
Stock Rover
Simply the best investment research platform on the web for independent thinkers.

Institutional-grade 20-factor quantitative modeling for high-conviction investing.

Chaikin Analytics, led by industry veteran Marc Chaikin, operates on a sophisticated quantitative architecture known as the Power Gauge Rating. This proprietary system distills 20 diverse financial factors into a single actionable rating (Bullish to Bearish), democratizing complex institutional data for individual traders and wealth managers. By 2026, the platform has matured into a hybrid AI-quant engine, integrating alternative data streams and real-time sentiment analysis alongside traditional fundamentals and technical indicators. Unlike standard screeners, Chaikin utilizes a weighted multi-factor model that balances Financials (Earnings/Value), Technicals (Price/Volume), and Expert Opinion (Institutional/Insider activity). This allows users to bypass the cognitive load of technical chart analysis while maintaining a statistical edge. The system is positioned as a 'Quant-as-a-Service' layer, bridging the gap between basic retail tools and $20k/year Bloomberg terminals. Its technical moat lies in its historical backtesting of the Power Gauge, which provides a rigorous framework for risk management and alpha generation in volatile market regimes.
Chaikin Analytics, led by industry veteran Marc Chaikin, operates on a sophisticated quantitative architecture known as the Power Gauge Rating.
Explore all tools that specialize in stock screening. This domain focus ensures Chaikin Analytics delivers optimized results for this specific requirement.
A weighted algorithmic model calculating 5 factors across 4 categories: Financials, Earnings, Technicals, and Experts.
A proprietary pattern-matching algorithm that identifies stocks with statistical profiles similar to a user-defined successful ticker.
A proprietary volume-weighted average of accumulation and distribution over a specific period (usually 21 days).
Aggregates the individual Power Gauge ratings of all stocks within a sub-sector to calculate a macro-strength score.
Tracks the delta between analyst estimates and actual results, weighted by historical price reaction to beats/misses.
Automated audit tool that scans an entire portfolio to flag tickers with Bearish or Very Bearish ratings.
Calculates the price performance of a ticker relative to the market benchmark to identify true alpha generators.
Account registration and verification of investment profile.
Portfolio synchronization via direct brokerage CSV or manual entry.
Initial 'Health Check' execution to identify high-risk holdings.
Configuration of the Power Gauge dashboard for primary market focus.
Training on the 4 component groups: Financial, Earnings, Technical, and Experts.
Setting up the 'Discovery Engine' to find stocks with similar profiles to winners.
Defining custom alerts for rating changes (e.g., Neutral to Bullish).
Reviewing the 'Industry Power Bar' to identify sector tailwinds.
Integration with partner trading platforms for execution (TradeStation).
Weekly review of the Chaikin Power Feed for macro-economic alignment.
All Set
Ready to go
Verified feedback from other users.
"Users highly value the simplified Power Gauge rating and the Portfolio Health Check, though some find the price point steep for retail use."
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Simply the best investment research platform on the web for independent thinkers.

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