From jom-skills
Builds theoretical arguments and hypotheses for empirical OM studies, deriving operational mechanisms and adapting reference theory to operations phenomena.
How this skill is triggered — by the user, by Claude, or both
Slash command
/jom-skills:jom-theory-developmentThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
- Your hypotheses describe what happens but not *why*, operationally
JOM is empirical, but empirical strength without theory reads as a technical report. The argument must give an operations mechanism — a causal logic rooted in how work, capacity, inventory, information, incentives, or human behavior in operations actually function — not a generic management story bolted onto an OM dataset. Because JOM explicitly excludes purely analytical/optimization work, your theory is verbal and falsifiable, developed to be tested against observation, not derived as an optimization proof.
JOM houses behavioral/empirical OM strongly. Be explicit about which engine drives the effect: a behavioral mechanism (heuristics, bias, fatigue, learning) needs human-decision evidence; an operational mechanism (flow, congestion, buffering) needs process/transaction evidence; an organizational/economic mechanism (governance, incentives, contracts) needs relational/firm evidence. Mismatched theory and evidence is a common rejection.
JOM reviewers expect the theoretical engine and the evidence type to align; the map below is interpretive guidance, confirmed against current Department missions.
| Mechanism engine | Evidence it requires | Mismatch flagged |
|---|---|---|
| Behavioral (bias, fatigue, learning) | Human-decision data | Bias inferred from firm-level archival |
| Operational (flow, congestion, buffering) | Process/transaction data | A flow claim from survey perceptions |
| Organizational/economic (governance) | Relational/firm-level data | A governance claim as individual-level |
| Contingency (a condition moderates) | A measured operational moderator | A contingency asserted but unmeasured |
A team theorizes that automation reduces operator errors but the benefit reverses past a threshold because automation erodes situational awareness (illustrative). The phenomenon is operational and line-level; the mechanism is behavioral-operational: automation offloads routine cognition (lowering error) yet degrades the operator's mental model (raising error on exceptions). The reference theory is automation-complacency, adapted to a high-variability setting. Hypotheses precede estimation: H1, automation lowers routine error; H2, it raises exception error; H3, the net effect is non-monotonic, moderated by exception frequency. Because the prediction is verbal and falsifiable against observed error logs, it is JOM-shaped — not an optimization proof.
【Phenomenon & level】...
【Core OM mechanism】(operational / behavioral / organizational) ...
【Reference theory + adaptation】...
【Hypotheses】H1 ... (a priori, directional)
【Mediator / moderator】operational variable to be measured ...
【Next step】jom-literature-positioning
npx claudepluginhub brycewang-stanford/awesome-journal-skills --plugin jom-skillsBuilds formal models and develops theory for Production and Operations Management manuscripts, including analytical modeling, empirical hypothesis derivation, and behavioral experiment design.
Builds theoretical arguments for Journal of Management manuscripts: constructs, mechanisms, boundary conditions, and a priori hypotheses. Use when theory is the bottleneck.
Builds deductive mechanism chains or inductive grounded models for Journal of Management Studies manuscripts. Use when theory is the bottleneck.