Date of Award

2026

Degree Type

Restricted to Claremont Colleges Dissertation

Degree Name

Information Systems and Technology, PhD

Program

Center for Information Systems and Technology

Advisor/Supervisor/Committee Chair

Wallace Chipidza

Dissertation or Thesis Committee Member

Wallace Chipidza

Dissertation or Thesis Committee Member

Chinazunwa Uwaoma

Terms of Use & License Information

Creative Commons Attribution 4.0 License
This work is licensed under a Creative Commons Attribution 4.0 License.

Rights Information

© 2026 Fayez Alharbi

Abstract

Social media has become part of the daily rhythm of financial markets, its actual influence on prices remains debated. This dissertation examines whether buy recommendations posted by Saudi-focused social media analysts on Twitter/X are associated with short-term stock market reactions in the Tadawul exchange. The central question is straightforward: when influential online analysts issue concentrated buy signals, do prices and trading activity respond in measurable ways? To address this, I combine multiple empirical strategies in a triangulated research design. Fixed-effects panel regressions estimate the association between sentiment measures, analyst exposure, abnormal returns and volume while accounting for firm-level and time-specific factors. Propensity score matching is used to compare exposed and non-exposed stock-days with similar observable characteristics, helping reduce selection concerns and strengthening causal interpretation. An event-study framework aligns returns around recommendation bursts to examine dynamic price adjustments within clearly defined exposure windows, helping isolate the timing of market responses. Each method approaches the question from a slightly different angle. The patterns suggest that analyst activity is strongly linked to short-lived increases in trading volume and modest return movements. Effects appear concentrated around exposure shocks and tend to dissipate within days, which consistent with attention-driven responses. Pre-event drift hints that analysts often post during periods of existing market stress, complicating clean causal interpretation. To complement the quantitative analysis, qualitative interviews with retail investors explore how credibility, repetition, and network visibility are perceived to influence decision-making. Investors describe using informal mental checklists before acting on recommendations. Their accounts help contextualize the statistical findings and suggest that social media effects operate through attention and trust. Overall, the findings suggest that social media recommendations can redirect attention and temporarily intensify trading, especially in retail-driven markets. The influence appears situational, shaped by credibility, timing, and existing sentiment. These patterns are consistent with a short-term causal influence that is conditioned by market context and investor attention.

ISBN

9798244857368

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