, specialization satisfaction, and educational intentions, supplemented by auxiliary nationwide data from the Polish Graduate Tracking System (ELA). The central results indicate that students intending to continue rate both substantive quality and practical usefulness more positively, with specialization satisfaction as a key differentiator, while noting widespread doubts about professional utility despite apparent labor-market advantages for Master's degrees; recommendations focus on curriculum design and external cooperation.
Significance. If the reported associations prove robust to the identified methodological gaps, the work addresses an important post-Bologna retention issue in European mathematics education by linking student perceptions to structural factors. The mixed questionnaire-plus-administrative-data design is a strength, providing both perceptual and objective labor-market context, and the multi-institutional scope adds breadth; the findings could inform targeted interventions if the correlational patterns can be shown to precede rather than follow continuation decisions.
major comments (2)
- [Methods] Methods section: the sampling frame, response rate, statistical controls, and handling of missing data are not described, so the representativeness of the reported group differences in evaluations cannot be assessed and the central correlational claims rest on an uncharacterized sample.
- [Results] Results section: questionnaire items on quality/usefulness and continuation intentions were collected simultaneously without individual-level linkage to subsequent ELA enrollment records, leaving the observed differences vulnerable to post-decision rationalization or consistency bias and preventing demonstration that evaluations precede the decision.
minor comments (2)
- [Abstract] The abstract states the survey covered 'general and specialized courses' but does not indicate how many items or scales were used; a brief description of the instrument would aid replicability.
- Table or figure captions could more explicitly note whether percentages are row, column, or total, and whether significance tests accompany the group comparisons.
Simulated Author's Rebuttal
We thank the referee for their thoughtful comments, which highlight important aspects of our methodology and study design. We address each major comment below and describe the revisions we will make to the manuscript.
read point-by-point responses
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Referee: [Methods] Methods section: the sampling frame, response rate, statistical controls, and handling of missing data are not described, so the representativeness of the reported group differences in evaluations cannot be assessed and the central correlational claims rest on an uncharacterized sample.
Authors: We concur that the Methods section requires more comprehensive description to allow evaluation of the sample's representativeness. The revised manuscript will include expanded details on the sampling frame, including how the 13 higher education institutions were selected; the response rate; any statistical controls employed in the analyses; and the approach to missing data. These additions will strengthen the transparency of our correlational claims. revision: yes
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Referee: [Results] Results section: questionnaire items on quality/usefulness and continuation intentions were collected simultaneously without individual-level linkage to subsequent ELA enrollment records, leaving the observed differences vulnerable to post-decision rationalization or consistency bias and preventing demonstration that evaluations precede the decision.
Authors: The referee correctly identifies a key limitation of our cross-sectional questionnaire design. Data on evaluations and intentions were gathered concurrently, precluding individual linkage to subsequent enrollment records in the ELA system. Consequently, we cannot establish that positive evaluations precede continuation decisions, and the associations may be subject to consistency bias. In the revised manuscript, we will introduce a new Limitations subsection that explicitly acknowledges these issues, clarifies the correlational nature of the findings, and discusses the auxiliary role of the ELA data in providing broader labor-market context without individual matching. revision: yes
Circularity Check
No circularity: empirical survey and tracking data analysis
full rationale
The paper reports results from a new questionnaire administered to students at 13 Polish institutions combined with auxiliary nationwide ELA graduate-tracking data. No derivations, equations, fitted parameters presented as predictions, or self-citation chains appear in the load-bearing steps; the central claims rest on direct group comparisons of survey responses, which constitute independent primary evidence rather than reduction to prior inputs by construction.
Axiom & Free-Parameter Ledger
axioms (1)
- domain assumption Student self-reports on course quality, usefulness, and educational intentions are reliable indicators of the factors that actually drive continuation decisions.
Reference graph
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