Matches in SemOpenAlex for { <https://semopenalex.org/work/W3213163168> ?p ?o ?g. }
- W3213163168 endingPage "1345" @default.
- W3213163168 startingPage "1337" @default.
- W3213163168 abstract "The scientific method consists of making hypotheses or predictions and then carrying out experiments to test them once the actual results have become available, in order to learn from both successes and mistakes. This approach was followed in the M4 competition with positive results and has been repeated in the M5, with its organizers submitting their ten predictions/hypotheses about its expected results five days before its launch. The present paper presents these predictions/hypotheses and evaluates their realization according to the actual findings of the competition. The results indicate that well-established practices, like combining forecasts, exploiting explanatory variables, and capturing seasonality and special days, remain critical for enhancing forecasting performance, re-confirming also that relatively new approaches, like cross-learning algorithms and machine learning methods, display great potential. Yet, we show that simple, local statistical methods may still be competitive for forecasting high granularity data and estimating the tails of the uncertainty distribution, thus motivating future research in the field of retail sales forecasting." @default.
- W3213163168 created "2021-11-22" @default.
- W3213163168 creator A5015832946 @default.
- W3213163168 creator A5022353147 @default.
- W3213163168 creator A5085772089 @default.
- W3213163168 date "2022-10-01" @default.
- W3213163168 modified "2023-10-03" @default.
- W3213163168 title "Predicting/hypothesizing the findings of the M5 competition" @default.
- W3213163168 cites W1969016008 @default.
- W3213163168 cites W1972835575 @default.
- W3213163168 cites W1977698057 @default.
- W3213163168 cites W1986528915 @default.
- W3213163168 cites W1989787309 @default.
- W3213163168 cites W1994174876 @default.
- W3213163168 cites W2048665112 @default.
- W3213163168 cites W2055311466 @default.
- W3213163168 cites W2073210389 @default.
- W3213163168 cites W2074080232 @default.
- W3213163168 cites W2099639456 @default.
- W3213163168 cites W2101906966 @default.
- W3213163168 cites W2107548653 @default.
- W3213163168 cites W2114062456 @default.
- W3213163168 cites W2114733835 @default.
- W3213163168 cites W2118070418 @default.
- W3213163168 cites W2134070777 @default.
- W3213163168 cites W2140349953 @default.
- W3213163168 cites W2149905014 @default.
- W3213163168 cites W2154326182 @default.
- W3213163168 cites W2162174678 @default.
- W3213163168 cites W2177978941 @default.
- W3213163168 cites W2296521892 @default.
- W3213163168 cites W2342999241 @default.
- W3213163168 cites W2585625600 @default.
- W3213163168 cites W2765220332 @default.
- W3213163168 cites W2787031726 @default.
- W3213163168 cites W2790781641 @default.
- W3213163168 cites W2794778778 @default.
- W3213163168 cites W2909973217 @default.
- W3213163168 cites W2914985734 @default.
- W3213163168 cites W2921275503 @default.
- W3213163168 cites W2924971168 @default.
- W3213163168 cites W2945680505 @default.
- W3213163168 cites W2962752580 @default.
- W3213163168 cites W2963507686 @default.
- W3213163168 cites W2965971168 @default.
- W3213163168 cites W2966607134 @default.
- W3213163168 cites W2971724044 @default.
- W3213163168 cites W2978602421 @default.
- W3213163168 cites W2979179852 @default.
- W3213163168 cites W2980994438 @default.
- W3213163168 cites W2994807146 @default.
- W3213163168 cites W2999265208 @default.
- W3213163168 cites W3029422813 @default.
- W3213163168 cites W3035130140 @default.
- W3213163168 cites W3047441330 @default.
- W3213163168 cites W3113621249 @default.
- W3213163168 cites W3118078594 @default.
- W3213163168 cites W3123965474 @default.
- W3213163168 cites W3155598102 @default.
- W3213163168 cites W3172514114 @default.
- W3213163168 cites W3183833876 @default.
- W3213163168 doi "https://doi.org/10.1016/j.ijforecast.2021.09.014" @default.
- W3213163168 hasPublicationYear "2022" @default.
- W3213163168 type Work @default.
- W3213163168 sameAs 3213163168 @default.
- W3213163168 citedByCount "1" @default.
- W3213163168 countsByYear W32131631682023 @default.
- W3213163168 crossrefType "journal-article" @default.
- W3213163168 hasAuthorship W3213163168A5015832946 @default.
- W3213163168 hasAuthorship W3213163168A5022353147 @default.
- W3213163168 hasAuthorship W3213163168A5085772089 @default.
- W3213163168 hasConcept C10138342 @default.
- W3213163168 hasConcept C105795698 @default.
- W3213163168 hasConcept C111919701 @default.
- W3213163168 hasConcept C119857082 @default.
- W3213163168 hasConcept C149782125 @default.
- W3213163168 hasConcept C154945302 @default.
- W3213163168 hasConcept C162324750 @default.
- W3213163168 hasConcept C177774035 @default.
- W3213163168 hasConcept C182306322 @default.
- W3213163168 hasConcept C18903297 @default.
- W3213163168 hasConcept C202444582 @default.
- W3213163168 hasConcept C2522767166 @default.
- W3213163168 hasConcept C2781089630 @default.
- W3213163168 hasConcept C33923547 @default.
- W3213163168 hasConcept C41008148 @default.
- W3213163168 hasConcept C42475967 @default.
- W3213163168 hasConcept C86803240 @default.
- W3213163168 hasConcept C87007009 @default.
- W3213163168 hasConcept C91306197 @default.
- W3213163168 hasConcept C9652623 @default.
- W3213163168 hasConceptScore W3213163168C10138342 @default.
- W3213163168 hasConceptScore W3213163168C105795698 @default.
- W3213163168 hasConceptScore W3213163168C111919701 @default.
- W3213163168 hasConceptScore W3213163168C119857082 @default.
- W3213163168 hasConceptScore W3213163168C149782125 @default.
- W3213163168 hasConceptScore W3213163168C154945302 @default.
- W3213163168 hasConceptScore W3213163168C162324750 @default.