Changes for page Data Examples
Last modified by Robert Schaub on 2025/12/24 20:31
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... ... @@ -1,299 +1,25 @@ 1 1 = Data Examples = 2 2 3 -The following examples illustrate complete, realistic FactHarbor data objects 4 -across Claims, Scenarios, Evidence, ScenarioEvidenceLinks, Verdicts, and 5 -Re-evaluation behavior. 3 +Illustrative data objects for FactHarbor entities. 6 6 7 -Each field is annotated with: 5 +(% style="width:100%" %) 6 +|=(% style="width:20%" %)Example|=(% style="width:80%" %)Details| 7 +|**A: Hydrogen vs EVs**|**Claim**: "Hydrogen cars are more energy efficient than EVs." 8 +**Type**: Empirical / Technical. 9 +**Scenario**: "Well-to-wheel efficiency, EU grid mix 2020-24". 10 +**Assumptions**: Electrolysis 69%, Fuel cell 55%. 11 +**Evidence**: Peer-reviewed paper (High reliability), EU Dataset (Medium). 12 +**Verdict**: Likelihood 0.10–0.25 (Scenario A). Explanation: EVs are more efficient due to lower conversion losses in this context. Use **Verdict** instead of Truth.| 13 +|**B: Cold Water Exposure**|**Claim**: "Regular cold-water exposure improves health." 14 +**Scenario**: "Short daily immersions in healthy adults". 15 +**Definitions**: < 14°C, > 6 months. 16 +**Verdict**: Likelihood 0.40–0.65 (Scenario B). Some benefits shown, but long-term health impact data is limited.| 17 +|**C: Non-Falsifiable**|**Claim**: "Hillary Clinton communicates with Eleanor Roosevelt." 18 +**Scenario**: Literal paranormal interpretation. 19 +**Verdict**: **Undefined** / Non-evaluable. (Reasoning: Non-falsifiable).| 8 8 9 -* **[A]** — fully automatable 10 -* **[M]** — AI-draft, human validation needed 11 -* **[H]** — human-only 12 -* **[F]** — federation metadata (optional) 21 +== Automation Summary == 13 13 14 -These examples conform to: 15 - 16 -* Data Model (Ch. 5) 17 -* Workflows (Ch. 6) 18 -* Requirements (Ch. 2) 19 -* Architecture (Ch. 3) 20 -* AKEL (Ch. 4) 21 - 22 ----- 23 - 24 -= Example A — “Hydrogen cars are more energy efficient than EVs.” = 25 - 26 -A clearly empirical, technical, domain-specific claim. 27 - 28 -== Claim (ClaimID: C_H2EV) == 29 - 30 -|=Field|=Value|=Notes 31 -|ClaimID|C_H2EV| 32 -|VersionID|v1| 33 -|Text|“Hydrogen cars are more energy efficient than battery electric vehicles (EVs).”|[H] 34 -|Domain|energy_transport|[A] 35 -|ClaimType|literal|[A] 36 -|Evaluability|empirical|[A] 37 -|SafetyCategory|medium|[A] 38 -|ClusterID|CL_EnergyEff|[A] 39 -|Status|active| 40 - 41 ----- 42 - 43 -== Scenario S_H2EV_01 — “Well-to-wheel efficiency, EU grid mix” == 44 - 45 -|=Field|=Value 46 -|ScenarioID|S_H2EV_01 47 -|VersionID|v1 48 -|ClaimID|C_H2EV 49 -|Definitions|//“Well-to-wheel efficiency” = total chain efficiency.// [H] 50 -|Assumptions|EU 2020–24 grid mix, electrolysis 69%, compression losses 10%, fuel cell 55%. [M] 51 -|ContextBoundary|Europe, 2020–2024 technology|[H] 52 -|EvaluationMethod|Comparative WTW energy analysis|[A] 53 -|SafetyClass|low 54 -|Status|active| 55 - 56 ----- 57 - 58 -== Evidence == 59 - 60 -=== Evidence E1 === 61 -Peer-reviewed energy-systems paper. 