graph TD
%% Return Category Layer
Alpha[Alpha]
Alpha --> Price
Alpha --> Fundamental
%% Input Layer
Price --> Trend
Price --> Reversion
Price --> TechSentiment[Technical - Sentiment]
Fundamental --> Yield
Fundamental --> Growth
Fundamental --> Quality
%% Specification Layer
Trend --> ForecastTarget[Forecast - Target]
Reversion --> ForecastTarget
TechSentiment --> ForecastTarget
Yield --> ForecastTarget
Growth --> ForecastTarget
Quality --> ForecastTarget
ForecastTarget --> ModelDef[Model - Definition]
ModelDef --> CondVars[Conditioning - Variables]
CondVars --> RunFreq[Run - Frequency]
%% Implementation Layer
RunFreq --> TimeHorizon[Time Horizon]
RunFreq --> BetStructure[Bet Structure]
RunFreq --> Instruments[Instruments]
%% Time Horizon branches
TimeHorizon --> HF[High Frequency]
TimeHorizon --> ST[Short Term]
TimeHorizon --> MT[Medium Term]
TimeHorizon --> LT[Long Term]
%% Bet Structure branches
BetStructure --> Dir[Directional]
BetStructure --> Rel[Relative]
%% Instruments branches
Instruments --> Liq[Liquid]
Instruments --> Illiq[Illiquid]
%% Styling
classDef returnCat fill:#FFCC00,stroke:#000,stroke-width:2px
classDef input fill:#FFE066,stroke:#000,stroke-width:1px
classDef phenomenon fill:#FFEB99,stroke:#000,stroke-width:1px
classDef spec fill:#FFF2CC,stroke:#000,stroke-width:1px
classDef impl fill:#E8EEF7,stroke:#000,stroke-width:1px
class Alpha returnCat
class Price,Fundamental input
class Trend,Reversion,TechSentiment,Yield,Growth,Quality phenomenon
class ForecastTarget,ModelDef,CondVars,RunFreq spec
class TimeHorizon,BetStructure,Instruments,HF,ST,MT,LT,Dir,Rel,Liq,Illiq impl
theory driven alpha models
or: how i learned to stop worrying and love systematic thinking
07-Jul-25
the framework that changed how i think about returns
during my equity research days, i spent countless hours building models, analyzing companies, and trying to find that edge. the fundamental analysis was solid, but something was missing. it wasn’t until i stumbled upon this framework that things clicked.
here’s the thing: most people approach alpha generation like they’re throwing darts. technical folks look at charts. fundamental folks dig through financials. quants run backtests. but rarely does anyone step back and think systematically about what kind of alpha they’re actually trying to capture.
the mental model
breaking it down
return categories: the starting point
every alpha model starts with a simple question: are you making a price-based bet or a fundamental bet?
price-based alpha assumes the market will continue doing what it’s been doing (trend), revert to some mean (reversion), or that technical indicators capture crowd psychology (technical sentiment). i’ve seen brilliant quants make fortunes on price patterns alone.
fundamental alpha is the bread and butter of traditional investing. yield (boring but reliable), growth (exciting but expensive), and quality (the sleep-well-at-night factor). during my time covering 16 o&g names, quality metrics saved me from recommending several blow-ups.
the phenomena layer: where theory meets reality
this is where you pick your poison:
- trend: momentum works until it doesn’t. made money on energy stocks in 2022 this way.
- reversion: everything mean-reverts eventually. key word: eventually.
- technical sentiment: reading the tea leaves of order flow and positioning
- yield: getting paid to wait. my ballard power position taught me patience here.
- growth: paying up for the future. see: every tech stock ever.
- quality: warren buffett’s playground. boring? yes. profitable? also yes.
specification: the unsexy part that matters
here’s where most people fail. they have a great idea but terrible implementation.
forecast target: what exactly are you predicting? next month’s return? relative performance? be specific.
model definition: your actual methodology. during my python automation phase, i learned that simple often beats complex.
conditioning variables: the “it depends” factors. oil prices above $80? different game. fed hiking? adjust accordingly.
run frequency: how often you update. daily models need different infrastructure than quarterly ones.
implementation: where rubber meets road
time horizon matters more than people think: - high frequency: microseconds matter. not my game. - short term: days to weeks. most retail traders live here. - medium term: months. my sweet spot during equity research days. - long term: years. where fundamental analysis shines.
bet structure: - directional: long or short. simple. - relative: long one thing, short another. market neutral dreams.
instruments: - liquid: easy in, easy out. spy options. - illiquid: higher returns, longer commitment. private equity taught me this.
why this matters
after five years in policy work, watching capital flee canada, i kept coming back to this framework. why? because it forces clarity.
when someone says “i have an alpha idea,” you can now ask: 1. price or fundamental based? 2. what phenomenon are you exploiting? 3. what’s your forecast horizon? 4. how are you implementing?
suddenly, hand-wavy ideas become concrete strategies.
the python connection
these days, i’m building tools to systematize this framework. imagine: - automated screening for reversion opportunities - ml models to identify regime changes in trend/reversion dynamics - real-time conditioning variable monitoring
the framework provides structure. code makes it scale.
final thoughts
this isn’t just about trading. it’s about thinking systematically about any prediction problem. whether you’re forecasting oil prices, analyzing policy impacts, or picking stocks, the framework holds.
the beauty is its flexibility. combine elements. a quality + reversion strategy? why not. momentum with fundamental conditioning? even better.
currently building out implementations of various combinations. if you’re working on similar problems or want to collaborate on making these concepts more accessible, reach out.
remember: alpha isn’t about being smarter. it’s about being more systematic than the next person.
currently exploring: using transformer models to identify regime changes in factor performance. because if you’re going to be unemployed, might as well learn something new.