Guides every stage of Journal of Development Economics manuscript preparation: topic selection, causal-identification stress-testing, empirical analysis norms, contribution framing, figure design, prose polishing, replication-package assembly, and pre-submission checks for Editorial Manager.
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Use when sharpening the development-economics takeaway of a Journal of Development Economics (JDE) manuscript — the explicit "what this teaches about development" claim that an editor and referees can restate in one sentence. Frames the contribution; it is not a writing-polish pass.
Use when estimation, heterogeneity, attrition, measurement, or inference choices need to meet Journal of Development Economics (JDE) empirical norms — clustered field data, survey measurement error, and treatment-effect heterogeneity in low- and middle-income settings. Covers the analysis itself, not the identifying design.
Use when the causal identification strategy is the bottleneck for a Journal of Development Economics (JDE) manuscript — RCT/field experiment, DID, IV, RDD in low- and middle-income settings. Stress-tests the design against development-economics empirical norms before tables are drafted.
Use when staking a manuscript's contribution against the development-economics literature for the Journal of Development Economics (JDE). Positions the paper at the frontier; it does not write a standalone survey.
Use when responding to a Journal of Development Economics (JDE) decision — drafting the response letter and revision plan for a single-anonymized R&R, including the short-paper track's limited-revision structure. Strategy for the response; it does not rewrite the manuscript.
English | 简体中文
横跨经管社科 · 人文社科 · 自然科学 · 临床医学 · AI 计算机等多个主流学科,为每一本期刊 / 每一个会议单独编码它的投稿工作流。
🧭 布局指南 · 📚 Skill Pack 一览 · ⚡ 如何使用 · 🗺 路线图 · 🌐 English
先看期刊,再进 Pack。点击任意封面即可进入对应的期刊 Skill 包。
🆕 四个最新学科广度合集 —— 工程技术 40 · 农业环境 30 · 临床医学 30 · 英文人文 36;点击封面进入合集页。
其他合集 · 中文体育学 · 12 本 CSSCI 体育学来源刊
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Agent skill stack for submitting to 《经济研究》 (Economic Research Journal), the top economics journal in China. Eighteen skills across the manuscript lifecycle: China-context topic selection, introduction, bilingual literature review, theory & hypotheses, data & sample, modern causal identification (DID / IV / RDD / DML with heterogeneity-robust estimators), mechanism analysis (post-江艇 2022 paradigm), heterogeneity, robustness, three-line tables, policy implications, abstract, house style, reviewer-lens self-audit, reproducibility, submission preflight, and R&R rebuttals. Ships a runnable Stata + Python code library. Bilingual zh-CN / en docs.
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Agent skill stack for manuscripts targeted at the Journal of Financial and Quantitative Analysis (JFQA) — empirical and quantitative financial economics (corporate finance, investments, capital and security markets, financial institutions, and finance-relevant quantitative methods), published by Cambridge University Press for the Michael G. Foster School of Business at the University of Washington. Built around the JFQA realities: submission via Editorial Manager with a text-searchable PDF, a $350 fee (only $275 refunded if not sent to a reviewer), double-anonymous review, a strict one-paragraph / 100-word abstract cap, prescriptive 8.5x11 / 1-inch / 12-pt Times New Roman double-spaced formatting, a one-year resubmission ban for undisclosed prior rejections, and the JFQA Code Sharing Policy with a dedicated JFQA Dataverse at the Harvard Dataverse. Covers topic fit, literature positioning, causal/identification design for finance, robustness, tables and figures, house style, the code/data archive, referee strategy, submission preflight, and R&R rebuttals. Bilingual en / zh-CN docs; Stata / R / Python conventions.
Agent skill stack for manuscripts targeted at the Journal of Applied Econometrics (JAE) — Wiley's home for empirical, replicable economics that applies and develops econometric techniques on real data (applications over pure theory). Built around JAE's signature norms: mandatory deposit to the famous JAE Data Archive (since 1994, now hosted at ZBW) with plain-ASCII/CSV readme-documented data, a hard 35-page article limit with unlimited online appendices, a 100-word citation-free summary plus up to six keywords, citation-style-agnostic 'Free Format' submission via Editorial Express, single-blind review with Editor-in-Chief final authority, a dedicated Replication Article category, and a three-papers-under-review-per-author cap. Covers topic fit, identification on real data, reproducible data analysis, tables/figures, contribution framing, literature positioning, the review process, rebuttals, submission preflight, and archive-ready replication packaging. Bilingual en / zh-CN docs; Stata / R / Python conventions.
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