62 - 63 -|=Field|=Value 64 -|EvidenceID|E_H2EV_Paper1 65 -|VersionID|v1 66 -|Type|scientific_paper 67 -|Category|empirical 68 -|Reliability|high 69 -|Provenance|Journal publication + DOI 70 -|ExtractionMethod|AKEL + human verification 71 -|Status|verified| 72 - 73 -=== Evidence E2 === 74 -Official EU dataset. 75 - 76 -|=Field|=Value 77 -|EvidenceID|E_H2EV_Dataset 78 -|VersionID|v1 79 -|Type|dataset 80 -|Category|empirical 81 -|Reliability|medium 82 -|Provenance|EU Energy Stats 2023 83 -|ExtractionMethod|API import 84 -|Status|verified| 85 - 86 ----- 87 - 88 -== ScenarioEvidenceLinks == 89 - 90 -|=Scenario|=Evidence|=RelevanceScore|=Notes 91 -|S_H2EV_01 v1|E_H2EV_Paper1 v1|0.92|[M] 92 -|S_H2EV_01 v1|E_H2EV_Dataset v1|0.77|[M] 93 - 94 ----- 95 - 96 -== Verdict == 97 - 98 -=== Verdict V_H2EV_01 v1 === 99 - 100 -|=Field|=Value 101 -|VerdictID|V_H2EV_01 102 -|VersionID|v1 103 -|ClaimID|C_H2EV 104 -|ScenarioID|S_H2EV_01 105 -|EvidenceVersionSet|[E_H2EV_Paper1:v1, E_H2EV_Dataset:v1] 106 -|LikelihoodRange|0.10–0.25| 107 -|ExplanationSummary|EVs convert grid electricity to motion more efficiently than hydrogen fuel cell vehicles under EU assumptions.| 108 -|ReasoningChain|Step-by-step efficiency-chain comparison| 109 -|UncertaintyFactors|Variability in grid mix, future electrolysis improvements| 110 -|Status|current| 111 - 112 ----- 113 - 114 -== Notes == 115 - 116 -* Many fields automatable (claim classification, domain, initial scenario structure, metadata extraction). 117 -* Definitions and boundaries require human reasoning. 118 - 119 ----- 120 - 121 -= Example B — “Regular cold-water exposure (<14°C) for ≥6 months improves health.” = 122 - 123 -A complex lifestyle/health claim requiring careful scenario boundaries. 124 - 125 -== Claim (C_CW_Health) == 126 - 127 -|=Field|=Value 128 -|Text|“Regular cold-water exposure below 14°C for at least 6 months improves health.”| 129 -|Domain|health_lifestyle| 130 -|ClaimType|literal| 131 -|Evaluability|empirical| 132 -|SafetyCategory|high| 133 - 134 ----- 135 - 136 -== Scenario S_CW_01 — “Short daily immersions in healthy adults” == 137 - 138 -|=Field|=Value 139 -|ScenarioID|S_CW_01 140 -|VersionID|v1 141 -|Definitions|“Regular exposure” = 3–7×/week, 2–4 minutes| 142 -|Assumptions|Healthy adults, no cardiovascular risk| 143 -|ContextBoundary|6+ months, 8–14°C| 144 -|EvaluationMethod|Health outcome comparison| 145 -|SafetyClass|high| 146 - 147 ----- 148 - 149 -== Evidence == 150 - 151 -=== Evidence E1 — Dutch cold-shower RCT === 152 - 153 -|=Field|=Value 154 -|Type|scientific_paper| 155 -|Category|empirical| 156 -|Reliability|high| 157 -|ExtractionMethod|AKEL + human validation| 158 - 159 -=== Evidence E2 — Meta-analysis on immersion effects === 160 - 161 -|=Field|=Value 162 -|Category|empirical| 163 -|Reliability|medium| 164 - 165 ----- 166 - 167 -== ScenarioEvidenceLinks == 168 - 169 -|=Scenario|=Evidence|=Score 170 -|S_CW_01|E1|0.82 171 -|S_CW_01|E2|0.75 172 - 173 ----- 174 - 175 -== Verdict == 176 - 177 -|=Field|=Value 178 -|LikelihoodRange|0.40–0.65 (uncertain)| 179 -|ExplanationSummary|Some benefits (mood, perceived recovery), but long-term health improvement unclear.