Compiled search queries for economic research

  • Day: 2026-03-06
  • Time: 17:40 to 18:00
  • Project: Business
  • Workspace: WP 1: Strategic / Growth & Development
  • Status: Completed
  • Priority: MEDIUM
  • Assignee: Matías Nehuen Iglesias
  • Tags: Aggregate Fluctuations, Firm Dynamics, Economic Theories, Search Queries, Academic Research

Description

Session Goal

The goal of this session was to compile and organize search queries for academic research related to various economic topics, including aggregate fluctuations and firm dynamics.

Key Activities

  • Search Queries for Aggregate Fluctuations Literature: Compiled a list of search queries targeting academic papers on aggregate fluctuations, focusing on specific authors and domains.
  • Search Queries on Firm Size and Trade Volatility: Developed queries related to the Zipf distribution of U.S. firm sizes and the relationship between firm growth rates, trade openness, and aggregate volatility.
  • Search Queries on Firm Size Distribution and Growth: Listed queries concerning firm size distribution, random growth economics, and industry equilibrium, with a focus on academic papers in PDF format.
  • Exploring Overlaps and Distinctions in Economic Theories: Analyzed economic literatures related to aggregation and volatility, identifying overlaps and unique contributions, and suggesting areas for further exploration.

Achievements

  • Successfully compiled a comprehensive set of search queries for targeted academic research in economics.
  • Identified key areas for further exploration in economic theories related to aggregation and volatility.

Pending Tasks

  • Further exploration and framing of identified economic theories for detailed literature review.

Additional Note

A separate activity involved structuring a clinical model in SOAP format for healthcare documentation, unrelated to the primary session focus.

Evidence

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