We assess the demand effects of discounts on train tickets issued by the Swiss Federal Railways, the so-called `supersaver tickets', based on machine learning, a subfield of artificial intelligence. Considering a survey-based sample of buyers of supersaver tickets, we investigate which customer- or trip-related characteristics (including the discount rate) predict buying behavior, namely: booking a trip otherwise not realized by train, buying a first- rather than second-class ticket, or rescheduling a trip (e.g.\ away from rush hours) when being offered a supersaver ticket. Predictive machine learning suggests that customer's age, demand-related information for a specific connection (like departure time and utilization), and the discount level permit forecasting buying behavior to a certain extent. Furthermore, we use causal machine learning to assess the impact of the discount rate on rescheduling a trip, which seems relevant in the light of capacity constraints at rush hours. Assuming that (i) the discount rate is quasi-random conditional on our rich set of characteristics and (ii) the buying decision increases weakly monotonically in the discount rate, we identify the discount rate's effect among `always buyers', who would have traveled even without a discount, based on our survey that asks about customer behavior in the absence of discounts. We find that on average, increasing the discount rate by one percentage point increases the share of rescheduled trips by 0.16 percentage points among always buyers. Investigating effect heterogeneity across observables suggests that the effects are higher for leisure travelers and during peak hours when controlling several other characteristics.
翻译:我们评估了瑞士联邦铁路公司开出的火车票折扣、所谓的“超级保险票”的需求影响,这是基于机器学习和人工智能的子领域。考虑到对超级保险票买主的调查抽样,我们调查与客户或旅行有关的哪些特点(包括贴现率)预测了购买行为,即:预订一次不是通过火车实现的旅行,购买一等票而不是二等票,或者在提供超级保险票时重新安排旅行(例如,离开高峰时间)的时间,预测机器学习表明,客户的年龄、特定连接(如出发时间和使用)的需求相关信息以及贴现水平允许在一定程度上预测购买行为。此外,我们利用因果机学习来评估贴现率对重新安排旅行的影响,这似乎与火车高峰时间的能力限制有关。假设(一)贴现率是准随机的,在提供超级保险票时,以及(二)购买决定提高了贴现率的微弱的单数比值,16我们通过不定期的贴现率来判断,我们在不定期的客户中会增加贴现率的比值。