| 180 -|UncertaintyFactors|Small sample sizes, lifestyle confounds| 181 - 182 ----- 183 - 184 -== Notes == 185 - 186 -* Medical ethics → high human involvement. 187 -* AKEL helpful for metadata, summaries, and links. 188 - 189 ----- 190 - 191 -= Example C — “Hillary Clinton communicates with Eleanor Roosevelt.” = 192 - 193 -A belief/metaphorical/non-falsifiable claim. 194 - 195 -== Claim (C_HC_ER) == 196 - 197 -|=Field|=Value 198 -|Text|“Hillary Clinton communicates with Eleanor Roosevelt.”| 199 -|Domain|politics_private_beliefs| 200 -|ClaimType|metaphorical| 201 -|Evaluability|non-falsifiable| 202 -|SafetyCategory|low| 203 - 204 ----- 205 - 206 -== Scenario S_ER_01 — Literal paranormal interpretation == 207 - 208 -|=Field|=Value 209 -|Definitions|“Communicate” = literal paranormal communication [H]| 210 -|Assumptions|Paranormal abilities exist [H]| 211 -|EvaluationMethod|Not empirically testable| 212 -|SafetyClass|low| 213 -|Evaluability|non-falsifiable| 214 - 215 ----- 216 - 217 -== Evidence == 218 - 219 -Minimal placeholder: 220 - 221 -|=Field|=Value 222 -|EvidenceID|E_None| 223 -|Type|none| 224 -|Category|none| 225 -|Reliability|low| 226 - 227 ----- 228 - 229 -== Verdict == 230 - 231 -LikelihoodRange: **undefined** 232 -Status: **non-evaluable** 233 -Reasoning: claim is non-falsifiable. 234 - 235 ----- 236 - 237 -= Example D — “Hillary Clinton is a witch.” = 238 - 239 -Clearly rhetorical/metaphorical. 240 - 241 -== Claim (C_HC_Witch) == 242 - 243 -|=Field|=Value 244 -|Text|“Hillary Clinton is a witch.”| 245 -|Domain|rhetoric| 246 -|ClaimType|rhetorical| 247 -|Evaluability|non-falsifiable| 248 -|SafetyCategory|low| 249 - 250 ----- 251 - 252 -== Scenario S_Witch_01 — Literal interpretation == 253 - 254 -|=Field|=Value 255 -|Definitions|Supernatural definition of “witch”| 256 -|Assumptions|Supernatural powers exist| 257 -|EvaluationMethod|Non-testable| 258 -|Evaluability|non-falsifiable| 259 - 260 ----- 261 - 262 -== Evidence == 263 - 264 -None required. 265 - 266 ----- 267 - 268 -== Verdict == 269 - 270 -Likelihood: **undefined** 271 -Reasoning: rhetorical, not empirical. 272 - 273 ----- 274 - 275 -= Automation Summary Across Examples = 276 - 277 -== Fully Automatable [A] == 278 -* Claim normalization 279 -* Claim clustering 280 -* Evidence metadata extraction 281 -* Initial scenario scaffolding 282 -* Reliability heuristics 283 -* Relevance ranking 284 -* Draft verdicts 285 -* Trigger detection 286 - 287 -== Mixed [M] == 288 -* Assumptions 289 -* Context boundaries 290 -* Relevance scoring 291 -* Reasoning chain 292 -* Uncertainty factors 293 - 294 -== Human-only [H] == 295 -* Definitions 296 -* Ethical constraints 297 -* High-risk scenario approval 298 -* Interpretation of meaning 299 -* Final verdict approval 23 +* **[A] Fully Automatable**: Normalization, Clustering, Metadata extraction. 24 +* **[M] Mixed**: Assumptions, Relevance scoring, Uncertainty factors. 25 +* **[H] Human-Only**: Definitions, Ethical constraints, Final approval.