From jom-skills
Matches empirical research designs (survey, archival, experiment, field, case, intervention, meta-analysis) to operations questions for Journal of Operations Management submissions.
How this skill is triggered — by the user, by Claude, or both
Slash command
/jom-skills:jom-methodsThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
- You must pick a design that can actually test your operations hypotheses
JOM publishes empirical OM research and does not publish purely analytical models or optimization techniques. Every design must rest on observation. The native JOM design families are:
| Operations question / claim | Design |
|---|---|
| Perceptions, practices, constructs across firms/plants | Survey (validated multi-item scales; multi-respondent) |
| Cause–effect on operational outcomes from secondary data | Archival/secondary panel (recalls, inventory, supply ties) |
| Human operational decisions, biases, incentives | Behavioral-OM experiment (lab/online, manipulation checks) |
| How operations work unfolds in context | Field study / case study (process, embedded, comparative) |
| Effect of an actively introduced change in a real setting | Intervention Based Research (engaged scholarship) |
| Pooling effects across studies | Meta-analysis of empirical OM findings |
State the unit and level (transaction, shift, line, plant, project, dyad, supply network) and ensure the design observes at that level. A plant-level claim tested with firm-level archival data is a level mismatch reviewers catch quickly. For multi-respondent supply-chain dyads, plan both-side data collection.
JOM formally houses Intervention Based Research, where researchers actively intervene in a real operational problem (engaged scholarship). If you use it: pre-state the theorized effect, document the intervention protocol and timeline, separate researcher actions from observed effects, and address how engagement threatens (and how you protect) inference. Most flagship management journals do not formally house this genre — use it deliberately.
JOM's Empirical Research Methods Department performs method checks on incoming empirical submissions. Defend, up front: sampling frame and response/coverage, construct operationalization, identification strategy (for causal claims), common-method separations (for survey), and reproducibility of secondary-data construction. Weak identification or unvalidated measures stall here.
Each JOM design family carries its own non-negotiable evidence; the mapping below summarizes what the Empirical Research Methods check typically scrutinizes. Confirm exact expectations against current methods-department guidance.
| Design | Defense expected up front | Fatal omission |
|---|---|---|
| Survey | Sampling frame, coverage, validated scales, CMB separations | Single-respondent data for a dyadic claim |
| Archival/secondary | Identification strategy, reproducible construction, clustering | Endogenous practice treated as exogenous |
| Behavioral-OM experiment | Manipulation/attention checks, random assignment, task realism | Confound between manipulation and a cue |
| Field / case study | Sampling logic, traceable data structure, audit trail | Anecdote substituted for within-case evidence |
| Intervention Based Research | Pre-stated effect, protocol/timeline, action–effect separation | Researcher actions conflated with the outcome |
Does cross-training frontline operators reduce defects? Archival route: a plant panel with HR cross-training records and quality logs, identified via a phased rollout (illustrative). Field route: an intervention introducing cross-training in matched lines with pre/post measurement. The choice turns on the claim and the threat. If selection is the worry and a staggered rollout exists, the archival quasi-experiment identifies the effect at the line level with plant and time fixed effects. If the mechanism (how cross-training changes floor problem-solving) is the contribution, Intervention Based Research observes the process and pre-states the effect. Either is JOM-fit; an analytical model of optimal allocation is not.
【Design family】survey / archival / experiment / field-case / IBR / meta-analysis
【Unit & level】...
【Identification / validity strategy】...
【Methods-check readiness】sampling, measures, identification, reproducibility ...
【Next step】jom-data-analysis
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